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A Multi-SOM with Canonical Variate Analysis for Chemical Process Monitoring and Fault Diagnosis

机译:具有规范变量分析的Multi-SOM用于化学过程监控和故障诊断

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References(46) Cited-By(2) When the fault detection or fault diagnosis problem is considered as a binary or multiple class classification problem, there are some challenges, i.e., highly dimensional input variables, high correlation among some input variables, overlap among the input variable spaces of different fault classes and invisible distribution of fault classes. To tackle the above problems, a novel chemical process monitoring and fault diagnosis approach, which integrates canonical variate analysis (CVA) with multiple self-organizing map (multi SOM), is proposed. CVA is employed to extract fault classification feature information as much as possible, to reduce dimension and to eliminate correlation via CVA features. Based on CVA features, multi SOM, whose structure is similar as a tree structure, is employed to distinguish all fault classes clearly. The output plane of the root SOM is obtained based on the CVA features of all fault classes. According to the root plane, each mixing region is distinguished and the output plane of one second layer SOM is further employed to partition fault classes within the mixing region. In this way, each mixing region in father plane is further partitioned by one his son plane until there is no mixing region on the output planes of all leaf SOMs. A case study on the Tennessee Eastman process benchmark shows the effectiveness and feasibility of the proposed fault diagnosis and process monitoring approach.
机译:参考文献(46)Cited-By(2)当故障检测或故障诊断问题被认为是二元或多类分类问题时,存在一些挑战,即高维输入变量,某些输入变量之间的高相关性,各输入变量之间的重叠不同故障类别的输入变量空间和故障类别的不可见分布。为了解决上述问题,提出了一种新的化学过程监测和故障诊断方法,该方法将规范变量分析(CVA)与多个自组织映射(multi SOM)集成在一起。 CVA用于尽可能多地提取故障分类特征信息,以减小维数并消除通过CVA特征的相关性。基于CVA特征,采用结构类似于树状结构的multi SOM来区分所有故障类别。根据所有故障类别的CVA特征获得根SOM的输出平面。根据根平面,区分每个混合区域,并进一步采用一个第二层SOM的输出平面在混合区域内划分故障类别。这样,父平面中的每个混合区域都被其子平面进一步分隔,直到在所有叶子SOM的输出平面上没有混合区域为止。对田纳西州伊士曼过程基准的案例研究表明,所提出的故障诊断和过程监视方法的有效性和可行性。

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