Simultaneous Fault Detection and Identification in Continuous Processes via nonlinear Support Vector Machine based Feature Selection.

Melis Onel, Chris A Kieslich, Yannis A Guzman, Efstratios N Pistikopoulos
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引用次数: 14

Abstract

Rapid detection and identification of process faults in industrial applications is crucial to sustain a safe and profitable operation. Today, the advances in sensor technologies have facilitated large amounts of chemical process data collection in real time which subsequently broadened the use of data-driven process monitoring techniques via machine learning and multivariate statistical analysis. One of the well-known machine learning techniques is Support Vector Machines (SVM) which allows the use of high dimensional feature sets for learning problems such as classification and regression. In this paper, we present the application of a novel nonlinear (kernel-dependent) SVM-based feature selection algorithm to process monitoring and fault detection of continuous processes. The developed methodology is derived from sensitivity analysis of the dual SVM objective and utilizes existing and novel greedy algorithms to rank features that also guides fault diagnosis. Specifically, we train fault-specific two-class SVM models to detect faulty operations, while using the feature selection algorithm to improve the accuracy of the fault detection models and perform fault diagnosis. We present results for the Tennessee Eastman process as a case study and compare our approach to existing approaches for fault detection, diagnosis and identification.

基于非线性支持向量机特征选择的连续过程同步故障检测与识别。
在工业应用中,快速检测和识别过程故障对于维持安全和盈利的运行至关重要。如今,传感器技术的进步促进了大量化学过程数据的实时收集,随后通过机器学习和多元统计分析扩大了数据驱动过程监测技术的使用。其中一个著名的机器学习技术是支持向量机(SVM),它允许使用高维特征集来学习问题,如分类和回归。在本文中,我们提出了一种新的非线性(核相关)svm特征选择算法用于连续过程的过程监测和故障检测。所开发的方法源自对双支持向量机目标的敏感性分析,并利用现有的和新的贪婪算法对特征进行排序,从而指导故障诊断。具体而言,我们训练针对故障的两类SVM模型来检测故障操作,同时使用特征选择算法来提高故障检测模型的准确性并进行故障诊断。我们将田纳西伊士曼过程的结果作为案例研究,并将我们的方法与现有的故障检测、诊断和识别方法进行比较。
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