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A method of process monitoring based on blind source separation with denoising information by wavelet transform and its application to chemical process

机译:基于小波变换去噪信息的盲源分离过程监控方法及其在化学过程中的应用

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In this paper, a new process monitoring method based upon wavelet transform and blind source separation is presented. Wavelet transform is employed to de-noise measured signals to remove the process noise, and blind source separation based on information maximization is used to extract blind source signals. Later, control limits and monitoring plots are built by estimating the probability distribution of every blind signal by means of Parzen density estimator. For investigating the feasibility of this method, its fault-detection performance is evaluated and compared with other process monitoring method based on blind source analysis with direct process information to a simple AR(1) process and a continuous stirred-tank-reactor process. The results show the superiority of the method presented in this paper over other process monitoring method, which has high faulty warnings and missing warnings.
机译:提出了一种基于小波变换和盲源分离的过程监控新方法。利用小波变换对测量信号进行去噪以消除过程噪声,基于信息最大化的盲源分离被用于提取盲源信号。后来,通过使用Parzen密度估计器估计每个盲信号的概率分布来建立控制极限和监视图。为了研究此方法的可行性,对它的故障检测性能进行了评估,并将其与其他基于直接信息的盲源分析的过程监控方法进行了比较,该过程信息可直接应用于简单的AR(1)过程和连续搅拌釜反应器过程。结果表明,本文提出的方法优于其他过程监控方法,该方法具有较高的警告错误率和警告缺失率。

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