The attitude and heading reference system (AHRS) for an aircraft is typically based on a complementary filtering algorithm. In order to increase solution accuracy, statistical filters, typically based on first-order approximations (e.g., extended Kalman filters), are commonly used. A drawback of this approach is in the polar regions, where the heading (e.g., magnetic aiding) is not sufficient to maintain the filter in its linear region.
At the polar regions, the horizontal component of the magnetic field vector becomes very small (or zero), making heading determination a challenging task. Furthermore, in the immediate vicinity of the geographic pole, very (or infinitely) high vertical angular rates are required to keep a vehicle locally-levelled (tangent) coordinate system aligned to the north. However, in such cases, the AHRS must be able to provide the user with reliable estimates of the attitude (roll and pitch angles) even though the output from the heading source is unreliable or completely missing.
An attitude and heading reference system (AHRS) for a vehicle comprises an inertial measurement unit (IMU) onboard the vehicle and configured to generate inertial measurements comprising angular rate and acceleration measurements during operation of the vehicle; a heading source onboard the vehicle and configured to generate heading measurements during operation of the vehicle; an attitude filter onboard the vehicle and in operative communication with the IMU; and a heading filter onboard the vehicle and in operative communication with the heading source. The attitude filter is configured to receive the inertial measurements from the IMU; compute an attitude estimation, comprising attitude estimates and covariances for the attitude estimates, based on the inertial measurements; and output the attitude estimation, comprising the attitude estimates and the covariances for the attitude estimates. The attitude estimation is independent of a geographic latitude of the vehicle, and is based on an error parameterization performed between a floating platform frame of the vehicle, not corrected for gyroscope sensor errors, and a body frame of reference, wherein earth and transport rates are estimated in the platform frame, avoiding a polar singularity. The heading filter is configured to receive the heading measurements, when available, from the heading source; receive the attitude estimation, comprising the attitude estimates and the covariances for the attitude estimates, from the attitude filter; compute a heading estimation, comprising a heading mean estimate and a heading variance, based on the heading measurements and the attitude estimation; and output the heading estimation, comprising the heading mean estimate and the heading variance, when the heading measurements are available. The attitude estimation output from the attitude filter is independent of any availability of the heading measurements, such that the attitude estimation output is available at all earth regions during operation of the vehicle.
Features of the present invention will become apparent to those skilled in the art from the following description with reference to the drawings. Understanding that the drawings depict only typical embodiments and are not therefore to be considered limiting in scope, the invention will be described with additional specificity and detail through the use of the accompanying drawings, in which:
In the following detailed description, embodiments are described in sufficient detail to enable those skilled in the art to practice the invention. It is to be understood that other embodiments may be utilized without departing from the scope of the invention. The following detailed description is, therefore, not to be taken in a limiting sense.
An attitude and heading reference system (AHRS) for a vehicle, such as an aircraft, a helicopter, a missile, a spacecraft, a rocket, a boat, a submarine, an automobile, a truck, or any vehicle or apparatus for which attitude and heading is desirable, is described herein, which is adapted with methods that allow the AHRS to properly operate everywhere over the earth. In this AHRS, the attitude estimation is decoupled from the heading estimation, such that the overall solution is decoupled into two separate statistical filters, an attitude filter and a heading filter, in a cascaded scheme. Decoupling of the attitude and heading estimation in the AHRS by use of the separate statistical filters provides the advantage that attitude estimates of a vehicle are available even during polar region operation, or any other operation where heading measurements are unavailable.
In the described system and methods, an attitude estimate is generated in the attitude filter independent of a heading estimate. The attitude estimate, in terms of its mean and corresponding uncertainty (covariance matrix), is fed from the attitude filter into the heading filter. A heading estimate, including a mean and uncertainty, is then generated in the heading filter. The attitude estimate and heading estimate are then separately outputted for use by a vehicle navigation system.
