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首页> 外文期刊>The Canadian Journal of Chemical Engineering >Fault diagnosis in industrial chemical processes using optimal probabilistic neural network
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Fault diagnosis in industrial chemical processes using optimal probabilistic neural network

机译:使用最优概率神经网络工业化学过程的故障诊断

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摘要

For fault detection and diagnosis in large-scale industrial systems, traditional methods have a low classification accuracy, which is an issue. This paper proposes a fault diagnosis method based on the modified cuckoo search algorithm (MCS) to optimize the probabilistic neural network (PNN). The random forest treebagger (RFtb) is used to reduce the data feature and the PNN is trained for fault diagnosis and classification. However, in order to address the problem that the parameters of PNN easily fall into the local optimal value, the MCS algorithm is introduced to globally optimize the hidden layer element smoothing factor (sigma) in the PNN. The MCS algorithm uses a parameters update and a better optimization mechanism to achieve excellent global convergence and to effectively improve the fault diagnosis capability of the model. During the testing process using the Tennessee Eastman (TE) process dataset, the performance of the proposed model is assessed by comparing the accuracy and the F-1-score of different methods. Graphs are presented that depict fault classification and diagnostic results for the different models. The results show that the MCS algorithm has a better optimization ability than the traditional optimization algorithm and the proposed combination method can significantly improve the accuracy of the TE process fault diagnosis.
机译:对于大型工业系统中的故障检测和诊断,传统方法具有低分类准确性,这是一个问题。本文提出了一种基于修改的Cuckoo搜索算法(MCS)的故障诊断方法,以优化概率神经网络(PNN)。随机森林TreeBagger(RFTB)用于减少数据特征,PNN培训用于故障诊断和分类。然而,为了解决PNN的参数容易地落入本地最佳值的问题,引入了MCS算法以全局优化PNN中的隐藏层元素平滑因子(Sigma)。 MCS算法使用参数更新和更好的优化机制来实现优异的全局融合,并有效地提高模型的故障诊断能力。在使用田纳西州的Eastman(TE)进程数据集的测试过程中,通过比较不同方法的准确性和F-1分数来评估所提出的模型的性能。提出了描绘不同模型的故障分类和诊断结果的图表。结果表明,MCS算法具有比传统优化算法更好的优化能力,所提出的组合方法可以显着提高TE过程故障诊断的准确性。

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