Claims
- 1. A method for modeling material behavior comprising the steps of:
inducing a non-uniform state of stress and strain in a material sample using a testing device, measuring sample data with said testing device; and, training a self-organizing computational model with said data to learn a non-uniform behavior for the material.
- 2. A method for modeling material behavior as defined by claim 1 wherein said self-organizing computational model is a genetic algorithm.
- 3. A method for modeling material behavior as defined by claim 1 wherein said self-organizing computational model is a neural network.
- 4. A method for modeling material behavior as defined by claim 3 wherein said neural network comprises a nested adaptive neural network.
- 5. A method for modeling material behavior as defined by claim 3 wherein said neural network comprises a four layer neural network.
- 6. A method for modeling material behavior as defined by claim 3 wherein said neural network comprises a plurality of multi-layer feed forward neural network modules including higher and lower level modules, said higher level modules representing prior states of stress and strain and having only one-way connections to said lower level modules, whereby influence of recent states of stress and strain on prior states is eliminated.
- 7. A method for modeling material behavior as defined by claim 3 wherein said neural network includes a stiffness matrix.
- 8. A method for modeling material behavior as defined by claim 1 wherein said self-organizing computational model includes a finite element analysis.
- 9. A method for modeling material behavior as defined by claim 1 wherein the step of training said self-organizing computational model comprises using an autoprogressive training process.
- 10. A method for modeling material behavior as defined by claim 1 wherein said data includes at least empirical stress and strain data, and wherein the step of training said self-organizing computational model using said data includes separating said empirical stress and strain data and using a parallel training procedure whereby one training sequence causes said self-organizing computational method to use said empirical stress data to compute a strain value, and a second training sequence causes said self-organizing computational model to use said strain data to compute a stress value, said parallel training procedure completed when said computed values converge to substantially equal said empirical values.
- 11. A method for modeling material behavior as defined by claim 1 wherein said data comprises boundary values for a material sample.
- 12. A method for modeling material behavior as defined by claim 11 wherein said boundary values include at least two sets of data, each of said sets including force measured at one location of the material boundary and displacement measured at a second location of the material boundary.
- 13. A method for modeling material behavior as defined by claim 1 wherein said data includes one or more of stress and strain data obtained from a sensor internal to a sample of said material.
- 14. A method for modeling material behavior as defined by claim 1 wherein said data is three dimensional.
- 15. A method for modeling material behavior as defined by claim 1 wherein said data includes at least two sets of force and displacement data for the material.
- 16. A method for modeling material behavior as defined by claim 1 wherein the step of testing the material sample using said testing device includes causing said testing device to exert a force on a boundary of the material sample, and to measure displacement at a boundary of the material.
- 17. A method for modeling material behavior as defined by claim 1 wherein said testing device includes at least one moveable section operable to exert a force on the material sample.
- 18. A method for modeling material behavior as defined by claim 1 wherein said testing device comprises a laboratory testing device for testing a three dimensional material sample.
- 19. A method for modeling material behavior as defined by claim 18 wherein said testing device has a plurality of walls defining an enclosure for containing the sample, at least one of said walls moveable into said enclosure.
- 20. A method for modeling material behavior as defined by claim 1 wherein said testing device is operable to penetrate into a material sample, and includes a body having a moveable section.
- 21. A computer program product comprising computer executable instructions that when executed by a computer cause the computer to perform the steps of:
use empirical data resulting from testing of a material sample that induces a non-uniform state of stress and strain to train a self-organizing computational model using an autoprogressive training procedure to learn a non-uniform behavior for the material.
- 22. A material testing device for penetrating into a sample of the material, the testing device including:
a body having a surface and at least one movable section, said moveable section defining a portion of said surface; and, a plurality of sensors arranged on said surface, at least one of said sensors being disposed on said movable section, at least one of said sensors comprising a strain sensor.
- 23. A testing device as defined by claim 22 wherein said at least one moveable section is slidably movable relative to the remainder of said body.
- 24. A testing device as defined by claim 22 and further including a drive contained in said body and connected to said at least one moveable section.