In order to make the attitude filter operation independent of the geographic latitude of the vehicle, an error parameterization is performed in the vehicle “floating” platform frame (not corrected for gyroscope sensor errors) and body frames of reference. The so-called “floating” platform frame (hereafter, P-frame) differs from the well known platform (or wander) frame in the sense that it is not corrected for the gyroscope measurement induced errors. The filter error states related to the attitude, inertial measurement unit (IMU) sensors estimation errors, as well as the vehicle's acceleration, are estimated in the non-drifting (body) frame, which is contrary to the navigation (tangential) frame commonly employed for AHRS mechanizations. On the other hand, the earth and transport rates are estimated in the platform frame, avoiding the polar singularity (and latitude dependence as such). The described approach also mitigates impact of the equator-to-pole variations in gravity, allowing for improved attitude performance.
It is only in the heading filter where the common navigation frame (N-frame) is employed to estimate the vertical component of the vehicle's transport rate. The heading filter also facilitates an appropriate statistical modeling and approximation of the errors coming from the attitude filter as well as the heading mechanization itself
The present approach provides for increased attitude availability in polar regions for a gravity seeking AHRS implementation. The methods can also be implemented within an Air Data aided AHRS (ADAHRS), a GPS aided AHRS, or other navigation systems. The future vehicle navigation architectures would benefit from the described approach by also offering the uncertainty of the attitude/heading estimates.
As used herein, an earth polar region is typically defined as the region north of about 78 degrees north latitude, or the region south of about 78 degrees south latitude.
Further details of the disclosed system and methods are described hereafter with reference to the drawings.
The IMU 110 can include a 3-axis gyroscope 112 and a 3-axis accelerometer 114, for example. The attitude filter 120 is configured to receive the inertial measurements from IMU 110. For example, attitude filter 120 can receive a measured quantity of angular rate ({tilde over (ω)}IBB) output from gyroscope 112, and attitude filter 120 can receive a measured quantity of specific force (iB) output from accelerometer 114. The attitude filter 120 is configured to generate an attitude estimation, including attitude (roll and pitch) estimates ({circumflex over (φ)}, {circumflex over (θ)}) and covariances (Patt) for the attitude estimates.
The heading filter 140 is configured to receive a measured heading ({tilde over (ψ)}, e.g., based on the magnetometer measurements {tilde over (m)}B) output from heading source 130. The heading filter 140 also receives the attitude estimates, and the covariances for the attitude estimates from attitude filter 120. The heading filter 140 is configured to generate and output a heading estimation, including a heading mean estimate ({tilde over (ψ)}) and a heading variance (Phdg).
The attitude filter 120 outputs the attitude estimates (roll and pitch) at 150, as well as an attitude covariance matrix at 154. The heading filter 140 outputs the heading estimate (yaw) at 160, as well as a heading variance at 164. These attitude and heading estimates are then used by a vehicle navigation system, such as an aircraft navigation system.
By having the attitude and heading estimation decoupled into two separate filters in a cascaded scheme, the attitude is completely independent of the heading in AHRS 100. This prevents any disruptive effect of heading measurements, such as from a magnetometer, on the attitude estimates, while allowing the AHRS 100 to operate without limitations when heading measurements are not available.
As discussed in further detail hereafter, in attitude filter 120 all error parametrizations are performed solely by use of two reference frames: the body frame and the “floating” platform frame. The “floating” platform frame is locally leveled, drifting with gyroscope sensor errors. This has the advantage of avoiding all vulnerabilities due to the navigation frame, typically called NED (North-East-Down) in the polar regions. In addition, attitude errors are resolved in the body frame, which has the advantage that the attitude error states are estimated in the non-drifting (body) frame. Further, Earth and transport rate errors are resolved in the drifting platform frame, which has the advantage of avoiding the polar singularity encountered when using the navigation frame. Also, equator-to-pole gravity variations can be estimated through appropriate gravity variations modeling in the attitude filter.
