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Fault detection in dynamic plant-wide process by multi-block slow feature analysis and support vector data description

机译:通过多块慢速特征分析和支持向量数据描述在动态植物范围内的故障检测

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摘要

This study describes a dynamic large-scale process fault detection algorithm based on multi-block slow feature analysis by taking advantages of both multi-block algorithms in highlighting the local information and slow feature analysis in extracting the different dynamics of process data. A mutual information-based relevance matrix is first calculated to measure the correlation between any two variables, and then K-means clustering is used to cluster the original variables into several blocks by gathering the variables with similar relevance vectors into the same block. Slow feature analysis is applied in each block. A support vector data description is utilized to give a final decision. The proposed algorithm is tested with a well-known Tennessee Eastman (TE) process. The fault detection results show the efficiency and the superiority of the proposed method as compared to other related methods. (C) 2018 ISA. Published by Elsevier Ltd. All rights reserved.
机译:本研究通过采用多块算法的优势来突出显示本地信息和提取过程数据的不同动态,基于多块算法的优点来描述基于多块慢特征分析的动态大规模过程故障检测算法。 首先计算基于信息的相关性矩阵以测量任意两个变量之间的相关性,然后通过将具有相似相关性向量的变量收集到同一块中,使用K-Means群集将原始变量群集成几个块。 每个块应用慢的特征分析。 支持向量数据描述用于提供最终决定。 该算法与众所周知的田纳西州伊斯曼(TE)进程进行了测试。 与其他相关方法相比,故障检测结果显示了所提出的方法的效率和优越性。 (c)2018 ISA。 elsevier有限公司出版。保留所有权利。

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