- 25. A testing device as defined by claim 24 wherein said drive is operable to move said at least one moveable section a predetermined distance.
- 26. A testing device as defined by claim 22 wherein said body has a major axis, and wherein said at least one moveable section is moveable along said major axis.
- 27. A testing device as defined by claim 22 wherein said body remains substantially sealed as said at least one moveable section is moved.
- 28. A testing device as defined by claim 27 wherein said body includes a generally cylindrical shaped body wall that remains substantially continuous as said moveable section is moved.
- 29. A testing device as defined by claim 22 wherein said body has a penetrating end, at least one of said plurality of sensors being disposed on said penetrating end, and wherein said at least one moveable section defines at least a portion of said penetrating end.
- 30. A testing device as defined by claim 29 wherein said penetrating end is generally cone shaped.
- 31. A testing device as defined by claim 30 wherein said body is generally cylindrical shaped and has a major axis generally perpendicular to said penetrating end, wherein said at least one moveable section defines at least a portion of a wall of said cylindrical shaped body and defines at least a portion of said penetrating end, said moveable section moveable along the direction of said major axis.
- 32. A testing device as defined by claim 22 and further including a controller linked to said at least one moveable section and to said plurality of sensors.
- 33. A testing device as defined by claim 22 wherein at least one of said plurality of sensors is configured to measure friction as said body moves through the material.
- 34. A testing device as defined by claim 22 wherein at least one of said plurality of sensors is operable to measure data at a first time when said at least one moveable section is in a first position and to measure data at a second time when said at least one moveable section is in a second position.
- 35. A testing device as defined by claim 22 wherein said body is configured for connection to a bore.
- 36. A testing device as defined by claim 22 wherein said at least one moveable section comprises a plurality of moveable sections.
- 37. A testing device as defined by claim 22 and further including a data processor for determining a non-uniform three-dimensional stress-strain model using data from said plurality of sensors.
- 38. A testing device as defined by claim 37 wherein said data processor includes a self-organizing computational model that learns a solution to a boundary value problem, said data from said plurality of sensors comprising said boundary value solution.
- 39. A testing device as defined by claim 21 wherein said movable section is operable to induce a non-uniform state of stress and strain through its movements.
- 40. A laboratory testing device for measuring stress and strain of a material sample comprising:
a plurality of walls that define an enclosure for containing the material sample, at least a portion of at least one of said walls being moveable into said enclosure; a plurality of sensors connected to said plurality of walls; and, at least one inclusion in said enclosure configured to induce a non-uniform state of stress in the material sample.
- 41. A laboratory testing device as defined by claim 40 wherein said inclusion is attached to one of said plurality of walls.
- 42. A laboratory testing device as defined by claim 41 wherein said inclusion is attached to said at least a portion of at least one of said walls.
- 43. A laboratory testing device as defined by claim 42 wherein said inclusion comprises a generally convex shape extending outward from said one of said plurality of walls.
- 44. A laboratory testing device as defined by claim 41 wherein said inclusion comprises a generally concave shape extending outward from said enclosure and into said one of said plurality of walls.
- 45. A laboratory testing device as defined by claim 40 wherein said inclusion is unattached to any of said walls.
- 46. A laboratory testing device as defined by claim 45 and further including a guide for placing said inclusion at a desired position in said enclosure.
- 47. A laboratory testing device as defined by claim 40 wherein said inclusion has a shape generally corresponding to one of a disk, a cube, a three dimensional rectangle, a sphere, a semi-sphere, a dome, or a pyramid.
- 48. A laboratory testing device as defined by claim 40 wherein said inclusion is substantially incompressible and has predetermined dimensions.
- 49. A laboratory testing device as defined by claim 40 wherein said enclosure is generally cylindrical shaped.
- 50. A laboratory testing device as defined by claim 40 wherein said at least one inclusion comprises a plurality of inclusions.
- 51. A laboratory testing device as defined by claim 40 wherein said moveable at least a portion of said wall is moveable by a predetermined distance.
- 52. A laboratory testing device as defined by claim 40 wherein at least one of said sensors is operative to measure strain, and wherein at least one of said sensors is operative to measure force.