The heading filter 140 provides estimation of the body-frame-resolved gyroscope sensor errors related to the heading, and estimation of the vertical angular rate of the navigation frame (Earth and transport rates as a single quantity). The heading filter also provides an approximation of the attitude filter errors related to the heading. This provides the advantage of an appropriate statistical modelling and approximation of the errors coming from the attitude filter, as well as the heading mechanization itself. In addition, the heading filter provides the heading estimates while not affecting the attitude filter at non-polar regions of vehicle operation.
Further details related to the attitude filter and heading filter are described in the following sections.
Attitude Filter
In the attitude filter, the platform frame (P-frame) is aligned with the corresponding navigation (e.g., NED) frame at the beginning of the operation. Drifting with gyroscope sensor errors is not corrected via position corrections (compared to the wander-frame known from integrated inertial navigation systems). The attitude filter uses more appropriate Earth and transport rates modelling as compared to state-of-the-art models.
The angular rate of the P-frame with respect to the inertial frame (ωIPP) is represented by the following equation:
ωIPP=ωEPP+ωIEP (1)
where ωEPP is the so-called platform transport rate, i.e., the angular velocity of the P-frame with respect to the Earth-centered Earth-fixed (ECEF) frame, and ωIEP is the Earth rate. The transport rate (P-frame) can be represented by the following expression:
where R is the approximate distance of the vehicle from the center of the Earth, νEBNx is the north component of the vehicle's ground velocity (when expressed in the N-frame), νEBNy is the east component of the vehicle's ground velocity (when expressed in the N-frame), and α is the platform angle. The earth rate (P-frame) can be represented by the following expression:
where ωie is the angular rate of the Earth's rotation around its axis expressed with respect to the inertial frame
and φ is the geographic latitude.
The Earth rate and transport rate can be modelled as first-order Gauss-Markov (GM-1) processes using the following equations:
δ{dot over (ω)}GM,IEP=−1/τGM,IEδωGM,IEP+wGM,IEP (4)
δ{dot over (ω)}GM,EPP=−1/τGM,EPδωGM,EPP+wGM,EPP (5)
where τGM,IE is the time constant of the GM-1 process used to model the Earth rate, δωGM,IEP is Earth rate estimation error, wGM,IEP is the driving noise of the GM-1 process used to model the Earth rate, τGM,EP is the time constant of the GM-1 process used to model the transport rate, δωGM,EPP is transport rate estimation error, and wGM,EPP is the driving noise of the GM-1 process used to model the transport rate.
The attitude filter can also provide Gravity variations modeling, which deals with local Gravity variations, capturing the difference between the Gravity over the equator and polar regions of the Earth. When Gravity variations are not modeled, the accelerometer bias estimates will typically be corrupted.
δ{dot over (b)}gravPz=−1/τgravδbgravPz+wGMgravP (6)
where τgrav is the time constant of the GM-1 process, δbgravPz is the Gravity variations estimation error, and wGMgrawP is the driving noise of the GM-1 process.
An exemplary process model that can be employed in the attitude filter is defined by the following expression:
An exemplary measurement model that can be employed in the attitude filter is defined by the following expression:
In equations 7 and 8, the errors state vectors are represented by the following parameters: ϵB, which is the attitude errors (body-frame); δbgyrB, which is the gyroscope bias errors; δaB, which is the vehicle acceleration errors; δωGM,IEP, which is the Earth rate (P-frame) errors; δωGM,EPP, which is the transport rate (P-frame) errors; δbaccB, which is the accelerometer bias errors; and δbgravPz, which is the equator-to-pole gravity variation error. The measurement δ{tilde over (f)}B is the specific force measurement error. The consequences of the proposed approach on filter architecture can also be seen from comparing equations (7) and (8) with the corresponding process and measurement model equations disclosed in U.S. application Ser. No. 14/949,437, filed on Nov. 23, 2015, entitled Methods for Attitude and Heading Reference System to Mitigate Vehicle Acceleration Effects, which is based on a N-frame embodiment. The disclosure of U.S. application Ser. No. 14/949,437 is incorporated by reference herein.
