Embodiments of the invention relate to the field of geological tomography for generating an image of the interior subsurface of the Earth based on geological data collected by transmitting a series of incident waves and receiving reflections of those waves across discontinuities in the subsurface. The incident and reflected waves are reconstituted by a 3D model to generate an image of the reflecting surfaces interior to the Earth. Accordingly, geological tomography allows geophysicists to “see inside” the Earth.
Embodiments of the invention further relate to geological restoration in which the tomographic images of the present day geology are transformed into images of the past geology, as it was configured at an intermediate restoration time in the past τ before the present day and after the start of deposition of the oldest subsurface layer being imaged. New techniques are proposed herein to improve both the accuracy and computational speed of generating those images of the past restored geology. Improved images may aid geoscientists exploring the subsurface geology for applications such as predicting tectonic motion or earthquakes, or by engineers in the mining or oil and gas industries.
The accuracy of a geological model of the present day configuration of the subsurface of the Earth may be improved by “restoring” the model to a past intermediate time τ and checking model consistency at that time in the past. However, restoring geological models is a complex task and current methods are typically inefficient, requiring extensive processing resources and time, as well as inaccurate, relying on over-simplifications that induce errors to moderate the complexity of the task.
There is a longstanding need in the art to efficiently and accurately restore geological models from their present day geology to their past geology at restored past time T.
Some embodiments of the invention are directed to modeling restored geological models with τ-active and τ-inactive faults. In an embodiment of the invention, a system and method is provided for restoring a 3D model of the subsurface geology of the Earth from a present day geometry measured at a present time to a predicted past geometry at a past restoration time. The 3D model of the present day measured geometry comprising a network of faults may be received, wherein a fault is a discontinuity that divides fault blocks that slide in opposite directions tangential to the surface of the fault as time approaches a modeled time. A past restoration time τ may be selected that is prior to the present time and after a time when an oldest horizon surface in the 3D model was originally deposited. The network of faults may be divided into a subset of τ-active faults and a subset of τ-inactive faults, wherein a τ-active fault is a fault that is active at the past restoration time τ and a τ-inactive fault is a fault that is inactive at the past restoration time τ. A fault may be determined to be τ-active when the fault intersects a horizon Hτ that was originally deposited at the past restoration time τ and a fault may be determined to be τ-inactive when the fault does not intersect the horizon Hτ that was originally deposited at the past restoration time τ. The 3D model may be restored from the present day measured geometry to the predicted past geometry at the past restoration time τ by modeling each τ-active and τ-inactive fault differently. Each τ-active fault may be modeled to join end points of a horizon Hτ separated on opposite sides of the fault in the present day model to merge into the same position in the restored model by sliding the end points towards each other in a direction tangential to the surface of the τ-active fault. Each τ-inactive fault may be modeled to keep collocated points on opposite sides of the fault together.
Some embodiments of the invention are directed to modeling restored geological models with new restoration coordinates uτ, vτ, tτ. In an embodiment of the invention, a system and method is provided for restoring a 3D model of the subsurface geology of the Earth from a present day measured geometry to a predicted past geometry at a restoration time in the past τ. The 3D model of the present day geometry of the subsurface may be received, including one or more folded geological horizon surfaces. A value may be selected of a restoration time in the past τ before the present day and after a time an oldest horizon surface in the 3D model of the subsurface was deposited. The 3D model may be restored from the present day measured geometry to the predicted past geometry at the restoration time in the past τ using a 3D transformation. The vertical component of the 3D transformation may restore the geometry to the vertical coordinate tτ such that: points along a horizon surface Hτ modeling sediment that was deposited at the selected restoration time in the past τ have a substantially constant value for the restored vertical coordinate tτ; and at any location in the 3D model, the restored vertical coordinate tτ is equal to a sum of a first approximation t′τ of the vertical coordinate and an error correction term ετ, wherein the error correction term ετ is computed by solving a linear relationship in which a variation in the sum of the first approximation t′τ of the vertical coordinate and the error correction term ετ between any two points separated by an infinitesimal difference in the direction of maximal variation of the sum is approximately equal to the distance between the points in the direction of maximal variation; and displaying an image of the restored 3D model of the subsurface geology of the Earth such that each point in the 3D model is positioned at the restored vertical coordinate tτ as it was configured at the restoration time in the past τ.
Some embodiments of the invention are directed to modeling restored geological models taking compaction into account at an intermediate restoration time in the past τ. In an embodiment of the invention, a system and method is provided for decompacting a 3D model of the subsurface geology of the Earth at an intermediate restoration time in the past τ. Some embodiments may receive a 3D model of present-day geometry of the subsurface geology and a measure of present-day porosity experimentally measured within the subsurface geology of the Earth. A value of a restoration time in the past τ may be selected before the present day and after a time an oldest horizon surface in the 3D model of the subsurface was deposited. The 3D model from the present day measured geometry may be restored to the predicted past geometry at the restoration time in the past τ using a 3D transformation. The vertical dimension of the restored 3D model may be decompacted to elongate vertical lengths of geological layers below a horizon layer deposited at the restoration time in the past τ. The vertical lengths may be elongated based on a relationship between a depositional porosity of the geological layers at the time sediment in those layers was deposited, restoration porosity of the geological layers at the restoration time in the past τ, and the present-day porosity of the geological layers experimentally measured in the present-day.
The principles and operation of the system, apparatus, and method according to embodiments of the present invention may be better understood with reference to the drawings, and the following description, it being understood that these drawings are given for illustrative purposes only and are not meant to be limiting.
For simplicity and clarity of illustration, elements shown in the drawings have not necessarily been drawn to scale. For example, the dimensions of some of the elements may be exaggerated relative to other elements for clarity. Further, where considered appropriate, reference numerals may be repeated among the drawings to indicate corresponding or analogous elements throughout the serial views.
Embodiments of the invention improve conventional restoration techniques for imaging restored geological models as follows:
“τ-Active” Faults Vs. “τ-Inactive” Faults:
In conventional restoration models, all faults are active (as discontinuous surfaces) at all times. However, in reality, certain faults have not yet formed or activated at various intermediate restoration times T. Accordingly, conventional restoration models generate false or “phantom” faults that erroneously divide geology that has not yet fractured, leading to geological inaccuracies in subsurface images.
Embodiments of the invention solve this problem by selectively activating and deactivating individual fault surfaces to be discontinuous or continuous, respectively, depending on the specific restoration geological-time τ. For each intermediate restoration time in the past τ, embodiments of the invention split faults into two complementary subsets of “τ-active” faults and “τ-inactive” faults. τ-active faults are activated at restoration time τ (e.g., a discontinuous fault surface along which fault blocks slide tangentially), whereas τ-inactive faults are deactivated at restoration time τ (e.g., a continuous surface that does not behave as a fault).
As faults form and evolve over time, they behave differently at different geological times in the past. For example, a fault that forms at an intermediate geological-time τ, where τ1<τ<τ2, is τ-active in a restored model at later time τ2 (after the fault has formed), but τ-inactive in a restored model at earlier time τ1 (before the fault has formed). This fault classification allows faults to be modelled differently at each restoration time τ in a geologically consistent way, thereby preventing unrealistic deformations from being generated in the neighborhood of these faults.
