Claims
- 1. A method for predicting at least one operating characteristic of a drill bit, the method comprising:
entering a value for at least two drill bit design parameters into a trained neural network; entering a value for at least one drill bit operating condition into a trained neural network; and receiving at least one value for at least one drill bit operating characteristic as output of the trained neural network.
- 2. The method of claim 1, further including entering values for at least two drill bit operating conditions into the trained neural network.
- 3. The method of claim 2, further including the neural network characterizing the performance of the drill bit under a variety of operating conditions.
- 4. The method of claim 1, further including
entering the values for the at least two drill bit design parameters and the at least one drill bit operating condition into a device that can follow instructions to alter data in a desirable way to perform at least some operations without human intervention, and the device providing the at least one value for at least one drill bit operating characteristic.
- 5. The method of claim 4, further including
entering a plurality of values of at least one drill bit operating condition into the trained neural network, and receiving output from the trained neural network indicating a value for at least one drill bit operating characteristic for at least two entered values of the at least one drill bit operating condition.
- 6. The method of claim 4, further including programming the device with multiple values of the one or more of the drill bit operating conditions, the values incremented over one or more ranges.
- 7. The method of claim 1, further including evaluating at least one value of the at least one drill bit operating characteristic to determine performance of the drill bit.
- 8. The method of claim 1, further including evaluating at least one value of at least one drill bit operating characteristic to assist in determining the design of the drill bit.
- 9. The method of claim 8, further including
evaluating the effect of at least two drill bit design parameters upon the at least one drill bit operating characteristic, and selecting the at least one drill bit design parameter having the greatest effect upon the at least one drill bit operating characteristic.
- 10. A method for determining at least one operating characteristic of a drill bit having at least one design parameter and at least one operating condition with the use of an appropriately trained neural network, the method comprising:
determining at least one drill bit design parameter, at least one drill bit operating condition and at least one drill bit operating characteristic; entering a value for at least one drill bit design parameter and a value for at least one drill bit operating condition into a trained neural network; and receiving output from the trained neural network indicating at least one value for at least one operating characteristic of a drill bit having the at least one drill bit design parameter and operating condition entered into the trained neural network.
- 11. The method of claim 10, further including entering values for a plurality of drill bit design parameters and values for a plurality of drill bit operating conditions into the trained neural network.
- 12. The method of claim 11, wherein the plurality of drill bit design parameters include at least one among the bit diameter, cone volume index 1, cone volume index 2, asymmetry index, drill bit gauge type, shear length index, cut area index, profile length index, profile base moment, profile center moment, gauge ring, profile base 2nd moment, profile center 2nd moment, cut area base moment, cut area center moment, and bit volume index.
- 13. The method of claim 12, wherein the drill bit is a fixed cutter drill bit.
- 14. The method of claim 10, wherein the at least one drill bit operating condition includes at least one among the drill bit rpm, weight on bit, rock type, drilling depth, mud weight, build angle, and bent sub angle.
- 15. The method of claim 10, wherein the at least one drill bit operating characteristic includes at least one among lateral acceleration, torsional acceleration, torque, and longitudinal acceleration.
- 16. The method of claim 10, further including entering the values for the at least one drill bit design parameter and the at least one drill bit operating condition into a device that can follow instructions to alter data in a desirable way to perform at least some operations without human intervention.
- 17. The method of claim 16, further including
entering a value for each among a plurality of drill bit operating conditions into the trained neural network, and receiving output indicating a value for at least one drill bit operating characteristic for at least two entered values of the at least one drill bit operating condition.
- 18. The method of claim 16, further including
entering a value for each among a plurality of drill bit design parameters into the trained neural network, evaluating the effect of the drill bit design parameters upon the at least one drill bit operating characteristic, and selecting at least one drill bit design parameter having the greatest effect upon the at least one drill bit operating characteristic to determine the drill bit design parameters for which values will be entered into the trained neural network.
- 19. A method for selecting a value of at least one among at least one operating characteristic of a drill bit, at least one design parameter of a drill bit and at least one operating condition of a drill bit with the use of a neural network, the method comprising:
identifying at least one drill bit design parameter, at least one drill bit operating condition and at least one drill bit operating characteristic, training the neural network with data relating to at least two among at least one drill bit design parameter, at least one drill bit operating condition and at least one drill bit operating characteristic for each among a plurality of drill bits, entering a value for at least one among at least one drill bit design parameter, drill bit operating condition and drill bit operating characteristic into the trained neural network, and the neural network providing output useful for predicting at least one among at least one drill bit design parameter, at least one drill bit operating condition and at least one drill bit operating characteristic based upon the entered values.
- 20. The method of claim 19, further including evaluating the output of the neural network to determine performance of the drill bit.
- 21. The method of claim 19, further including entering a value for at least two among the at least one drill bit design parameter, drill bit operating condition and drill bit operating characteristic into the trained neural network, and evaluating the output to assist in determining the design of a drill bit.
- 22. The method of claim 21, further including using the neural network to characterize performance of the drill bit under a variety of operating conditions.