Heading Filter
The fundamental kinematics for the heading can be described by the following equation:
where φ is the roll angle, θ is the pitch angle, ωNBBy and ωNBBz are the y-axis and z-axis components of the true (theoretic) angular rate of the B-frame with respect to the N-frame, respectively; {tilde over (ω)}IBBy and {tilde over (ω)}IBBz are the gyroscope y-axis and z-axis measurements, respectively; bgyrBy and bgyrBz are the y-axis and z-axis gyroscope biases, respectively; wgyrBy and wgyrBz are the gyroscope y-axis and z-axis white noise, respectively; and
where ωgyr models the gyroscope-related factors and ωETR takes into account the Earth's and transport rates-related factors. An error model for the heading filter can be represented by the following equation:
δ{dot over (ψ)}=δωgyr−δωETR (12)
where δωgyr is the estimation error of the ωgyr quantity, and δωETR is the ωETR quantity estimation error. Applying the first-order approximations, δωgyr can be represented by the following equation:
where {circumflex over (φ)} and {circumflex over (θ)} are the estimated roll and pitch angles, respectively; δbgyrBy and δbgyrBz are the y-axis and z-axis gyroscope bias error estimates, respectively, and wω,att stands for the noise modeling of the remaining attitude filter errors (influences) affecting the estimation process. The steady-state variance of the wω,att noise is computed by linear approximation of the attitude filter errors affecting the heading estimation as follows:
where P{circumflex over (∅)},{circumflex over (θ)}is the roll and pitch angle cross-covariance matrix (obtained from the attitude filter), Pw
is so-called Jacobian evaluated at the point ({circumflex over (∅)},{circumflex over (θ)},{circumflex over (ω)}gyrBy,{circumflex over (ω)}gyrBz), which is defined as:
The δωETR error term can be represented by the following equation:
δωETR=(cos{circumflex over (ψ)}tan{circumflex over (θ)})wETRNx+(sin{circumflex over (ψ)}tan{circumflex over (θ)})wETRNy+δωGM,ETRNz (16)
where {circumflex over (θ)} and {circumflex over (ψ)} stand for the estimated pitch and heading angles, and δωGM,ETRNz is the estimation error of the vertical Earth's and transport rate computed in the navigation frame (N-frame). The δωGM,ETRNz can be modeled as a GM-1 process with a fixed time constant using the following equation:
δ{dot over (ω)}GM,ETRNz=−1/τGM,ETRδωGM,ETRNz+wGM,ETRNz (17)
where τGM,ETR is the time constant of the GM-1 process and wGM,ETRNz is its driving noise.
An exemplary process model that can be employed in the heading filter is defined by the following equation:
where in the
and
terms, the roll and pitch estimates from the attitude filter are used, and the variance of the wω,att term is computed based on equation (14). An exemplary measurement model that can be employed in the heading filter is defined by the following equation:
In equations 18 and 19, the errors state vectors are represented by the following parameters: δψ, which is the heading error; δωGM,ETRNz, which is the error in the z-axis angular velocity of the navigation frame (e.g., NED); δbgyrBy, which is the gyroscope lateral bias errors; and δbgyrBz, which is the gyroscope vertical bias errors. The parameter δ{tilde over (ψ)} is the error in the heading measurement.
A processor used in the present system can be implemented using software, firmware, hardware, or any appropriate combination thereof, as known to one of skill in the art. These may be supplemented by, or incorporated in, specially-designed application-specific integrated circuits (ASICs) or field programmable gate arrays (FPGAs). The computer or processor can also include functions with software programs, firmware, or other computer readable instructions for carrying out various process tasks, calculations, and control functions used in the present method and system.
The present methods can be implemented by computer executable instructions, such as program modules or components, which are executed by at least one processor. Generally, program modules include routines, programs, objects, data components, data structures, algorithms, and the like, which perform particular tasks or implement particular abstract data types.
