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Set-membership identification and fault detection using a bayesian framework

机译:使用贝叶斯框架的集成员身份识别和故障检测

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This paper deals with the problem of set-membership identification and fault detection using a Bayesian framework. The paper presents how the set-membership model estimation problem can be reformulated from a Bayesian viewpoint in order to determine the feasible parameter set and, in a posterior fault detection stage, to check the consistency between data and the model. The paper shows that, assuming uniform distributed measurement noise and flat model prior probability distribution, the Bayesian approach leads to the same feasible parameter set than the set-membership strips technique and, additionally, can deal with models nonlinear in the parameters. The procedure and results are illustrated by means of the application to a quadruple tank process.
机译:本文讨论了使用贝叶斯框架进行集成员身份识别和故障检测的问题。本文提出了如何从贝叶斯观点重新设定集合成员模型估计问题,以便确定可行的参数集,并在后故障检测阶段检查数据和模型之间的一致性。本文表明,假设测量噪声均匀分布且模型先验概率分布均匀,则贝叶斯方法可得出与集合成员带技术相同的可行参数集,此外,还可以处理参数非线性的模型。该过程和结果通过应用于四罐工艺进行了说明。

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