This problem is solved according to embodiments of the invention, e.g., as shown in the bottom image of
Contrary to conventional methods, the use of τ-active and τ-inactive faults produces more accurate results, e.g., even if there is no continuous path between (no way to continuously connect) a given fault block (e.g., 800) and the horizon Hτ (e.g., 210) deposited at geological time τ, which typically requires additional processing that may induce errors. By selectively activating and inactivating faults at the various restoration times according to when they form, embodiments of the invention eliminate erroneous phantom faults and more accurately represent the faulted geology.
Reference is made to
In operation 1610, a processor may receive a 3D model of the present day measured geometry comprising a network of faults (e.g., present day model 202). The present day model may be measured tomographically by scanning the Earth's subsurface e.g., as described in reference to
In operation 1620, a processor may select or receive a past restoration time τ that is “intermediate” or prior to the present time and after the start of the subsurface's deposition (the time period when an oldest horizon surface in the 3D model was originally deposited).
In operation 1630, a processor may divide the network of faults into a subset of τ-active faults and a subset of τ-inactive faults. τ-active faults may be faults that are active at the past restoration time τ and τ-inactive faults are faults that are inactive at the past restoration time τ. A fault is determined to be τ-active when the fault intersects a horizon Hτ that was originally deposited at the past restoration time τ (e.g., see τ-active faults 105 of
In operation 1640, a processor may restore the 3D model from the present day measured geometry to the predicted past geometry at the past restoration time τ. During restoration, the processor may flatten a horizon Hτ (e.g., 210 of
In operation 1650, for each τ-active fault, a processor may model the τ-active fault as an active discontinuous fault surface and restore the horizon surface by removing or omitting the fault surface at the time of restoration. The processor may eliminate the τ-active fault during restoration by sliding its adjacent fault blocks together. This may join end points of a horizon Hτ separated on opposite sides of the fault in the present day model to merge into the same position in the restored model by sliding the end points towards each other in a direction tangential to the surface of the τ-active fault.
In operation 1660, for each τ-inactive fault, a processor may model the τ-inactive fault, not as a discontinuous fault surface, but as a continuous non-fault surface in the restoration transformation. The τ-inactive fault may be modeled as a surface in which the discontinuity induced by the fault has been deactivated to prevent fault blocks from sliding in directions tangential to the surface of the fault as time approaches the restoration time τ. The processor may model the τ-inactive fault during restoration by keeping collocated points on opposite sides of the fault in the present day model together in the restored model.
After the geological model has been restored for a first past restoration time r (operations 1620-1660), the process may repeat to restore the model for a second different past restoration time τ′. In some embodiments, the geological model may be sequentially restored to a sequence of multiple past restoration times τ1, τ2, . . . , τn. In multiple (all or not all) of the past restoration times τ1, τ2, . . . , τn, the fault network may be divided into a different subset of τ-active and τ-inactive faults, e.g., because different faults fracture the subsurface at different geological times. In some embodiments, a processor may play a moving image sequence in which the 3D model is iteratively restored in a forward or reverse order of the sequence of past restoration times τ1, τ2, . . . , τn to visualize changes in the subsurface geology over the passage of time.
In operation 1670, a processor may display a visualization of an image of the subsurface geology of the Earth overlaid with τ-active faults and τ-inactive faults in the restored model at past restoration time τ. The processor may display the τ-active faults and the τ-inactive faults with different visual identifiers, such as, different levels of translucency, different colors, different patterns, etc.
New Restoration Transformation uτ, vτ, and tτ:
A restoration transformation may transform a geological image of the subsurface of the Earth from a present day space (e.g., x,y,z coordinates) to a restoration space (e.g., uτ, vτ, and tτ coordinates) as it was formed at an intermediate restoration time in the past r (before the present-day but after the start of the subsurface deposition). An ideal restoration should transform the vertical coordinate tτ in a manner that strictly honors the thickness of layers, to preserve areas and volumes of the Earth, so that terrains are not stretched or squeezed over time in the vertical dimension. However, conventional restoration transformations typically deform the vertical coordinates, forcing terrains to stretch and squeeze, resulting in errors in the restoration model.
Embodiments of the invention improve the accuracy of the restoration model by establishing a vertical restoration coordinate tτ that preserves layer thickness. This may be achieved by implementing a thickness-preserving constraint that sets a variation in the vertical restoration coordinate tτ between any two points separated by an infinitesimal difference in the direction of maximal variation of the vertical coordinate tτ to be approximately equal to the distance between the points in the direction of maximal variation. An example of this constraint may be modeled by ∥grad tτ(x,y,z)∥=1. This constraint, however, is non-linear and highly complex and time-consuming to solve. Due to its complexity, this constraint is rarely used in conventional restoration models, and instead replaced by over-simplifications, such as equations (33) and (34), that result in model errors as shown in histograms 501 and 502 of
Embodiments of the invention improve the accuracy of the restored model by establishing a new thickness-preserving constraint that introduces an error correction term ετ. The new thickness-preserving constraint sets the restored vertical coordinate tτ to be equal to a sum of a first approximation t′τ of the vertical coordinate and an error correction term ετ, wherein the error correction term ετ is computed by solving a relationship in which a variation in the sum of the first approximation t′τ of the vertical coordinate and the error correction term ετ between any two points separated by an infinitesimal difference in the direction of maximal variation of the sum is approximately equal to the distance between the points in the direction of maximal variation. An example of this constraint may be modeled by ∥grad (t′τ+ετ)∥=1. The new thickness-preserving constraint preserves layer thickness with greater accuracy as shown in histogram 503 of
Embodiments of the invention further improve the performance and computational speed of the computer generating the restored model by linearizing the new thickness-preserving constraint. As an example, the new thickness-preserving constraint may be linearized as follows. ∥grad (t′τ+ετ)∥=1 may be squared to obtain ∥grad t′τ∥2+∥grad ετ∥2+∥2·grad t′τ·grad ετ∥=1. The error correction term ετ may be generated such that the square of its spatial variation, ∥grad ετ∥2, is negligible. Accordingly, the thickness-preserving constraint simplifies to a new linear thickness-preserving constraint of grad ετ·grad t′τ≅½ {1−∥grad t′τ∥2} (eqn. (37)). This thickness-preserving constraint is linear because t′τ is already known, so the constraint is a relationship between the gradient of the error ετ and the gradient of the known first approximation of the vertical coordinate t′τ. The computer may therefore compute the new thickness-preserving constraint in linear time, which is significantly faster than computing the non-linear constraints ∥grad tτ∥=1 or ∥grad (t′τ+ετ)∥=1.
Contrary to conventional methods, the computational complexity for performing the restoration transformation according to embodiments of the invention is significantly reduced compared to classical methods that are based on the mechanics of continuous media. As a consequence, the modeling computer uses significantly less computational time and storage space to generate the inventive restoration model.
Contrary to conventional methods that allow variations of geological volumes and deformations, embodiments of the invention implement a new set of geometrical constraints and boundary conditions that preserve geological volumes and deformations while adhering to geological boundaries.