Instructions for carrying out the various process tasks, calculations, and generation of other data used in the operation of the methods described herein can be implemented in software, firmware, or other computer- or processor-readable instructions. These instructions are typically stored on any appropriate computer program product that includes a computer readable medium used for storage of computer readable instructions or data structures. Such a computer readable medium can be any available media that can be accessed by a general purpose or special purpose computer or processor, or any programmable logic device.
Suitable processor-readable media may include storage or memory media such as magnetic or optical media. For example, storage or memory media may include conventional hard disks, compact disks, or other optical storage disks; volatile or non-volatile media such as Random Access Memory (RAM); Read Only Memory (ROM), Electrically Erasable Programmable ROM (EEPROM), flash memory, and the like; or any other media that can be used to carry or store desired program code in the form of computer executable instructions or data structures.
Example 1 includes an attitude and heading reference system (AHRS) for a vehicle, the AHRS comprising an inertial measurement unit (IMU) onboard the vehicle and configured to generate inertial measurements comprising angular rate and acceleration measurements during operation of the vehicle; a heading source onboard the vehicle and configured to generate heading measurements during operation of the vehicle; an attitude filter onboard the vehicle and in operative communication with the IMU; and a heading filter onboard the vehicle and in operative communication with the heading source. The attitude filter is configured to receive the inertial measurements from the IMU; compute an attitude estimation, comprising attitude estimates and covariances for the attitude estimates, based on the inertial measurements, wherein the attitude estimation is independent of a geographic latitude of the vehicle, and is based on an error parameterization performed between a floating platform frame of the vehicle, not corrected for gyroscope sensor errors, and a body frame of reference, wherein earth and transport rates are estimated in the platform frame, avoiding a polar singularity; and output the attitude estimation, comprising the attitude estimates and the covariances for the attitude estimates. The heading filter is configured to receive the heading measurements, when available, from the heading source; receive the attitude estimation, comprising the attitude estimates and the covariances for the attitude estimates, from the attitude filter; compute a heading estimation, comprising a heading mean estimate and a heading variance, based on the heading measurements and the attitude estimation; and output the heading estimation, comprising the heading mean estimate and the heading variance, when the heading measurements are available. The attitude estimation output from the attitude filter is independent of any availability of the heading measurements, such that the attitude estimation output is available at all earth regions during operation of the vehicle.
Example 2 includes the AHRS of Example 1, wherein the vehicle comprises an aircraft, a helicopter, a missile, a spacecraft, a rocket, a boat, a submarine, an automobile, or a truck.
Example 3 includes the AHRS of any of Examples 1-2, wherein the IMU comprises a three-axis accelerometer and a three-axis gyroscope; and the heading source comprises a magnetometer.
Example 4 includes the AHRS of any of Examples 1-3, wherein the attitude estimation output is available when the vehicle is in operation at an earth polar region.
Example 5 includes the AHRS of any of Examples 1-4, wherein the attitude filter comprises an Earth rate model and a transport rate model.
Example 6 includes the AHRS of any of Examples 1-5, wherein the attitude filter further comprises a model of gravity variation errors.
Example 7 includes the AHRS of Example 6, wherein the the model of gravity variation errors comprises a first-order Gauss-Markov (GM-1) process defined by:
δ{dot over (b)}gravPz=−1/τgravδbgravPz+wGMgravP
where τgrav is a time constant of the GM-1 process; δbgravPz is a gravity variations estimation error; and wGMgravP is a driving noise of the GM-1 process.
