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SOM Neural Network Fault Diagnosis Method of Polymerization Kettle Equipment Optimized by Improved PSO Algorithm

机译:SOM神经网络故障诊断方法改进PSO算法优化的聚合水壶设备

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For meeting the real-time fault diagnosis and the optimization monitoring requirements of the polymerization kettle in the polyvinyl chloride resin (PVC) production process, a fault diagnosis strategy based on the self-organizing map (SOM) neural network is proposed. Firstly, a mapping between the polymerization process data and the fault pattern is established by analyzing the production technology of polymerization kettle equipment. The particle swarm optimization (PSO) algorithm with a new dynamical adjustment method of inertial weights is adopted to optimize the structural parameters of SOM neural network. The fault pattern classification of the polymerization kettle equipment is to realize the nonlinear mapping from symptom set to fault set according to the given symptom set. Finally, the simulation experiments of fault diagnosis are conducted by combining with the industrial on-site historical data of the polymerization kettle and the simulation results show that the proposed PSO-SOM fault diagnosis strategy is effective.
机译:为了满足实时故障诊断和聚氯乙烯树脂(PVC)生产过程中聚合水壶的优化监测要求,提出了基于自组织地图(SOM)神经网络的故障诊断策略。首先,通过分析聚合水壶设备的生产技术来建立聚合过程数据和故障模式之间的映射。采用具有新动力调整方法的粒子群优化(PSO)算法来优化SOM神经网络的结构参数。聚合釜设备的故障模式分类是根据给定症状集实现从症状到故障组的非线性映射。最后,通过与聚合水壶的工业现场历史数据相结合进行故障诊断的模拟实验,仿真结果表明,所提出的PSO-SOM故障诊断策略是有效的。

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