Contrary to conventional methods, embodiments of the invention restore faults along fault striae (e.g., see
An ideal restoration should also transform the horizontal coordinates uτ and vτ in a manner that strictly honors lateral spatial distribution, to preserve areas and volumes of the Earth, so that terrains are not stretched or squeezed over time in the horizontal dimensions. However, conventional restoration transformations based on depositional coordinates (e.g., paleo-geographic coordinates u and v) typically deform the horizontal coordinates, forcing terrains to stretch and squeeze, resulting in errors in the restoration model.
Embodiments of the invention improve the accuracy of the restoration model at time τ by establishing horizontal restoration coordinates uτ and vτ that restore the horizon surface Hτ deposited at time τ consistently with horizontal depositional coordinates u and v whilst minimizing deformations. In one embodiment, on the horizon surface Hτ only, the horizontal restoration coordinates uτ and vτ are equal to the depositional coordinates u and v (see e.g., equation (20)) and the spatial variations of the horizontal restoration coordinates uτ and yτ are preserved with respect to the horizontal depositional coordinates u and v (see e.g., equation (21)). Thus, each restoration model at time τ, presents a horizon surface Hτ, as it was configured at that time τ when it was originally deposited. Additionally or alternatively, horizontal restoration coordinates uτ and vτ are modeled in a tectonic style (e.g., using constraints (22) or (23)) that is consistent with that of the horizontal coordinates u and v of the depositional model, which makes the restoration more accurate because the geological context is taken into account. Additionally or alternatively, horizontal restoration coordinates uτ and vτ are modeled to minimize deformations induced by the restoration of horizon Hτ, rather than minimizing deformations in the whole volume G. This may be achieved by implementing constraints (41) and (42) that only enforce orthogonality of gradients of uτ and vτ with local axes bτ and aτ, but which do not constrain the norm of grad uτ and grad vτ, as is typically constrained for horizontal depositional coordinates u and v consistent with the depositional time model. Horizontal restoration coordinates uτ and vτ may also be constrained only in Gτ, thereby only taking into account the part of the subsurface to be restored, not the entire model G. Additionally or alternatively, horizontal restoration coordinates uτ and vτ may be constrained to be equal on opposite sides of τ-active faults at twin point locations, where the twin points are computed from fault striae, which also ensures consistency with the depositional model (see e.g., equation (43)). Additionally or alternatively, horizontal restoration coordinates uτ and vτ are constrained to be equal on opposite sides of τ-inactive faults at mate point locations to cancel the effect of inactive faults on the restoration model (see e.g., equation (43)).
Reference is made to
In operation 1710, a processor may receive a 3D model of the present day measured geometry (e.g., present day model 202) comprising one or more folded (e.g., curvilinear or non-planar) geological horizon surfaces (e.g., 210). The present day model may be measured tomographically by scanning the Earth's subsurface e.g., as described in reference to
In operation 1720, a processor may select or receive a past restoration time τ that is “intermediate” or prior to the present time and after the start of the subsurface's deposition (the time period when an oldest horizon surface in the 3D model was originally deposited).
In operation 1730, a processor may restore the 3D model from the present day measured geometry (e.g., present day model Gτ 202 in xyz-space G 220) to the predicted past geometry at the restoration time in the past τ (e.g., restored model
The processor may restore the vertical coordinate tτ such that points along a horizon surface Hτ (e.g., 210) modeling sediment that was deposited at the selected restoration time τ have a substantially constant value for the restored vertical coordinate tτ (see e.g., eqn. (19)). Further, the processor may restore the vertical coordinate tτ such that at any location in the 3D model, the restored vertical coordinate tτ is equal to a sum of a first approximation t′τ of the vertical coordinate and an error correction term ετ, wherein the error correction term ετ is computed by solving a relationship in which a variation in the sum of the first approximation t′τ of the vertical coordinate and the error correction term ετ between any two points separated by an infinitesimal difference in the direction of maximal variation of the sum is approximately equal to the distance between the points in the direction of maximal variation. The error correction term ετ may correct errors in the first approximation t′τ of the vertical coordinate. This constraint may be represented by a linear second order approximation (see e.g., eqn. (37)).
In some embodiments, the processor computes the first approximation t′τ of the vertical coordinate by solving a relationship in which the spatial variation of the vertical coordinate t′1 is locally approximately proportional to the spatial variation of a geological time of deposition t. In some embodiments, the coefficient of proportionality is locally equal to the inverse of the magnitude of the maximal spatial variation of the geological time of deposition (see e.g., eqn. (34)-(1)). This relationship may give the vertical restoration coordinate tτ the shape of the horizon Hτ because, on the horizon, the gradient of depositional time t is normal to the horizon surface. Thus, the ratio grad t/∥grad t∥ follows the shape of the horizon.
In some embodiments, the processor computes the first approximation t′τ of the vertical coordinate by solving a relationship in which any infinitesimal displacement in the direction orthogonal to horizon surface Hτ results in a variation of the vertical coordinate t′τ approximately equal to the length of the infinitesimal displacement for points on the horizon surface Hτ (see e.g., eqn. (33)-1)).
In some embodiments, the processor computes the restored vertical coordinate tτ in parts of the subsurface which are older than restoration time τ such that iso-value surfaces of the restored vertical coordinate tτ are parallel to the horizon surface Hτ and the difference in the restored vertical coordinate tτ between two arbitrary iso-values is equal to the distance between the corresponding iso-surfaces (see e.g., eqn. (31)). Parallel surfaces may be planar parallel in the restored model, and curved parallel (e.g., having parallel tangent surfaces) in present day model, such that the surfaces are non-intersecting at limits.
In some embodiments, the error correction term ετ is null at points along the horizon surface Hτ that was deposited at the selected restoration time in the past τ so that the restored horizon surface Hτ is flat (see e.g., eqn. (36)).
In some embodiments, the restored horizontal coordinates uτ and vτ are constrained such that for each point along the horizon surface Hτ that was deposited at the selected restoration time in the past τ: the restored horizontal coordinates uτ and vτ are equal to depositional horizontal coordinates u and v, respectively, and the spatial variations of the restored horizontal coordinates uτ and vτ are equal to the spatial variations of the depositional horizontal coordinates u and v, respectively (see e.g., eqns. (20)(21)). On average, globally over the entire model, the processor may compute ∥grad u∥=1 and ∥grad v∥=1. However, locally, this is not necessarily true e.g., on horizon Hr. So, while the processor sets grad uτ=grad u and grad vτ=grad v on Hτ, the processor may not constrain ∥grad uτ∥=1 and ∥grad vτ∥=1 on HT. Moreover, the processor may not constrain grad uτ to be orthogonal to grad tτ. This results from the boundary condition on Hτ and propagation through its constant gradient.
In some embodiments, the restored horizontal coordinates uτ and vτ are constrained in parts of the subsurface which are older than restoration time τ such that directions of maximal change of the restored horizontal coordinates uτ and vτ are linearly constrained by a local co-axis vector bτ and a local axis vector aτ, respectively (see e.g., eqn. (41)).
In some embodiments, the local axis vector aτ is oriented approximately in the direction of maximal change of depositional horizontal coordinate u and orthogonal to the direction of maximal change of the vertical restoration coordinate tτ, and the local co-axis vector bτ is oriented orthogonal to the direction of the local axis vector aτ and orthogonal to the direction of maximal change of the vertical restoration coordinate tτ (see e.g., eqn. (40)).
