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Phase partition and identification based on kernel entropy component analysis and multi-class support vector machines-fireworks algorithm for multi-phase batch process fault diagnosis

机译:基于核熵分量分析和多级支持向量机 - 烟花算法的相分段与识别,用于多相批处理故障诊断

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摘要

For the characteristics of nonlinear and multi-phase in the batch process, a self-adaptive multi-phase batch process fault diagnosis method is proposed in this paper. Firstly, kernel entropy component analysis (KECA) method is used to achieve multi-phase partition adaptively, which makes the process data mapped into the high-dimensional feature space and then constructs the core entropy and the angular structure similarity. Then a multi-phase KECA failure monitoring model is developed by using the angular structure similarity as the statistic, which is based on the partitioned phases and the effective failure features by the KECA feature extraction method. A multi-phase batch process fault diagnosis method, which applies the multi-class support vector machines (MSVM) and fireworks algorithm (FWA), is proposed to recognize each sub-phase fault diagnosis automatically. The effectiveness and advantages of the proposed multi-phase fault diagnosis method are illustrated with a case study on a fed-batch penicillin fermentation process.
机译:对于批处理中非线性和多相的特性,本文提出了一种自适应多相批处理故障诊断方法。首先,使用内核熵分量分析(KECA)方法自适应地实现多相分区,这使得处理数据映射到高维特征空间中,然后构造核心熵和角结构相似度。然后通过使用作为统计数据的角度结构相似性开发了多相Keca故障监测模型,该统计学是基于分区阶段和KECA特征提取方法的有效故障特征。提出了一种应用多级支持向量机(MSVM)和Fireworks算法(FWA)的多相批处理故障诊断方法,以自动识别每个子相故障诊断。所提出的多相故障诊断方法的有效性和优点是对美联储青霉素发酵过程的案例研究。

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