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Fault diagnosis of Tennessee Eastman process with multi-scale PCA and ANFIS

机译:田纳西伊士曼过程的多尺度PCA和ANFIS故障诊断

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Fault diagnosis in industrial processes are challenging tasks that demand effective and timely decision making procedures under the extreme conditions of noisy measurements, highly interrelated data, large number of inputs and complex interaction between the symptoms and faults. The purpose of this study is to develop an online fault diagnosis framework for a dynamical process incorporating multi-scale principal component analysis (MSPCA) for feature extraction and adaptive neuro-fuzzy inference system (ANFIS) for learning the fault-symptom correlation from the process historical data. The features extracted from raw measured data sets using MSPCA are partitioned into score space and residual space which are then fed into multiple ANFIS classifiers in order to diagnose different faults. This data-driven based method extracts fault-symptom correlation from the data eliminating the use of process model. The use of multiple ANFIS classifiers for fault diagnosis with each dedicated to one specific fault, reduces the computational load and provides an expandable framework to incorporate new fault identified in the process. Also, the use of MSPCA enables the detection of small changes occurring in the measured variables and the proficiency of the system is improved by monitoring the subspace which is most sensitive to the faults. The proposed MSPCA-ANFIS based framework is tested on the Tennessee Eastman (TE) process and results for the selected fault cases, particularly those which exhibit highly non-linear characteristics, show improvement over the conventional multivariate PCA as well as the conventional PCA-ANFIS based methods.
机译:工业过程中的故障诊断是一项艰巨的任务,需要在嘈杂的测量,高度相关的数据,大量的输入以及症状和故障之间复杂的交互作用的极端条件下,制定有效,及时的决策程序。这项研究的目的是为动态过程开发在线故障诊断框架,该框架结合了用于特征提取的多尺度主成分分析(MSPCA)和用于从过程中学习故障症状相关性的自适应神经模糊推理系统(ANFIS)。历史数据。使用MSPCA从原始测量数据集中提取的特征被划分为分数空间和残差空间,然后将其馈送到多个ANFIS分类器中以诊断不同的故障。这种基于数据驱动的方法从数据中提取故障症状相关性,从而无需使用过程模型。使用多个ANFIS分类器进行故障诊断,每个分类器专用于一个特定的故障,从而减少了计算量,并提供了可扩展的框架来合并过程中识别出的新故障。同样,使用MSPCA可以检测到测量变量中发生的细微变化,并且通过监视对故障最敏感的子空间可以提高系统的熟练度。建议的基于MSPCA-ANFIS的框架在田纳西州伊士曼(TE)流程上进行了测试,选定故障案例的结果,尤其是表现出高度非线性特征的故障案例,显示出优于常规多元PCA和常规PCA-ANFIS的改进基于方法。

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