- 23. The method of claim 19, further including evaluating the output to determine behavior of the drill bit.
- 24. The method of claim 23, further including
entering a value for at least two drill bit design parameters into the neural network, evaluating the effect of at least two drill bit design parameters upon at least one drill bit operating characteristic, and selecting at least one drill bit design parameter having an impact upon at least one drill bit operating characteristic to determine the at least one drill bit design parameter for which values will be entered into the trained neural network.
- 25. The method of claim 19, further including
entering a plurality of data sets, each data set including a value for a set of drill bit design parameters and at least one drill bit operating condition, and at least one drill bit operating characteristic for each data set, entering values for a set of drill bit design parameters and at least one drill bit operating condition into the trained neural network, and generating output from the trained neural network to characterize at least one operating characteristic of a drill bit having the entered values for the drill bit design parameters and at least one operating condition.
- 26. A method for determining the design of a drill bit, the method comprising:
entering a value for at least two among at least one drill bit design parameter, at least one drill bit operating condition and at least one drill bit operating characteristic into a trained neural network; and receiving output from the trained neural network to determine at least one drill bit design parameter useful in the design of a drill bit.
- 27. The method of claim 26, wherein the neural network is trained by inputting into a computing device a value for at least one drill bit design parameter, at least one drill bit operating condition and at least one drill bit operating characteristic for a plurality of drill bits.
- 28. The method of claim 27, wherein the drill bit is a fixed cutter drill bit.
- 29. The method of claim 28, wherein the at least one drill bit operating characteristic includes at least one among lateral acceleration, torsional acceleration, torque, and longitudinal acceleration.
- 30. A method for characterizing the performance of a drill bit, the method comprising:
determining a set of drill bit design parameters and at least one drill bit operating condition; training a neural network by inputting a plurality of data sets, each data set including a value for a set of drill bit design parameters and at least one drill bit operating condition, and at least one drill bit operating characteristic for each data set; entering values for a set of drill bit design parameters and at least one drill bit operating condition into the trained neural network; and generating output from the trained neural network to characterize at least one operating characteristic of a drill bit having the entered values for the drill bit design parameters and at least one operating condition.
- 31. The method of claim 30, further including entering values for a plurality of operating conditions into the trained neural network.
- 32. The method of claim 31, wherein the drill bit is a fixed cutter drill bit.
- 33. The method of claim 32, further including
entering the values for the drill bit design parameters and at least one drill bit operating condition into a device that can follow instructions to alter data in a desirable way to perform at least some operations without human intervention, and the device providing the output.
- 34. The method of claim 33, further including programming the device such that one or more of the at least one drill bit operating condition is incremented over one or more ranges to predict the overall drilling behavior of the drill bit.
- 35. The method of claim 30, further including evaluating the output to assist in determining the design of the drill bit.
- 36. The method of claim 35, wherein the drill bit is a fixed cutter drill bit.
- 37. The method of claim 36, further including
entering a plurality of values of at least one drill bit operating condition into the trained neural network, and receiving output from the trained neural network indicating a value for at least one drill bit operating characteristic for each entered value of the at least one drill bit operating condition.
- 38. A method for determining the best fit between at least one drill bit operating characteristic and at least one among at least one drill bit design parameter and at least one drill bit operating condition, the method comprising:
entering a value for at least one among at least one drill bit design parameter and at least one drill bit operating condition into a trained neural network; and receiving output from the trained neural network indicating a value for at least one drill bit operating characteristic of a drill bit having the entered values.
- 39. The method of claim 38, further including evaluating the output to determine the best fit of at least one drill bit operating characteristic with at least one drill bit design parameter and at least one drill bit operating condition.
- 40. The method of claim 39, further including entering a value for each among a plurality of drill bit design parameters and a plurality of drill bit operating conditions.
- 41. A method for predicting the drilling behavior of a drill bit, the method comprising:
entering a plurality of values of at least one drill bit operating condition into a trained neural network; and receiving output from the trained neural network indicating a value for at least one drill bit operating characteristic for each entered value of the at least one drill bit operating condition.
- 42. A method for selecting at least one drill bit design parameter for assisting in determining the usefulness of a drill bit, the method comprising:
training a neural network with values of at least two drill bit design parameters and at least one drill bit operating characteristic; evaluating the sensitivity of at least two drill bit design parameters upon the at least one drill bit operating characteristic; and determining which at least one drill bit design parameter has the greatest effect on accurately predicting at least one drill bit operating characteristic.
Priority Claims (1)
Number |
Date |
Country |
Kind |
GB0009266.8 |
Apr 2000 |
GB |
|
CROSS REFERENCE TO RELATED APPLICATIONS
[0001] This application is a Continuation of U.S. patent application Ser. No. 09/634,193 filed on Aug. 9, 2000 hereby incorporated herein by reference, which claims priority from United Kingdom Patent Application GB 0009266.8, filed Apr. 15, 2000.
Continuations (1)
|
Number |
Date |
Country |
Parent |
09634193 |
Aug 2000 |
US |
Child |
10063243 |
Apr 2002 |
US |