In some embodiments, if the tectonic style of the 3D model is minimal deformation, the restored horizontal coordinates uτ and vτ are computed over the part of the 3D model of the subsurface which is older than restoration time τ such that the directions of maximal change of uτ and vτ are approximately orthogonal to the local co-axis vector bτ and the local axis vector aτ, respectively. For example, equation (40) constrains the local axis vector at-to be parallel to the gradient of u and the local co-axis vector bτ to be orthogonal to the local axis vector aτ, which means that the gradient of u is orthogonal to the local co-axis vector bτ. Equation (41) further constrains the gradient of Uτ to be approximately orthogonal to the local co-axis vector bτ. Accordingly, the gradient of uτ is approximately parallel to the gradient of u. The same logic implies the gradient of vτ is approximately parallel to the gradient of v.
In some embodiments, if the tectonic style of the 3D model is flexural slip, the restored horizontal coordinates uτ and vτ are computed over the part of the 3D model of the subsurface which is older than restoration time τ such that projections of their directions of maximal change over the iso-value surfaces of the restored vertical coordinate tτ are approximately orthogonal to local co-axis vector bτ and the local axis vector aτ, respectively (see e.g., eqn. (42)).
In some embodiments, the values of the restored horizontal coordinates uτ and vτ are constrained in parts of the subsurface which are older than the restoration time τ to be respectively equal on twin points on τ-active faults, wherein twin points are points on opposite sides of a τ-active fault that were collocated at the restoration time τ and are located on the same fault stria in the present day model, to merge the twin points into the same position in the restored model by sliding the twin points towards each other in a direction tangential to the surface of the τ-active fault (see e.g., eqn. (43)).
In some embodiments, the values of the restored horizontal coordinates uτ and vτ are constrained in parts of the subsurface which are older than the restoration time τ to be respectively equal on mate points on τ-inactive faults, wherein mate points are points on opposite sides of a τ-inactive fault that are collocated at present day time, to move mate points together on opposite sides of τ-inactive faults (see e.g., eqn. (43)).
In operation 1740, a processor may display an image of the restored 3D model of the subsurface geology of the Earth such that each point in the 3D model is positioned at the restored coordinates uτ, vτ, tτ defining the location that a piece of sediment represented by the point was located at the restoration time in the past τ.
In some embodiments, the processor may receive an increasing chronological sequence of past restoration times τ1, τ2, . . . , τn. For each restoration time τ. in sequence τ1, τ2, . . . , τn) the processor may repeat operations 1720-1730 to compute a corresponding 3D restoration transformation Rτi. 3D restoration transformation Rτi restores the part of the subsurface older than horizon Hτi to its predicted past geometry at time τi, e.g., to 3D restored coordinates uτi, vτi, and tτi.
In operation 1750, in some embodiments, a processor may play a moving image sequence in which the 3D model is iteratively restored in a forward or reverse order of the sequence of past restoration times τ1, τ2, . . . , τn to visualize changes in the subsurface geology over the passage of time.
In some embodiments, the processor may edit the model in the restoration space and then reverse the restoration transformation to apply those edits in the present day space. For example, the processor may edit the depositional values u, v, and t associated with the restored 3D model, and then reverse transform the restored 3D model forward in time from the predicted past geometry at the restoration time in the past τ to the present day measured geometry using an inverse of the 3D restoration transformation 200 to incorporate the edits from the restored model into the present day model.
Decompaction at Intermediate Restoration Time τ:
Compaction may refer to the pore space reduction in sediment within the Earth's subsurface. Compaction is typically caused by an increase in load weight of overlying geological layers as they are deposited over time. As sediment accumulates, compaction typically increases, as time and depth increase. Conversely, porosity typically decreases, as time and depth increase. For example, at a depositional time to when a layer is deposited with no overlaying geology, the depositional model has minimal or no compaction and maximum depositional porosity
Whereas compaction is a result of deposition over the forward passage of time, the process of restoration reverses the passage of time to visualize geology at an intermediate time in the past τ (before the present day and after the start of deposition of the oldest subsurface layer). Accordingly, embodiments of the invention generate a restoration model by reversing the effects of compaction in a process referred to as “decompaction” to more accurately depict how the geometry of geological layers change as their depths increase. Whereas compaction compresses the geological layers, decompaction reverses those effects, decompressing and uplifting terrains, resulting in increased layer thicknesses and increased intermediate time porosity
Conventional decompaction techniques, however, are notoriously unreliable. Laboratory experiments on rock samples show that, during burial when sediments contained in a volume
where
o
Because, in the restored
δ(
Accordingly, in the context of embodiments of the invention, Athy's law may be reformulated as:
Athy's law alone, however, incorrectly models porosity
Embodiments of the invention improve decompaction techniques by modeling decompaction at an intermediate restoration time in the past τ based on real-world measurements of present-day compaction
Some embodiments accurately decompact the restoration model by simultaneously (1) removing the impact of present-day compaction affecting terrains in (incorrectly) restored version at time τ (e.g., “total” decompaction, such as, defined in equations (58)); and (2) recompacting these terrains according to their depth in the restored model (e.g., “partial” recompaction, such as, defined in equations (59)). Embodiments of the invention solve the difficult problem of performing these two operations (decompaction and recompaction) simultaneously.
Reference is made to
Elasto-plastic mechanical frameworks developed to model compaction rely on a number of input parameters which may be difficult for a geologist or geomodeler to assess and are solved using a complex system of equations. Isostasic approaches are typically simpler to parameterize and still provide useful information on basin evolution. Therefore, compaction may be considered a primarily one-dimensional vertical compression induced by gravity which mainly occurs in the early stages of sediment burial when horizons are still roughly horizontal surfaces close to the sea floor.
At any point
In this equation,
Taking Present Day Compaction into Account to Decompact the Restored Model in
Compacted model 1810, built assuming there is no compaction, incorrectly ignores the compaction characterized by present-day porosity
Present-day porosity
Example decompaction processes may proceed as follows:
Let
Because compaction typically increases over time, the present day porosity
This inequality implies that intermediate compaction coefficient
Considering once again the vertical probe introduced above in restored space
Therefore, to take present-day compaction into account, equation (55) may be replaced, for example, by:
where compaction coefficient
Decompaction in GeoChron Based Restoration
In the restored
dtτ(
may represent the height of an infinitely short vertical column of restored sediment located at point
Assuming that {
From this, it can be concluded that the compacted geological-time tτ(
Due to the vertical nature of compaction, on the top restored horizon {
Boundary condition (65)(1) may ensure that the top restored horizon
As compaction is a continuous process, geological-time tτ⊕(
tτ(
∀
Boundary condition (66) may ensure that, for any pair of collocated points on opposite sides of the fault, the two points have the same decompacted geological-time coordinate tτ⊕(
Using an appropriate numerical method, tτ⊕(
In summary, the following GeoChron Based Restoration technique may be used to take compaction into account:
This approach to decompaction may be seamlessly integrated into the GeoChron Based Restoration framework according to embodiments of the invention and is wholly dissimilar to the sequential decompaction following Athy's law along IPG-lines. In particular, embodiments of the invention perform decompaction based on real-world present-day porosity, a quantity that is accurately measured and extrapolated for any type of rock without having to make assumptions. Additionally, embodiments of the invention allow decompaction in the restored
An Analytical Solution
In the general case, the system of equations (64), (65) and (66) is typically too complex to be solved analytically and may be approximated using numerical methods. However, in a specific case where
In this special case, in
Due to its homogeneity,
Let constants A and B be defined, for example, by:
Let the following example functions be derived from Athy's law in equation (54) and equations (56) and (69):
On the one hand, the following example indefinite integral holds true:
On the other hand, according to equation (62):
Therefore, for any {tτ≤0}, the decompacted restoration function tτ⊕(tτ) may be analytically defined, for example, by:
Other equations or permutations of these equations or terms may also be used.
