Using continuous-time Bayesian networks for standards-based diagnostics and prognostics

St. Louis, MO(2014)

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摘要
In this paper we present a proposal for a new prognostic model to be included in a future revision of the IEEE Std 1232-2010 Standard for Artificial Intelligence Exchange and Service Tie to All Test Environments (AI-ESTATE). Specifically, we introduce the continuous time Bayesian network (CTBN) as an alternative to the previously proposed dynamic Bayesian network to provide an additional model for prognostic reasoning. We specify a semantic model capable of representing a CTBN within the standard and discuss the advantages of using such a model for prognosis. As with previous work, we demonstrate the feasibility and necessity of incorporating prognostic capabilities into the standard.
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关键词
belief networks,ai-estate,ctbn,ieee std 1232-2010 standard,artificial intelligence exchange,continuous time bayesian networks,dynamic bayesian network,prognosis,prognostic model,prognostic reasoning,semantic model,standards-based diagnostics,markov processes,cognition,random variables,prognostics and health management,data models
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