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A BAYESIAN APPROACH TO FAULT ISOLATION - STRUCTURE ESTIMATION AND INFERENCE

机译:故障隔离的贝叶斯方法-结构估计和推论。

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摘要

This paper considers a Bayesian inference method for fault isolation. Given a set of residuals, and a set of possible faults, the task is to calculate the probability distribution of the faults. The method requires the conditional probability distribution of how the residuals respond given the possible faults. Especially important is to know the structure of this conditional probability distribution since it facilitates the use of efficient Baysian network techniques for the inference. The conditional probability distribution, and in particular its structure, is estimated from training data using a Bayesian approach. The approach is evaluated on a simple but illustrative example, where it is shown that the estimated structure and the distributions capture the dependencies that are important to make the correct isolation decisions.
机译:本文考虑了一种贝叶斯推理方法来进行故障隔离。给定一组残差和一组可能的故障,任务是计算故障的概率分布。该方法需要条件概率分布,该条件概率分布是残差在可能出现的故障下如何响应。知道此条件概率分布的结构尤为重要,因为它有助于将有效的贝叶斯网络技术用于推理。使用贝叶斯方法根据训练数据估计条件概率分布,尤其是其结构。在一个简单但说明性的示例上对该方法进行了评估,其中显示了估计的结构和分布捕获了对于做出正确的隔离决策很重要的依存关系。

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