IPC분류정보
국가/구분 |
United States(US) Patent
등록
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국제특허분류(IPC7판) |
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출원번호 |
UP-0678273
(2007-02-23)
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등록번호 |
US-7548830
(2009-07-01)
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발명자
/ 주소 |
- Goebel, Kai Frank
- Bonissone, Piero Patrone
- Yan, Weizhong
- Eklund, Neil Holger White
- Xue, Feng
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출원인 / 주소 |
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대리인 / 주소 |
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인용정보 |
피인용 횟수 :
22 인용 특허 :
2 |
초록
▼
A method to reduce uncertainty bounds of predicting a remaining life of a probe using a set of diverse models is disclosed. The method includes generating an estimated remaining life output by each model of the set of diverse models, aggregating each of the respective estimated remaining life output
A method to reduce uncertainty bounds of predicting a remaining life of a probe using a set of diverse models is disclosed. The method includes generating an estimated remaining life output by each model of the set of diverse models, aggregating each of the respective estimated remaining life outputs via a fusion model, and in response to the aggregating, predicting the remaining life, the predicting having reduced uncertainty bounds based on the aggregating. The method further includes generating a signal corresponding to the predicted remaining life of the probe.
대표청구항
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What is claimed is: 1. A method to reduce uncertainty bounds of predicting a remaining life of a probe using a plurality of diverse models for predicting the remaining life of the probe, the method comprising: generating a plurality of estimated remaining life outputs, wherein each of the estimated
What is claimed is: 1. A method to reduce uncertainty bounds of predicting a remaining life of a probe using a plurality of diverse models for predicting the remaining life of the probe, the method comprising: generating a plurality of estimated remaining life outputs, wherein each of the estimated remaining life outputs is generated using a respective one of the diverse models; aggregating the estimated remaining life outputs via a fusion model; in response to the aggregating, predicting the remaining life of the probe, the predicted remaining life having reduced uncertainty bounds based on the aggregating; generating a signal corresponding to the predicted remaining life of the probe; and defining at least one of a parameter and a structure of the fusion model, wherein the defining step comprises: defining the parameter of the fusion model, the parameter comprising a weight corresponding to each of the diverse models, wherein the step of defining the parameter comprises: making available input conditions describing more than one region of a feature space; and defining a local weight corresponding to each of the more than one regions of the feature space. 2. The method of claim 1, wherein the generating an estimated remaining life output comprises: making available, to each of the diverse models, data relating to a behavior of the probe so that each model generates the respective one of the estimated remaining life outputs. 3. The method of claim 1, wherein the aggregating comprises: making available to the fusion model data relating to a behavior of the probe; and making available to the fusion model state information corresponding to each of the diverse models. 4. The method of claim 1, wherein the predicting comprises: predicting the remaining life of a turbine engine. 5. The method of claim 1, further comprising: training each of the diverse models using bootstrap data validation. 6. The method of claim 1, wherein the defining further comprises: pre-computing at least one of the parameter and the structure of the fusion model prior to the generating the estimated remaining life output. 7. The method of claim 1, further comprising tuning and maintaining at least one of the parameter and the structure via an optimization wrapper. 8. The method of claim 1, further comprising: describing a region of the more than one regions via at least one of a decision tree, a grid, and a fuzzy partition. 9. The method of claim 1, wherein the defining the structure of the fusion model comprises: defining at least one of an intersection fusion operator, a compensatory fusion operator, and a union fusion operator. 10. The method of claim 1, wherein the defining the structure of the fusion model comprises: defining a temporal operator comprising at least one of a forgetting factor and a moving window. 11. A program storage device readable by a computer, the device embodying a program or instructions executable by the computer to perform the method of claim 1. 12. A method to reduce uncertainty bounds of predicting a remaining life of a probe using a plurality of diverse models for predicting the remaining life of the probe, the method comprising: generating a plurality of estimated remaining life outputs, wherein each of the estimated remaining life outputs is generated using a respective one of the diverse models; aggregating the estimated remaining life outputs via a fusion model; in response to the aggregating, predicting the remaining life of the probe, the predicted remaining life having reduced uncertainty bounds based on the aggregating; generating a signal corresponding to the predicted remaining life of the probe; defining at least one of a parameter and a structure of the fusion model; and tuning and maintaining at least one of the parameter and the structure via an optimization wrapper, wherein the tuning and maintaining comprises: receiving historical data regarding at least one of the parameter and the structure; encoding at least one of the parameter and the structure for an evolutionary algorithm; creating a performance metric for the estimating; tuning at least one of the parameter and the structure using the optimization wrapper to optimize the performance metric; and storing the tuned at least one of the parameter and the structure for subsequent receiving. 13. A system to estimate a remaining life of a probe using a plurality of diverse models, the system comprising: a processor; a computational model application for executing on the processor, the computational model application performing a method, comprising: generating a plurality of estimated remaining life outputs, wherein each of the estimated remaining life outputs is generated using a respective one of the diverse models; aggregating the respective estimated remaining life outputs via a fusion model; in response to the aggregating, predicting the remaining life of the probe, the predicted remaining life having reduced uncertainty bounds based on the aggregating; and defining at least one of a parameter and a structure of the fusion model, wherein the defining by the computational model application comprises defining the parameter of the fusion model, the parameter comprising a weight corresponding to each respective one of the diverse models, and wherein the defining the parameter by the computational model application comprises: making available input conditions describing more than one region of a feature space; and defining a local weight corresponding to each of the more than one regions of the feature space; wherein the processor is responsive to the computational model application to generate a signal corresponding to the predicted remaining life of the probe. 14. The system of claim 13, wherein the generating by the computational model application comprises: making available to each of the diverse models data relating to a behavior of the probe so that each model generates the respective one of the estimated remaining life outputs. 15. The system of claim 13, wherein the aggregating by the computational model application comprises: making available to the fusion model data relating to a behavior of the probe; and making available to the fusion model state information corresponding to each of the diverse models. 16. The system of claim 13, wherein: the probe is a turbine engine. 17. The system of claim 13, wherein the computational model application further performs: training each of the diverse models using bootstrap data validation. 18. The system of claim 13, wherein the defining further comprises: pre-computing at least one of the parameter and the structure of the fusion model prior to the generating the estimated remaining life output. 19. The system of claim 13, wherein the computational model application further performs: tuning and maintaining at least one of the parameter and the structure via an optimization wrapper. 20. The system of claim 13, wherein the computational model application further performs: describing a region of the more than one regions via at least one of a decision tree, a grid, and a fuzzy partition. 21. The system of claim 13, wherein the defining the structure of the fusion model by the computational model application further comprises: defining at least one of an intersection fusion operator, a compensatory fusion operator, and a union fusion operator. 22. The system of claim 13, wherein the defining the structure of the fusion model by the computational model application further comprises: defining a temporal operator comprising at least one of a forgetting factor and a moving window.
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