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A distributed expectation maximization-principal component analysis monitoring scheme for the large-scale industrial process with incomplete information

机译:信息不完全的大型工业过程的分布式期望最大化主成分分析监控方案

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Large-scale process monitoring has become a challenging issue due to the integration of sub-systems or subprocesses, leading to numerous variables with complex relationship and potential missing information in modern industrial processes. To avoid this, a distributed expectation maximization-principal component analysis scheme is proposed in this paper, where the process variables are first divided into several sub-blocks using two-layer process decomposition method, based on knowledge and generalized Dice’s coefficient. Then, the missing information of variables is estimated by expectation maximization algorithm in the principal component analysis framework, then the expectation maximization-principal component analysis method is applied for fault detection to each sub-block. Finally, the process monitoring and fault detection results are fused by Bayesian inference technique. Case studies on the Tennessee Eastman process is applied to show the effectiveness and performance of our proposed approach.
机译:由于子系统或子过程的集成,大规模过程监控已成为一个具有挑战性的问题,导致现代工业过程中具有复杂关系的众多变量和潜在的信息丢失。为了避免这种情况,本文提出了一种分布式期望最大化主成分分析方案,该方法首先基于知识和广义Dice系数,使用两层过程分解方法将过程变量划分为几个子块。然后,在主成分分析框架中通过期望最大化算法估计变量的缺失信息,然后将期望最大化-主要成分分析方法应用于每个子块的故障检测。最后,通过贝叶斯推理技术融合了过程监控和故障检测结果。通过对田纳西州伊士曼过程的案例研究,可以证明我们提出的方法的有效性和性能。

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