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Fault Diagnosis Method of Polymerization Kettle Equipment Based on Rough Sets and BP Neural Network

机译:基于粗糙集和BP神经网络的聚合釜设备故障诊断方法

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Polyvinyl chloride (PVC) polymerizing production process is a typical complex controlled object, with complexity features, such as nonlinear, multivariable, strong coupling, and large time-delay. Aiming at the real-time fault diagnosis and optimized monitoring requirements of the large-scale key polymerization equipment of PVC production process, a real-time fault diagnosis strategy is proposed based on rough sets theory with the improved discernibility matrix and BP neural networks. The improved discernibility matrix is adopted to reduct the attributes of rough sets in order to decrease the input dimensionality of fault characteristics effectively. Levenberg-Marquardt BP neural network is trained to diagnose the polymerize faults according to the reducted decision table, which realizes the nonlinear mapping from fault symptom set to polymerize fault set. Simulation experiments are carried out combining with the industry history datum to show the effectiveness of the proposed rough set neural networks fault diagnosis method. The proposed strategy greatly increased the accuracy rate and efficiency of the polymerization fault diagnosis system.
机译:聚氯乙烯(PVC)聚合生产过程是典型的复杂受控对象,具有非线性,多变量,强耦合和大时延等复杂特征。针对PVC生产过程中大型关键聚合设备的实时故障诊断和优化的监控要求,提出了一种基于粗糙集理论的改进的识别矩阵和BP神经网络的实时故障诊断策略。采用改进的可分辨矩阵来简化粗糙集的属性,以有效降低故障特征的输入维数。训练了Levenberg-Marquardt BP神经网络,根据简化后的决策表诊断聚合故障,实现了从故障征兆集到聚合故障集的非线性映射。结合行业历史数据进行了仿真实验,证明了所提出的粗糙集神经网络故障诊断方法的有效性。所提出的策略大大提高了聚合故障诊断系统的准确率和效率。

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