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Combination Method of Support Vector Machine and Fisher Discriminant Analysis for Chemical Process Fault Diagnosis

机译:支持向量机与Fisher判别分析相结合的化学过程故障诊断方法

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For chemical process, a new fault diagnosis method based on multi-phases is presented to overcome its difficulty in nonlinear and non-uniform sample data. Support vector machine is first used for phase identification, and for each phase, fisher discriminant analysis is developed to analyze and recognize fault patterns. Variable weighted discriminant matrix and similarity measurement based on manifold distance are proposed to enhance the incremental clustering capability of FDA. The proposed method is applied to citric acid fermentation process, and the comparison results indicate that the proposed algorithm has better capability to classify fault samples as well as high diagnosis precision.
机译:针对化学过程,提出了一种基于多相故障诊断的新方法,以克服其在非线性和非均匀样本数据中的困难。首先将支持向量机用于阶段识别,并且针对每个阶段,开发Fisher判别分析以分析和识别故障模式。提出了基于流形距离的可变加权判别矩阵和相似度度量方法,以提高FDA的增量聚类能力。将该方法应用于柠檬酸发酵过程,比较结果表明,该算法具有更好的分类故障样本的能力和较高的诊断精度。

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