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Efficient Fault Isolation Method to Monitor Industrial Batch Processes

机译:有效的故障隔离方法监控工业批处理过程

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Industrial batch processes are very popular manufacturing system with large number of process variables involved. Monitoring of batch processes using statistical process monitoring becomes very difficult in view of the complex correlations between the process variables. This paper focuses on a fault isolation based process monitoring method without prior information of fault where fault isolation problem is converted into a variable selection. Variable selection is a learning algorithm used here to solve the problem of selection and isolation of variables from a model. The method discussed here uses a sparse coefficient based dissimilarity analysis algorithm known as Sparse Dissimilarity Algorithm(SDISSIM) which checks a calculated D-index for identifying fault in the process. A sparse coefficient is tabulated to verify the process variables contributing to the fault and an absolute variance difference is calculated to select the variables for fault isolation. Finally SDISSIM method is explained by successful implementation in MATLAB with real time industrial process data.
机译:工业批处理过程是具有大量过程变量的非常流行的制造系统。考虑到过程变量与过程变量之间的复杂相关性,使用统计过程监控的批处理过程监视变得非常困难。本文重点介绍基于故障隔离的过程监控方法,而无需现有故障的故障信息,其中故障隔离问题被转换为变量选择。可变选择是用于解决模型的选择和隔离问题的学习算法。这里讨论的方法使用了一种被称为稀疏异化算法(Sdissim)的稀疏系数基于的相互作用分析算法(SDISSIM),其检查计算的D-inde索引以识别该过程中的故障。制表稀疏系数以验证有助于故障的过程变量,并计算绝对方差差以选择故障隔离的变量。最后,通过使用实时工业过程数据的MATLAB成功实现来解释SDISSIM方法。

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