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A hybrid approach to faults detection and diagnosis in batch and semi-batch reactors by using EKF and neural network classifier

机译:基于EKF和神经网络分类器的间歇式和半间歇式反应堆故障检测与诊断的混合方法

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摘要

This work deals with a new hybrid approach for the detection and diagnosis of faults in different parts of fed-batch and batch reactors. In this paper, the fault detection method is based on the using of Extended Kalman Filter (EKF) and statistical test. The EKF is used to estimate on-line in added to the state of reactor the overall heat transfer coefficient (U). The diagnosis method is based on a probabilistic neural network classifier. The Inputs of the probabilistic classifier are the input-output measurements of reactor and the parameter U estimated by EKF, while the outputs of the classifier are fault types in reactor. This new approach is illustrated for simulated as well as experimental data sets using two cases of reactions: the first is the oxidation of sodium thiosulfate by hydrogen peroxide and the second is alkaline hydrolyse of ethyl benzoate in homogeneous hydro-alcoholic. Finally, the combination of the estimated parameter U using EKF and probabilistic neural network classifier provided the best results. These results show the performance of the proposed approach to monitoring the semi-batch and batch reactors.
机译:这项工作涉及一种新的混合方法,用于检测和诊断补料分批和间歇式反应器不同部分的故障。本文的故障检测方法是基于扩展卡尔曼滤波器(EKF)和统计检验的。 EKF用于在线估算总传热系数(U),并将其添加到反应堆状态中。该诊断方法基于概率神经网络分类器。概率分类器的输入是电抗器的输入-输出测量值,以及由EKF估计的参数U,而分类器的输出是电抗器中的故障类型。举例说明了该新方法在两种情况下的模拟和实验数据集:第一种是过氧化氢对硫代硫酸钠的氧化作用,第二种是均相含水醇中苯甲酸乙酯的碱水解。最后,使用EKF和概率神经网络分类器的估计参数U的组合提供了最佳结果。这些结果表明了所提出的监测半间歇和间歇反应器的方法的性能。

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