Example 8 includes the AHRS of any of Examples 1-7, wherein the attitude estimates include roll and pitch estimates for the vehicle;
wherein a process model of the attitude filter is defined by the following expression:
where ϵB is attitude error in a body-frame of the vehicle; δbgyrB is gyroscope bias error; τgyr is a time constant of a first-order Gauss-Markov (GM-1) process used to model gyroscope bias; wGMgyrBB is a driving noise of the GM-1 process used to model the gyroscope bias; δaB is vehicle acceleration error; τacceleration is a time constant of the GM-1 process used to model vehicle acceleration; wGMaccelerationB is driving noise of the GM-1 process used to model the vehicle acceleration; δωGM,IEP is Earth rate error in the platform frame (P-frame); τGM,IE is a time constant of the GM-1 process used to model the Earth rate; wGM,IEP is driving noise of the GM-1 process used to model the Earth rate; δωGM,EPP is transport rate error in the P-frame; τGM,EP is a time constant of the GM-1 process used to model the transport rate; wGM,EPP is driving noise of the GM-1 process used to model the transport rate; δbaccB is accelerometer bias error; τacc is a time constant of the GM-1 process used to model accelerometer bias; wGMaccBB is a driving noise of the GM-1 process used to model the accelerometer bias; δbgravPz is equator-to-pole gravity variation error; τgrav is a time constant of the GM-1 process used to model equator-to-pole gravity variation; and wGMgravP is a driving noise of the GM-1 process used to model the equator-to-pole gravity variation;
wherein a measurement model of the attitude filter is defined by the following expression:
where δ{tilde over (f)}B is specific force measurement error; ĈPB is a direction cosine matrix transforming a vector from the P-frame to the body-frame; gP is a gravity vector expressed in the P-frame; {circumflex over (b)}gravPz is an estimated Gravity variation; wsfB is specific force measurement noise; and wgravP is a gravity model measurement noise.
Example 9 includes the AHRS of any of Examples 1-8, wherein the heading mean estimate from the heading filter includes a yaw estimate for the vehicle;
wherein a process model of the heading filter is defined by the following expression:
where {circumflex over (∅)} and {circumflex over (θ)} are estimated roll and pitch angle from the attitude filter, respectively; δbgyrBy is a gyroscope lateral axis bias error; τgyrBy is a time constant of the GM-1 process used to model the gyroscope lateral axis bias error; wGMgyrBBy is the driving noise of the GM-1 process used to model the lateral axis gyroscope bias error; δbgyrBz is gyroscope vertical axis bias error; τgyrBz is a time constant of the GM-1 process used to model the gyroscope vertical axis bias error; wGMgyrBBz is a driving noise of the GM-1 process used to model the gyroscope vertical axis bias error; δωGM,ETRNz is a error in z-axis angular velocity of a navigation frame (N-frame) of the vehicle; τGM,ETRNz is a time constant of the GM-1 process used to model the z-axis angular velocity of the N-frame; wGM,ETRNz is a driving noise of the GM-1 process used to model the z-axis angular velocity of the N-frame; wETRNx and wETRNy are horizontal white noises for the Earth and transport rate models expressed in the N-frame; and the steady-state variance of wω,att is defined by the following equation:
where P{circumflex over (∅)},{circumflex over (θ)}is the roll and pitch angle cross-covariance matrix, obtained from the attitude filter,
is gyroscope y-axis and z-axis white noise cross-covariance matrix; and
is evaluated at the point ({circumflex over (∅)},{circumflex over (θ)},{circumflex over (ω)}gyrBy,{circumflex over (ω)}gyrBz), and is defined as:
wherein a measurement model of the heading filter is defined by the following equation:
where δψ is a heading error; wψis a heading measurement noise; and δ{tilde over (ψ)} is the error in the heading measurement.
Example 10 includes a method for operating an AHRS for navigating a vehicle, the method comprising obtaining inertial measurements from an IMU onboard the vehicle during movement of the vehicle; inputting the inertial measurements into an attitude filter onboard the vehicle; computing, in the attitude filter, an attitude estimation comprising attitude estimates and covariances for the attitude estimates, based on the inertial measurements; obtaining heading measurements, when available, from a heading source onboard the vehicle; inputting the heading measurements into a heading filter onboard the vehicle; sending the attitude estimation, comprising the attitude estimates and the covariances for the attitude estimates, from the attitude filter to the heading filter; computing, in the heading filter, a heading estimation comprising a heading mean estimate and a heading variance, based on the heading measurements and the attitude estimation; outputting the heading estimation, comprising the heading mean estimate and the heading variance, when the heading measurements are available, from the heading filter for use in navigation of the vehicle; and outputting the attitude estimation from the attitude filter, independent of when the heading measurements are available, such that the attitude estimation is available at all earth regions for use in navigation of the vehicle.