Reference is made to
In operation 1910, a processor may receive a 3D model of present-day geometry of the subsurface geology and a measure of present-day porosity experimentally measured within the subsurface geology of the Earth. The present day model may be measured tomographically by scanning the Earth's subsurface e.g., as described in reference to
In operation 1920, a processor may select or receive a past restoration time τ that is “intermediate” or prior to the present time and after the start of the subsurface's deposition (the time period when an oldest horizon surface in the 3D model was originally deposited).
In operation 1930, a processor may restore the 3D model from the present day measured geometry (e.g., present day model Gτ202 in xyz-space G 220) to the predicted past geometry at the restoration time in the past τ (e.g., restored model
In operation 1940, a processor may decompact the vertical dimension of the restored 3D model. This may expand, stretch or elongate compacted vertical lengths in the compacted model (e.g., 1810 of
where compaction coefficients
is greater than 1, resulting in a stretching or elongating effect to increase the vertical lengths when they are decompacted.
In some embodiments, a processor may decompact the vertical dimension of the restored 3D model by a combination (e.g., equation (60)) of total decompaction corresponding to an increase in porosity from the present day porosity to the depositional porosity (e.g., equation (58)) and partial recompaction corresponding to a partial decrease in the porosity from the depositional porosity to the restored porosity (e.g., equation (59)).
At the restored time in the past τ, the geological layers above
Some embodiments may implement a boundary condition that ensures that a top horizon Hτ deposited at the restoration time τ is a horizontal plane in the restored 3D model (e.g., equation (65)(1)). Additionally or alternatively, some embodiments may implement a boundary condition that ensures that a direction of change of geological-time when the particles of sediment were originally deposited on the Earth's surface is vertical in the restored 3D model (e.g., equation (65)(2) and (65)(3)). Additionally or alternatively, some embodiments may implement a boundary condition that ensures that, for any pair of collocated points on opposite sides of a fault, the two collocated points are decompacted to have the same coordinate (e.g., equation (66)).
In some embodiments, for example, implemented in a past-time model, such as the GeoChron model, a processor may decompact the vertical dimension of the restored 3D model by: computing an elongated geological-time (e.g., d
Operations of
In the past 30 years, many methods have been proposed to build geological models of sedimentary terrains having layers that are both folded and faulted. For any given geological-time τ, checking geological model consistency is considered both simpler and more accurate if terrains have previously been “restored” to their pre-deformational, unfolded and unfaulted state, as they were at geological-time τ.
Embodiments of the invention provide a new, purely geometrical 3D restoration method based on the input of a depositional (e.g., GeoChron model). Embodiments of the invention are able to handle depositional models of any degree of geometrical and topological complexity, with both small and large deformations, do not assume elastic mechanical behavior, and do not require any prior knowledge of geo-mechanical properties. Embodiments of the invention further reduce or eliminate gaps and overlaps along faults as part of the restoration transformation and do not resort to any post-processing to minimize such gaps and overlaps. Compared to other conventional methods, embodiments of the invention minimize deformations and volume variations induced by geological restoration with a higher degree of precision, unequaled so far (see e.g.,
Referring to
Embodiments of the invention input a 3D model of sedimentary terrains in the subsurface. In one example, the input model may be the GeoChron™ model generated by SKUA® software for use in mining and oil and gas industries. Embodiments of the invention may build a 3D restoration transformation of this model in such a way that, after transformation, the new model represents terrains as they were at a given intermediate restoration-time τ (where τ1<τ<τ2, before the present day τ2 and after the time of the deposition of the oldest layer τ1).
For example, G may represent the present day 3D geological domain of the region of the subsurface being modeled and Gτ 202 may represent the subset of G containing particles of sediment that were deposited at a time prior to or equal to τ. In some embodiments, for all points r∈G, a geologic restoration transformation may move a particle of sediment observed today at location r to a new restored location
where Rτ(r) represents a 3D field of restoration vectors, e.g., generated to minimize deformations in Gτ.
A depositional model may be generated by inputting a tomographic model of the present day subsurface geology of the Earth and transforming that geology to a past depositional time as each particle was configured when originally deposited in the Earth. Sedimentary particles are deposited over time in layers from deepest to shallowest from the earliest to the most recent geological time periods. Since various layers of terrain are deposited at different geological times, a depositional model does not image the geology at any one particular time period, but across many times periods, each layer modeled at the geological time when the layer was deposited. Accordingly, the vertical axis or depth in the depositional model may be a time dimension representing the time period of deposition, progressing from oldest to newest geological time as the model progresses vertically from deepest to shallowest layers.
In one embodiment, the depositional model may be the GeoChron™ model, which is generated by SKUA™ software, that is routinely used by many oil & gas companies to build models of geologic reservoirs which help optimize hydrocarbon production and exploration. An example implementation of the GeoChron model is discussed in U.S. Pat. No. 8,600,708, which is incorporated by reference herein in its entirety. The depositional model is described in reference to the GeoChron model only for example, though any other depositional model may be used.
Reference is made to
In the example uvt-transform 700 shown in
∥grad t(r)∥=1 ∀r∈G (3)
Embodiments of the invention observe that when ∥grad t(r)∥ differs from “1,” replacing the depositional coordinates {u(r), v(r), t(r)} of the uvt-transform 700 by new restoration coordinates {uτ(r), vτ(r), tτ(r)} where ∥grad tτ∥=1 allows the uvt-transform to be replaced by a uτ vτ tτ-transform that generates a valid restoration model at restoration timeτ.
In some embodiments, the depositional (e.g., GeoChron) model includes the following data structures stored in a memory (e.g., memory 150 of
Moreover, referring to
It would be appreciated by a person of ordinary skill in the art that the GeoChron model and its features described herein are discussed only as an example of a depositional model and that these elements may differ in other models or implementations without changing the essence of the invention.
Referring to the volume deformation of
Accordingly, present day geological space Gτ 202 is transformed into a restored geological space
Compaction may be handled in pre and post-restoration stages, as is known in the art. Thus, the model may be restored without taking compaction into account.
