Claims
- 1. A method for providing a virtual age estimation for predicting the remaining lifetime of a device of a given type, comprising the steps of:
monitoring a predetermined number of significant parameters of respective ones of a training set of devices of said given type, said parameters contributing respective wear increments; determining coefficients of a multivariate Hermite polynomial for modeling said wear increments determined from said training set operated to failure and whereof the respective virtual ages are normalized substantially to a desired norm value; deriving from said multivariate Hermite polynomial a formula for virtual age of a device of said given type; and applying said formula to said significant parameters from a further device of the said given type for deriving wear increments for said further device.
- 2. A method for providing a virtual age estimation as recited in claim 1, including a step of cumulating said further device so as to derive a virtual age estimation for said further device.
- 3. A method for providing a virtual age estimation as recited in claim 1, including a step of selecting said predetermined number of significant parameters by selecting a number thereof so as to minimize deviations of said virtual ages from said normalized virtual age.
- 4. A method for providing a virtual age estimation for devices of a given type by predicting the remaining lifetime of a further device of said given type by computing wear increments, comprising the steps of:
collecting data on parameters contributing wear increments in a training set of sample devices until failure, said sample devices being similar to said given device; modeling a wear increment by a multivariate Hermite polynomial of degree k; computing the sum of increments for individual sample devices in said training set to obtain a virtual age therefor, said virtual age being normalized substantially to a convenient normalized virtual age; and determining coefficients of said multivariate Hermite polynomial in a supervised training phase of said sample devices in said training set for said normalized virtual age; and deriving incremental wear data for a further device, similar to said sample devices, by utilizing device data for said further device in conjunction with said coefficients of said multivariate Hermite polynomial determined in the preceding step.
- 5. A method for providing a virtual age estimation for devices as recited in claim 4, including a step of cumulating said incremental wear data to derive a virtual age for said further device.
- 6. A method for providing a virtual age estimation for devices as recited in claim 4, wherein said step of determining coefficients of said multivariate Hermite polynomial comprises a step of optimizing said determining by utilizing Ridge regression.
- 7. A method for providing a virtual age estimation for devices as recited in claim 6, wherein said step utilizing Ridge regression includes a step of optimizing by cross validation between devices in a subset of said training set and the remainder of devices in said training set.
- 8. A method for providing a virtual age estimation for devices as recited in claim 4, wherein said step of determining coefficients of said multivariate Hermite polynomial includes a step of optimizing said coefficients for reducing deviations of said virtual ages from said normalized virtual age.
- 9. A method for providing a virtual age estimation for devices as recited in claim 6, wherein said step of optimizing said coefficients includes a step of minimizing the sum of least squares of said deviations.
- 10. A method for providing a virtual age estimation for devices by predicting the remaining lifetime of a given device by computing wear increments, comprising the steps of:
modeling wear increments by a Hermite polynomial based on selected wear parameters which contribute wear increments for said devices; adjusting coefficients of said polynomial in accordance with data derived in a training set of such devices for deriving an equation for increments of virtual age for each device in said training set, said virtual ages being normalized substantially to a desired standard value; and applying said equation to said selected wear parameters of a further device similar to devices in said training set for computing wear increments for said further device.
- 11. A method for providing a virtual age estimation for devices as recited in claim 10, including a step of cumulating said wear increments for said further device for computing a virtual age for said further device.
- 12. A method for providing a virtual age estimation for devices as recited in claim 10, wherein said step of determining coefficients of said multivariate Hermite polynomial comprises a step of optimizing said determining by utilizing Ridge regression.
- 13. A method for providing a virtual age estimation for devices as recited in claim 12, wherein said step utilizing Ridge regression includes a step of optimizing by cross validation between devices in a subset of said training set and the remainder of devices in said training set.
- 14. A method for providing a virtual age estimation for devices as recited in claim 10, wherein said step of determining coefficients of said multivariate Hermite polynomial includes a step of optimizing said coefficients for reducing deviations of said virtual ages from said normalized virtual age.
- 15. A method for providing a virtual age estimation for devices as recited in claim 14, wherein said step of optimizing said coefficients includes a step of minimizing the sum of least squares of said deviations.
- 16. Apparatus for providing a virtual age estimation for predicting the remaining lifetime of a device of a given type, comprising:
means for monitoring a predetermined number of significant parameters of respective ones of a training set of devices of said given type, said parameters contributing respective wear increments; means for determining coefficients of a multivariate Hermite polynomial for modeling said wear increments determined from said training set operated to failure and whereof the respective virtual ages are normalized substantially to a desired norm value; means for deriving from said multivariate Hermite polynomial a formula for virtual age of a device of said given type; and means for applying said formula to said significant parameters from a further device of the said given type for deriving wear increments for said further device.
Parent Case Info
[0001] Reference is hereby made to copending:
[0002] U.S. Provisional Patent Application No. 60/255,615 filed Dec. 14, 2000 for NEURAL NETWORK-BASED VIRTUAL AGE ESTIMIATION FOR REMAINING LIFETIME, in the names of Christian Darken and Markus Loecher, Attorney Docket No. 00P9072US;
[0003] U.S. Provisional Patent Application No. 60/255,614 filed Dec. 14, 2000 for POLYNOMIAL BASED VIRTUAL AGE ESTIIMATION FOR REMAINING LIFETIME PREDICTION, in the names of Markus Loecher and Christian Darken, Attorney Docket No. 00P9073US; and
[0004] U.S. Provisional Patent Application No. 60/255,613 filed Dec. 14, 2000 for MARKOV TRANSITION PROBABILITIES FOR PREDICTIVE MAINTENANCE, in the name of Markus Loecher, Attorney Docket No. 00P9074US, of which priority is claimed and whereof the disclosures are hereby incorporated herin by reference.
[0005] Reference is also made to copending patent applications being filed on even date herewith:
[0006] METHOD AND APPARATUS FOR PROVIDING A VIRTUAL AGE ESTIMATION
[0007] FOR REMAINING LIFETIME PREDICTION OF A SYSTEM USING NEURAL NETWORKS, in the names of Christian Darken and Markus Loecher, Attorney Docket No. 00P9072US01; and METHOD AND APPARATUS FOR PROVIDING PREDICTIVE MAINTENANCE OF A DEVICE BY USING MARKOV TRANSITION PROBABILITIES, in the name of Markus Loecher, Attorney Docket No. 00P9074US01, and whereof the disclosures are hereby incorporated herein by reference.
Provisional Applications (3)
|
Number |
Date |
Country |
|
60255615 |
Dec 2000 |
US |
|
60255614 |
Dec 2000 |
US |
|
60255613 |
Dec 2000 |
US |