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Data-Based Fault Diagnosis Model Using a Bayesian Causal Analysis Framework

机译:基于数据的故障诊断模型使用贝叶斯因果分析框架

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This paper provides a comprehensive data-driven diagnosis approach applicable to complex manufacturing industries. The proposed approach is based on the Bayesian network paradigm. Both the implementation of the Bayesian model (the structure and parameters of the network) and the use of the resulting model for diagnosis are presented. The construction of the structure taking into account the issue related to the explosion in the number of variables and the determination of the network's parameters are addressed. A diagnosis procedure using the developed Bayesian framework is proposed. In order to provide the structured data required for the construction and the usage of the diagnosis model, a unitary traceability data model is proposed and its use for forward and backward traceability is explained. Finally, an industrial benchmark the Tennessee Eastman process is utilized to show the ability of the developed framework to make an accurate diagnosis.
机译:本文提供了适用于复杂制造行业的全面数据驱动诊断方法。 所提出的方法是基于贝叶斯网络范式。 展示了贝叶斯模型的实现(网络的结构和参数)和使用所得诊断的所得模型。 考虑到与变量数量的爆炸有关的问题的结构以及网络参数的确定。 提出了使用开发的贝叶斯框架的诊断程序。 为了提供构造所需的结构化数据和诊断模型的使用,提出了一种单一可追溯性数据模型,并解释了其用于前向和向后可追溯性的用途。 最后,利用田纳西州伊斯坦德进程的工业基准显示发达框架进行准确诊断的能力。

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