Some embodiments of the invention provide an inventive volume deformation with a new set of inventive geometric constraints on the depositional model to allow geologic layers to be restored at a given geological time τ with a precision that has never before been reached. As shown in
As shown in
For simplicity and without loss of generality, the coordinate frame unit vectors {
Ōu
Referring to
Equivalently to equations (12) and in accordance with equation (1), during restoration of Gτ, a particle of sediment observed today at location r 214 is moved to a new location
with, in matrix notation:
Referring to
Referring to
tτ(
such that:
Referring to
As shown in
With compaction handled separately in pre and post restoration steps, leaving aside the very particular case of clay and salt layers, tectonic forces generally induce no or negligible variations in volume. Therefore, restoration coordinates {uτ(r), vτ(r), tτ(r)} may be chosen in such a way that the uτ vτ tτ-transform 201 of the present-day volume Gτ 202 into the restored volume
Referring to
At geological time τ, the sea floor
∀r∈Hτ:zτo stands for zτo(u(r), v(r)) (24)
Deformation of sedimentary terrains is typically induced both by tectonic forces and terrain compaction. In order to model separately the effects of these phenomena, the restoration process may proceed as follows:
As an input to the restoration process, a given depositional (e.g., GeoChron) model may be received from storage in a digital device (e.g., from memory 150 of
Referring to
The region Gτ 202 may be retrieved as the part of the depositional model where geological time of deposition t(r) is less than or equal to τ (subsurface regions deposited in a layer deeper than or equal to the layer deposited at time τ).
The set of faults may be split into a subset of τ-active faults cutting Hτ 210 and a subset of τ-inactive faults which do not cut Hτ.
A geologist or other user may decide to manually transfer some faults from the τ-inactive fault set to the τ-active set, or vice versa, which typically causes greater restoration deformations. For example, manually altering the set of automatically computed τ-active and τ-inactive faults typically makes the restoration less accurate.
Four new 3D piecewise continuous discrete functions {uτ, vτ, tτ, ετ}r may be created that are defined on grid Γ 100 whose discontinuities occur only across τ-active faults;
Referring to
where (rF⊕,rF⊖), (304,306) represents a pair of “mate-points” collocated on both sides of F 300 and assigned to F+103 and F−104, respectively, and ετ(r) represents an error correction constraint. Constraints (25), (26), (27) and (28) may be referred to collectively as “fault transparency constraints.”
Assuming that THmin>0 is a given threshold chosen by a geologist or other user, fault transparency constraints (25), (26), (27) and (28) may be locally installed at any point rF on a τ-active fault F where fault throw is lower than THmin. As a non-limitative example, THmin may be equal to 1 meter.
Two new discrete vector fields r* and Rτ may be defined on 3D grid Γ 100.
For each node α∈Γ 107:
Referring to
∥grad tτ(r)∥≅1 ∀r∈Gτ (31)
In addition, to allow Hτ 210 to be restored on surface
tτ(rH)=zτO ∀rH∈Hτ (32)
Due to its non-linearity, thickness-preserving equation (31) cannot be implemented as a DSI constraint, which must be linear. In order to incorporate the thickness-preserving equation into the restoration model using the DSI method, various linear surrogates of equation (31) may be used to approximate t1(r) as follows:
where rT⋄ and rT* are arbitrary points belonging to any pair (T⋄, T*) of adjacent cells of grid Γ 100 (e.g., the centers of T⋄ and T*, respectively).
Constraints (33) and (34) are only examples of possible surrogate-thickness-preserving constraints. Other examples of such surrogate thickness-preserving constraints may be used.
Referring to
Assuming that constraints (32) and (33) or (34) are installed on grid Γ 100, a first approximation of vertical restoration coordinate t′τ(r) may be computed by running the DSI method on grid Γ 100.
Honoring constraint (31) significantly increases the accuracy of the restoration model and a violation of this constraint not only degrades the accuracy of the vertical restoration coordinate tτ(r) but also the horizontal restoration coordinates {uτ(r), vτ(r)} as they are linked to tτ(r) (e.g., by equations (22) and (23)). Accordingly, there is a great need for validating any approximation technique used to compute tτ(r).
To test the accuracy of the various approximations of tτ(r), an example geological terrain is provided in
Similarly,
An approximation of the vertical restoration coordinate t′τ(r) may be improved by a “tτ-incremental improvement” constraint, e.g., as follows:
tτ(r)=t′τ(r)+ετ(r) ∀r∈Gτ (35)
where ετ(r) is an error correction term, e.g., as characterized below.
Accordingly, assuming that an initial approximation t′τ(r) has already been obtained, to compute an improved version of tτ(r), the following inventive incremental procedure may be executed:
Referring to
The restoration vector field Rτ(r) represents the field of deformation vectors from the present day (e.g., xyz) space to the restoration (e.g., ut vτ tτ) space, e.g., computed from the uτ vτ tτ-transform.
Referring to
For each node α 107 of 3D grid Γ 100:
Consider a series of geological restoration times {τ1<r2< . . . <rn} associated with reference horizons Hτ
In addition to these reference restoration times, an additional restoration time τn+1 may be added to be associated with the horizontal plane Ht
τn+1=τn+1 (49)
Because τn+1 is the present day, applying the restoration vector field Rτn+1(r) to the present day horizon Ht
Rτn+1(r)=0 ∀r∈G (50)
To explore subsurface evolution throughout geological times, a process may proceed as follows:
Geological models are generated using geological or seismic tomography technology. Geological tomography generates an image of the interior subsurface of the Earth based on geological data collected by transmitting a series of incident waves and receiving reflections of those waves across discontinuities in the subsurface. A transmitter may transmit signals, for example, acoustic waves, compression waves or other energy rays or waves, that may travel through subsurface structures. The transmitted signals may become incident signals that are incident to subsurface structures. The incident signals may reflect at various transition zones or geological discontinuities throughout the subsurface structures, such as, faults or horizons. The reflected signals may include seismic events. A receiver may collect data, for example, reflected seismic events. The data may be sent to a modeling mechanism that may include, for example, a data processing mechanism and an imaging mechanism.
Reference is made to
One or more transmitter(s) (e.g., 190 of
One or more receiver(s) (e.g., 140 of
One or more processor(s) (e.g., 140 of
The processor(s) may compose all of the reflection points 50 to generate an image or model of the present day underground subsurface of the Earth 30. The processor(s) may execute a restoration transformation (e.g., uτ vτ tτ-transform 201) to transform the present day model of subsurface 30 to a restored subsurface image 203 at a restoration time τ. One or more display(s) (e.g., 180 of
Reference is made to
System 1505 may include one or more transmitter(s) 190, one or more receiver(s) 120, a computing system 130, and a display 180. The aforementioned data, e.g., seismic data used to form intermediate data and finally to model subsurface regions, may be ascertained by processing data generated by transmitter 190 and received by receiver 120. Intermediate data may be stored in memory 150 or other storage units. The aforementioned processes described herein may be performed by software 160 being executed by processor 140 manipulating the data.
Transmitter 190 may transmit signals, for example, acoustic waves, compression waves or other energy rays or waves, that may travel through subsurface (e.g., below land or sea level) structures. The transmitted signals may become incident signals that are incident to subsurface structures. The incident signals may reflect at various transition zones or geological discontinuities throughout the subsurface structures. The reflected signals may include seismic data.