- 53. A laboratory testing device as defined by claim 40 and further including a controller for controlling said sensors, for recording data from said sensors, and for causing said moveable at least a portion of said moveable wall to move.
- 54. A laboratory testing device as defined by claim 53 wherein said controller is operative to cause said sensors to measure first data at a first time with said moveable wall in a first position, and to cause said sensors to measure second data with said movable wall in a second position.
- 55. A laboratory testing device as defined by claim 40 and further including a data processor for using data from said plurality of sensors to develop a non-uniform stress and strain model for the material.
- 56. A laboratory testing device as defined by claim 55 wherein said data processor includes a self-organizing computational model, said data from said plurality of sensors used to train said self-organizing computational model.
- 57. A laboratory testing device as defined by claim 40 wherein said moveable at least a portion of said wall is operable to induce a non-uniform state of stress and strain in the material sample.
- 58. A method for modeling material behavior comprising the steps of:
obtaining empirical stress and strain data for the material over a period of time while said material is in a non-uniform state of stress and strain; and, training a self-organizing computational model with said data to learn a non-uniform behavior for the material.
- 59. A method for modeling material behavior as defined by claim 58 wherein said empirical stress and strain data include displacement of the material caused by one or more of construction of a structure on said material or excavation of said material.
- 60. A method for modeling material behavior as defined by claim 59 wherein said displacement comprises displacement of a wall abutting the material.
- 61. A method for modeling material behavior as defined by claim 58 wherein said period of time comprises at least a day.
- 62. A method for modeling material behavior as defined by claim 58 wherein said period of time comprises at least a month.
- 63. A method for modeling material behavior as defined by claim 58 wherein the material comprises soil and wherein said data comprises displacement data as excavation of said soil occurs.
- 64. A method for modeling material behavior as defined by claim 58 wherein said material comprises soil and wherein said data comprises displacement data as a structure is built on the soil.
- 65. A method for modeling material behavior as defined by claim 58 wherein said self-organizing computational model is a genetic algorithm.
- 66. A method for modeling material behavior as defined by claim 58 wherein said self-organizing computational model is a neural network.
- 67. A method for modeling material behavior as defined by claim 66 wherein said neural network comprises a nested adaptive neural network.
- 68. A method for modeling material behavior as defined by claim 66 wherein said neural network material model comprises at least four layers.
- 69. A method for modeling material behavior as defined by claim 66 wherein said neural network material model comprises a plurality of multi-layer feed forward neural network modules including higher and lower level modules, said higher level modules representing prior states of stress and strain and having only one-way connections to said lower level modules, whereby influence of recent states of stress and strain on prior states is eliminated.
- 70. A method for modeling material behavior as defined by claim 58 wherein said self-organizing computational model includes a finite element analysis.
- 71. A method for modeling material behavior as defined by claim 58 wherein the step of training said self-organizing computational model comprises using an autoprogressive training process.
- 72. A method for modeling material behavior as defined by claim 58 wherein said data includes at least empirical stress and strain data, and wherein the step of training said self-organizing computational model using said data includes separating said empirical stress and strain data and using a parallel training procedure whereby one iterative training sequence causes said self-organizing computational method to use said empirical stress data to compute a strain value, and a second iterative training sequence causes said self-organizing computational model to use said strain data to compute a stress value, said parallel training procedure completed when said computed values converge to substantially equal said empirical values.
- 73. A method for modeling material behavior as defined by claim 58 wherein said data comprises at least two sets of boundary measurements of force and displacement for a material sample.
- 74. A method for modeling material behavior as defined by claim 58 wherein said data is three dimensional.
PRIORITY CLAIM
[0001] This application claims priority of U.S. Provisional Application Serial No. 60/371,095, filed Apr. 9, 2002 under 35 U.S.C. §119.
STATEMENT OF GOVERNMENT INTEREST
[0002] This invention was made with Government assistance under National Science Foundation Grant No. MSS 92-14910 and National Science Foundation Grant No. CMS 95-08462. The government has certain rights in the invention.
Provisional Applications (1)
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Number |
Date |
Country |
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60371095 |
Apr 2002 |
US |