A Particle Filtering-based Framework for On-line Fault Diagnosis and Failure Prognosis
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Section 1 (background/literature survey) of this proposal was prepared without input from my research advisor or any other person. While technical writing guides may have been referred to, I did not solicit or receive assistance from any other person while preparing this portion of this document.
منابع مشابه
A Particle Filtering Framework for Failure Prognosis
Bayesian estimation techniques are finding application domains in machinery fault diagnosis and prognosis of the remaining useful life of a failing component/subsystem. This paper introduces a methodology for accurate and precise prediction of a failing component based on particle filtering and learning strategies. This novel approach employs a state dynamic model and a measurement model to pre...
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تاریخ انتشار 2007