Receiver 120 may accept reflected signal(s) that correspond or relate to incident signals, sent by transmitter 190. Transmitter 190 may transmit output signals. The output of the seismic signals by transmitter 190 may be controlled by a computing system, e.g., computing system 130 or another computing system separate from or internal to transmitter 190. An instruction or command in a computing system may cause transmitter 190 to transmit output signals. The instruction may include directions for signal properties of the transmitted output signals (e.g., such as wavelength and intensity). The instruction to control the output of the seismic signals may be programmed in an external device or program, for example, a computing system, or into transmitter 190 itself.
Computing system 130 may include, for example, any suitable processing system, computing system, computing device, processing device, computer, processor, or the like, and may be implemented using any suitable combination of hardware and/or software. Computing system 130 may include for example one or more processor(s) 140, memory 150 and software 160. Data 155 generated by reflected signals, received by receiver 120, may be transferred, for example, to computing system 130. The data may be stored in the receiver 120 as for example digital information and transferred to computing system 130 by uploading, copying or transmitting the digital information. Processor 140 may communicate with computing system 130 via wired or wireless command and execution signals.
Memory 150 may include cache memory, long term memory such as a hard drive, and/or external memory, for example, including random access memory (RAM), read only memory (ROM), dynamic RAM (DRAM), synchronous DRAM (SD-RAM), flash memory, volatile memory, non-volatile memory, cache memory, buffer, short term memory unit, long term memory unit, or other suitable memory units or storage units. Memory 150 may store instructions (e.g., software 160) and data 155 to execute embodiments of the aforementioned methods, steps and functionality (e.g., in long term memory, such as a hard drive). Data 155 may include, for example, raw seismic data collected by receiver 120, instructions for building a mesh (e.g., 100), instructions for partitioning a mesh, and instructions for processing the collected data to generate a model, or other instructions or data. Memory 150 may also store instructions to divide and model τ-active faults and τ-inactive faults. Memory 150 may generate and store the aforementioned constraints, restoration transformation (e.g., uτ vτ tτ-transform 201), restoration coordinates (e.g., uτ, vτ, tτ), a geological-time and paleo-geographic coordinates (e.g., u, v, t), a model representing a structure when it was originally deposited (e.g., in uvt-space), a model representing a structure at an intermediate restoration time (e.g., in uτ, vτ, tτ-space), and/or a model representing the corresponding present day structure in a current time period (e.g., in xyz-space). Memory 150 may store cells, nodes, voxels, etc., associated with the model and the model mesh. Memory 150 may also store forward and/or reverse uτ, vτ, tτ-transformations to restore present day models (e.g., in xyz-space) to restored models (e.g., in ut, vτ, tτ-space), and vice versa. Memory 150 may also store the three-dimensional restoration vector fields, which when applied to the nodes of the initial present day model, move the nodes of the initial model to generate one of the plurality of restored models. Applying a restoration vector field to corresponding nodes of the present day model may cause the nodes to “move”, “slide”, or “rotate”, thereby transforming modeled geological features represented by nodes and cells of the initial model. Data 155 may also include intermediate data generated by these processes and data to be visualized, such as data representing graphical models to be displayed to a user. Memory 150 may store intermediate data. System 130 may include cache memory which may include data duplicating original values stored elsewhere or computed earlier, where the original data may be relatively more expensive to fetch (e.g., due to longer access time) or to compute, compared to the cost of reading the cache memory. Cache memory may include pages, memory lines, or other suitable structures. Additional or other suitable memory may be used.
Computing system 130 may include a computing module having machine-executable instructions. The instructions may include, for example, a data processing mechanism (including, for example, embodiments of methods described herein) and a modeling mechanism. These instructions may be used to cause processor 140 using associated software 160 modules programmed with the instructions to perform the operations described. Alternatively, the operations may be performed by specific hardware that may contain hardwired logic for performing the operations, or by any combination of programmed computer components and custom hardware components.
Embodiments of the invention may include an article such as a non-transitory computer or processor readable medium, or a computer or processor storage medium, such as for example a memory, a disk drive, or a USB flash memory, encoding, including or storing instructions, e.g., computer-executable instructions, which when executed by a processor or controller, carry out methods disclosed herein.
Display 180 may display data from transmitter 190, receiver 120, or computing system 130 or any other suitable systems, devices, or programs, for example, an imaging program or a transmitter or receiver tracking device. Display 180 may include one or more inputs or outputs for displaying data from multiple data sources or to multiple displays. For example, display 180 may display visualizations of subsurface models including subsurface features, such as faults, horizons and unconformities, as a present day subsurface image (e.g., 202), a restored subsurface image (e.g., 203) and/or a depositional model (e.g., 703). Display 180 may display one or more present day model(s), depositional model(s), restoration model(s), as well as a series of chronologically sequential restoration models associated with a sequence of respective restoration times (e.g., τ1<τ2<τ3<τ4, as shown in
Input device(s) 165 may include a keyboard, pointing device (e.g., mouse, trackball, pen, touch screen), or cursor direction keys, for communicating information and command selections to processor 140. Input device 165 may communicate user direction information and command selections to the processor 140. For example, a user may use input device 165 to select one or more preferred models from among the plurality of perturbed models, recategorize faults as τ-active faults and τ-inactive, or edit, add or delete subsurface structures.
Processor 140 may include, for example, one or more processors, controllers or central processing units (“CPUs”). Software 160 may be stored, for example, in memory 150. Software 160 may include any suitable software, for example, DSI software.
Processor 140 may generate a present day subsurface image (e.g., 202), a restored subsurface image (e.g., 203) and/or a depositional model (e.g., 703), for example, using data 155 from memory 150. In one embodiment, a model may simulate structural, spatial or geological properties of a subsurface region, such as, porosity or permeability through geological terrains.
Processor 140 may initially generate a three dimensional mesh, lattice, grid or collection of nodes (e.g., 100) that spans or covers a domain of interest. The domain may cover a portion or entirety of the three-dimensional subsurface region being modeled. Processor 140 may automatically compute the domain to be modeled and the corresponding mesh based on the collected seismic data so that the mesh covers a portion or the entirety of the three-dimensional subsurface region from which geological data is collected (e.g., the studied subsurface region). Alternatively or additionally, the domain or mesh may be selected or modified by a user, for example, entering coordinates or highlighting regions of a simulated optional domain or mesh. For example, the user may select a domain or mesh to model a region of the Earth that is greater than a user-selected subsurface distance (e.g., 100 meters) below the Earth's surface, a domain that occurs relative to geological features (e.g., to one side of a known fault or riverbed), or a domain that occurs relative to modeled structures (e.g., between modeled horizons H(t1) and H(t100)). Processor 140 may execute software 160 to partition the mesh or domain into a plurality of three-dimensional (3D) cells, columns, or other modeled data (e.g., represented by voxels, pixels, data points, bits and bytes, computer code or functions stored in memory 150). The cells or voxels may have hexahedral, tetrahedral, or any other polygonal shapes, and preferably three-dimensional shapes. Alternatively, data may include zero-dimensional nodes, one-dimensional segments, two-dimensional facet and three-dimensional elements of volume, staggered in a three-dimensional space to form three-dimensional data structures, such as cells, columns or voxels. The cells preferably conform to and approximate the orientation of faults and unconformities. Each cell may include faces, edges and/or vertices. Each cell or node may correspond to one or more particles of sediment in the Earth (e.g., a node may include many cubic meters of earth, and thus many particles).
