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Process Fault Diagnosis Using Support Vector Machines with a Genetic Algorithm based Parameter Tuning

机译:基于遗传算法的参数优化支持向量机的过程故障诊断

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Fault diagnosis, centered on pattern recognition techniques employing online measurements of process data, has been studied during the past decades. Amongst those techniques, artificial neural networks classifiers received an enormous attention due to some of their remarkable features. Recently, a new machine learning method based on statistical learning theory known as the Support Vector Machine (SVM) classifier is offered in the pattern recognition field. Support vector machine classifiers were originally used to solve binary classification problems. Subsequently, methods were proposed to apply support vector machine classifier to multiclass problems. Two of these mostly used methods are known as one versus one and one versus all. This paper deals with the application of the above mentioned classifiers for fault diagnosis of a chemical process containing a continuous stirred tank reactor and a heat exchanger. The results show a superior classification performance of the support vector machine versus the selected artificial neural network. In addition, the support vector machine classifier is very sensitive to the proper selection of the training parameters. It is shown that the utilization of genetic algorithm for optimal selection of these parameters is feasible and can help to improve the support vector machine classifier performance.
机译:在过去的几十年中,一直在研究以模式识别技术为中心的故障诊断,该技术采用在线测量过程数据。在这些技术中,人工神经网络分类器由于其非凡的功能而受到了极大的关注。最近,在模式识别领域提供了一种基于统计学习理论的新的机器学习方法,称为支持向量机(SVM)分类器。支持向量机分类器最初用于解决二进制分类问题。随后,提出了将支持向量机分类器应用于多类问题的方法。这些最常用的方法中的两种被称为“一对一”和“一对一”。本文涉及上述分类器在化学过程故障诊断中的应用,该过程包含连续搅拌釜反应器和热交换器。结果表明,与选择的人工神经网络相比,支持向量机具有更好的分类性能。另外,支持向量机分类器对训练参数的正确选择非常敏感。结果表明,利用遗传算法对这些参数进行最优选择是可行的,可以帮助提高支持向量机分类器的性能。

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