Example 11 includes the method of Example 10, wherein the vehicle comprises an aircraft, a helicopter, a missile, a spacecraft, a rocket, a boat, a submarine, an automobile, or a truck.
Example 12 includes the method of any of Examples 10-11, wherein the attitude estimation output is available when the vehicle is in operation at an earth polar region.
Example 13 includes the method of any of Examples 10-12, wherein the attitude estimates include roll and pitch estimates for the vehicle.
Example 14 includes the method of any of Examples 10-13, wherein the heading mean estimate includes a yaw estimate for the vehicle.
Example 15 includes the method of any of Examples 10-14, wherein the attitude filter comprises an Earth rate model and a transport rate model.
Example 16 includes the method of any of Examples 10-15, wherein the attitude filter further comprises a model of gravity variation errors.
Example 17 includes the method of any of Examples 10-16, wherein the model of gravity variation errors comprises a GM-1 process defined by:
δ{dot over (b)}gravPz=−1/τgravδbgravPz+wGMgravP
where τgrav is a time constant of the GM-1 process; δbgravPz is a gravity variations estimation error; and wGMgravP is a driving noise of the GM-1 process.
Example 18 includes a computer program product comprising a non-transitory computer readable medium having instructions stored thereon executable by a processer to perform a method for operating an AHRS for navigating a vehicle, the method comprising: obtaining inertial measurements from an IMU onboard the vehicle during movement of the vehicle; inputting the inertial measurements into an attitude filter onboard the vehicle; computing, in the attitude filter, an attitude estimation comprising attitude estimates and covariances for the attitude estimates, based on the inertial measurements; obtaining heading measurements, when available, from a heading source onboard the vehicle; inputting the heading measurements into a heading filter onboard the vehicle; sending the attitude estimation, comprising the attitude estimates and the covariances for the attitude estimates, from the attitude filter to the heading filter; computing, in the heading filter, a heading estimation comprising a heading mean estimate and a heading variance, based on the heading measurements and the attitude estimation; outputting the heading estimation, comprising the heading mean estimate and the heading variance, when the heading measurements are available, from the heading filter for use in navigation of the vehicle; and outputting the attitude estimation from the attitude filter, independent of when the heading measurements are available, such that the attitude estimation is available at all earth regions for use in navigation of the vehicle.
Although specific embodiments have been illustrated and described herein, it will be appreciated by those of ordinary skill in the art that any arrangement, which is suitable to achieve the same purpose, may be substituted for the specific embodiments shown. Therefore, it is manifestly intended that this invention be limited only by the claims and the equivalents thereof.
Number | Name | Date | Kind |
---|---|---|---|
7409290 | Lin | Aug 2008 | B2 |
8442703 | Petillon | May 2013 | B2 |
8645063 | Fortier | Feb 2014 | B2 |
20020059027 | An | May 2002 | A1 |
20050138825 | Manfred | Jun 2005 | A1 |
20110184594 | Manfred | Jul 2011 | A1 |
20170146347 | Sotak et al. | May 2017 | A1 |
Entry |
---|
Riaz, “INS/GPS Based State Estimation of Micro Air Vehicles Parametric Study Using Extended Kalman Filter (EKF) Schemes”, Innovative Systems Design and Engineering, pp. 114, vol. 2, No. 3, Publisher: The International Institute for Science, Technology and Education (IISTE). |
Sotak, et al., “Methods for Attitude and Heading Reference System to Mitigate Vehicle Acceleration Effects”, U.S. Appl. No. 14/949,437, filed Nov. 23, 2015, Published in: US. |