Data collected by receiver 120 after the time of deposition in a current or present time period, include faults and unconformities that have developed since the original time of deposition, e.g., based on tectonic motion, erosion, or other environmental factors, may disrupt the regular structure of the geological domain. Accordingly, an irregular mesh may be used to model current geological structures, for example, so that at least some faces, edges, or surfaces of cells are oriented parallel to faults and unconformities, and are not intersected thereby. In one embodiment, a mesh may be generated based on data collected by receiver 120, alternatively, a generic mesh may be generated to span the domain and the data collected by receiver 120 may be used to modify the structure thereof. For example, the data collected may be used to generate a set of point values at “sampling point”. The values at these points may reorient the nodes or cells of the mesh to generate a model that spatially or otherwise represents the geological data collected from the Earth. Other or different structures, data points, or sequences of steps may be used to process collected geological data to generate a model. The various processes described herein (e.g., restoring a geological model using τ-active and τ-inactive faults, or restoring a geological model using a new thickness-preserving constraint) may be performed by manipulating such modeling data.
Restoration coordinates may be defined at a finite number of nodes or sampling points based on real data corresponding to a subsurface structure, e.g., one or more particles or a volume of particles of Earth. Restoration coordinates may be approximated between nodes to continuously represent the subsurface structure, or alternatively, depending on the resolution in which the data is modeled may represent discrete or periodic subsurface structures, e.g., particles or volumes of Earth that are spaced from each other.
The computing system of
“Restoration” or “intermediate” time τ may refer to a time in the past before the present day and after a time when an oldest or deepest horizon surface in the 3D model was deposited. “Restoration” or “intermediate” transformation or model may refer to a model or image of the surface as it was configured at the “intermediate” time in the past τ. An intermediate horizon may refer to a horizon that was deposited at the “intermediate” time τ, which is located above the deepest horizon and below the shallowest horizon.
“Time” including the present-day, current or present time, the past restoration time τ, and/or the depositional time t, may refer to geological time periods that span a duration of time, such as, periods of thousands or millions of years.
“Geological-time” t(r) may refer to the time of deposition when a particle of sediment represented by point r was originally deposited in the Earth. In some embodiments, the geological-time of the deposition may be replaced, e.g., by any arbitrary monotonic increasing function of the actual geological-time. It is a convention to use an monotonically increasing function, but similarly an arbitrary monotonic decreasing function may be used. The monotonic function may be referred to as the “pseudo-geological-time”.
The geological-time of the deposition and restoration time of particles are predicted approximate positions since past configurations can not typically be verified.
“Current” or “present day” location for a particle (or data structure representing one or more particles) or subsurface feature may refer to the location of the item in the present time, as it is measured.
In stratified terrain, layers, horizons, faults and unconformities may be curvilinear surfaces which may be for example characterized as follows.
Terrain deformed in the neighborhood of a point r in the G-space may occur according to a “minimal deformation” tectonic style when, in this neighborhood:
Terrain deformed in the neighborhood of a point r in the G-space may occur according to a “flexural slip” tectonic style when, in this neighborhood:
Discrete-Smooth-Interpolation (DSI) is a method for interpolating or approximating values of a function ƒ(x,y,z) at nodes of a 3D grid or mesh Γ (e.g., 100), while honoring a given set of constraints. The DSI method allows properties of structures to be modeled by embedding data associated therewith in a (e.g., 3D Euclidean) modeled space. The function ƒ(x,y,z) may be defined by values at the nodes of the mesh, F. The DSI method allows the values of ƒ(x,y,z) to be computed at the nodes of the mesh, F, so that a set of one or more (e.g., linear) constraints are satisfied. DSI generally only applies linear constraints on the model.
In some embodiments, bold symbols represent vectors or multi-dimensional (e.g., 3D) functions or data structures.
In some embodiments, the “simeq” symbol “≅” or “≅” may mean approximately equal to, e.g., within 1-10% of, or in a least squares sense. In some embodiments, the symbol “≡” may mean identical to, or defined to be equal to.
While embodiments of the invention describe the input depositional model as the GeoChron model, any other depositional model visualizing the predicted configuration of each particle, region or layer at its respective time of depositional may be used.
While embodiments of the invention describe the present day coordinates as xyz, the restoration coordinates as uτvτtτ, the depositional coordinates as uvt, the restoration transformation as a uτvτtτ-transform, and the depositional transformation as a uvt-transform, any other coordinates or transformations may be used.
In the foregoing description, various aspects of the present invention have been described. For purposes of explanation, specific configurations and details have been set forth in order to provide a thorough understanding of the present invention. However, it will also be apparent to one skilled in the art that the present invention may be practiced without the specific details presented herein. Furthermore, well known features may have been omitted or simplified in order not to obscure the present invention. Unless specifically stated otherwise, as apparent from the following discussions, it is appreciated that throughout the specification discussions utilizing terms such as “processing,” “computing,” “calculating,” “determining,” or the like, refer to the action and/or processes of a computer or computing system, or similar electronic computing device, that manipulates and/or transforms data represented as physical, such as electronic, quantities within the computing system's registers and/or memories into other data similarly represented as physical quantities within the computing system's memories, registers or other such information storage, transmission or display devices. In addition, the term “plurality” may be used throughout the specification to describe two or more components, devices, elements, parameters and the like.
Embodiments of the invention may manipulate data representations of real-world objects and entities such as underground geological features, including faults and other features. The data may be generated by tomographic scanning, as discussed in reference to
When used herein, a subsurface image or model may refer to a computer-representation or visualization of actual geological features such as horizons and faults that exist in the real world. Some features when represented in a computing device may be approximations or estimates of a real world feature, or a virtual or idealized feature, such as an idealized horizon as produced in a uτ vτ tτ-transform. A model, or a model representing subsurface features or the location of those features, is typically an estimate or a “model”, which may approximate or estimate the physical subsurface structure being modeled with more or less accuracy.
It will thus be seen that the objects set forth above, among those made apparent from the preceding description, are efficiently attained and, because certain changes may be made in carrying out the above method and in the construction(s) set forth without departing from the spirit and scope of the invention, it is intended that all matter contained in the above description and shown in the accompanying drawings shall be interpreted as illustrative and not in a limiting sense.
It is also to be understood that the following claims are intended to cover all of the generic and specific features of the invention herein described and all statements of the scope of the invention which, as a matter of language, might be said to fall therebetween.
This application is a continuation-in-part of U.S. Ser. No. 16/681,061, filed on Nov. 12, 2019, which in turn is a continuation of U.S. Ser. No. 16/244,544, filed on Jan. 10, 2019, both of which are incorporated herein by reference in their entirety.
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Number | Date | Country | |
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20200225383 A1 | Jul 2020 | US |
Number | Date | Country | |
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Parent | 16244544 | Jan 2019 | US |
Child | 16681061 | US |
Number | Date | Country | |
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Parent | 16681061 | Nov 2019 | US |
Child | 16807695 | US |