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首页> 外文期刊>IEEE Transactions on Control Systems Technology >Robust Monitoring and Fault Isolation of Nonlinear Industrial Processes Using Denoising Autoencoder and Elastic Net
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Robust Monitoring and Fault Isolation of Nonlinear Industrial Processes Using Denoising Autoencoder and Elastic Net

机译:非线性工业过程的鲁棒监控和故障隔离使用去噪和弹性网

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摘要

Robust process monitoring and reliable fault isolation in industrial processes usually encounter different challenges, including process nonlinearity and noise interference. In this brief, a novel method denoising autoencoder and elastic net (DAE-EN) is proposed to solve the aforementioned issues by effectively integrating DAE and EN. The DAE is first trained to robustly capture the nonlinear structure of the industrial data. Then, the encoder network is updated into a sparse model using EN, so that the key variables associated with each neuron can be selected. After that two statistics are developed based on the extracted systematic structure and the retained residual information. In addition, another statistic is also constructed by combining the aforementioned two statistics to provide an overall measurement for the process sample. In this way, a robust monitoring model can be constructed to monitor the abnormal status in industrial processes. After the fault is detected, the faulty neurons are identified by the sparse exponential discriminant analysis, so that the associated faulty variables along each faulty neuron can thus be isolated. Two real industrial processes are used to validate the performance of the proposed method. Experimental results show that the proposed method can effectively detect the abnormal samples in industrial processes and accurately isolate the faulty variables from the normal ones.
机译:工业过程中强大的过程监控和可靠的故障隔离通常遇到不同的挑战,包括过程非线性和噪声干扰。在此简介中,提出了一种新的方法,通过有效地整合DAE和EN来解决上述问题来解决上述问题。 DAE首次培训以强大地捕获工业数据的非线性结构。然后,使用EN将编码器网络更新为稀疏模型,从而可以选择与每个神经元相关联的密钥变量。之后,基于提取的系统结构和保留的残余信息开发了两个统计数据。另外,还通过将上述两个统计数据组合来构建另一个统计,以提供过程样本的总体测量。以这种方式,可以构建强大的监控模型来监测工业过程中的异常状态。在检测到故障后,通过稀疏指数判别分析识别出故障的神经元,从而可以隔离沿着每个故障神经元的相关故障变量。两个实际工业过程用于验证所提出的方法的性能。实验结果表明,该方法可以有效地检测工业过程中的异常样本,并准确地将来自普通变量的故障变量分离。

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