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Chemical process fault diagnosis based on mixup-convolution neural network

机译:基于混合卷积神经网络的化工过程故障诊断

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Accidents in the chemical production process will have serious consequences, so the fault diagnosis system is extremely important. To increase the accuracy, it is a method to expand the size of the neural network, but the sensitivity of the test sample and the training sample is. In this paper, using the fault diagnosis method of mixup-convolution neural network (CNN) model can extract more abundant fault information from time-varying features. Mixup uses neighborhood data training model to have better generalization ability and can overcome large-scale network. The problem of remembering data. This experimental data uses TE process data for simulation experiments, and the final experimental results can verify the performance of the proposed method.
机译:化学品生产过程中的事故将产生严重后果,因此故障诊断系统非常重要。为了提高准确性,这是扩大神经网络规模的一种方法,但是测试样本和训练样本的敏感性却很高。本文采用混合卷积神经网络(CNN)模型的故障诊断方法,可以从时变特征中提取更多的故障信息。 Mixup使用邻域数据训练模型具有更好的泛化能力,可以克服大规模网络。记忆数据的问题。该实验数据使用TE过程数据进行模拟实验,最终的实验结果可以验证该方法的性能。

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