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Swarm Intelligent Analysis of Independent Component and Its Application in Fault Detection and Diagnosis

机译:独立组分的智能分析及其在故障检测与诊断中的应用

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An industrial process often has a large number of measured variables, which are usually driven by fewer essential variables. An improved independent component analysis based on particle swarm optimization (PSO-ICA) is involved to extract these essential variables. Process faults can be detected more efficiently by monitoring the independent components. On the basis of this, the diagnosis of faults is reduced to a string matching problem according to the situation of alarm limit violations of independent components. The length of the longest common subsequence (LLCS) between two strings is used to evaluate the difficulty in distinguishing two faults. The proposed method is illustrated by the application to the Tennessee Eastman challenging process.
机译:工业过程通常具有大量测量变量,这些变量通常由较少的基本变量驱动。基于粒子群优化(PSO-ICA)的改进的独立分量分析涉及提取这些基本变量。通过监视独立组件,可以更有效地检测过程故障。在此基础上,根据警报限制违规的独立组件的情况,对故障的诊断减少到字符串匹配问题。两个字符串之间最长的常见子序列(LLC)的长度用于评估区分两个故障的难度。该方法由田纳西州伊斯曼具有挑战性的过程说明。

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