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An online outlier detection method based on wavelet technique and robust RBF network

机译:基于小波技术和鲁棒RBF网络的在线离群值检测方法

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摘要

We focus on the issue of outlier detection for time-series data in a process control system (PCS), since outlier detection is a critical step before performing data-based system analysis. Several published articles have proved that a wavelet transform (WT) technique can be used to detect outliers in time-series data, but the standard WT detection method, as well as any other univariate outlier detection technique, does not distinguish between the sudden change caused by the changes of inputs and the fluctuations caused by outliers in PCS. In order to improve this shortcoming of the conventional WT method for the data in a PCS, a new algorithm combining the wavelet technique with a robust radial basis function (RBF) network is proposed here. In this method, a robust RBF network (RBFN) training algorithm is proposed, which can train the RBFN online using the original data as a training set without the need of clean data and thus fits the application of online detection. Furthermore, a hidden Markov model is adopted as an analysis tool to accomplish online automatic detection without pre-selecting the threshold. We compare the performance of our proposed method with the conventional wavelet method and the AR model method to demonstrate its validity through simulation and experimental applications to the data pretreatment process in an electric arc furnace electrode regulator system.
机译:我们关注过程控制系统(PCS)中时间序列数据的异常值检测问题,因为异常值检测是执行基于数据的系统分析之前的关键步骤。几篇已发表的文章证明,小波变换(WT)技术可用于检测时间序列数据中的离群值,但是标准WT检测方法以及任何其他单变量离群值检测技术都无法区分造成的突然变化由于输入的变化以及PCS中异常值引起的波动。为了改善PCS中数据的传统WT方法的缺点,这里提出了一种将小波技术与鲁棒径向基函数(RBF)网络相结合的新算法。该方法提出了一种鲁棒的RBF网络训练算法,该算法可以将原始数据作为训练集进行在线训练,而无需使用干净的数据,因此适合在线检测的应用。此外,采用隐马尔可夫模型作为分析工具,无需预先选择阈值即可完成在线自动检测。我们比较了我们提出的方法与传统的小波方法和AR模型方法的性能,以通过仿真和实验应用证明其在电弧炉电极调节器系统中数据预处理过程中的有效性。

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