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Sensor fault detection, localization and reconstruction applied at WWTP

机译:污水处理厂的传感器故障检测,定位和重建

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摘要

Principal Components Analysis (PCA) has been intensively studied and is widely applied in industrial process monitoring. The main purpose of using PCA is the dimensionality reduction by extraction of the feature space that still contain the most information in the original data set. Despite its success in this field, the most important obstacle faced is the sensitivity to noise, also the fact that the majority of collected data from industrial processes are normally contaminated by noise makes it unreliable in some cases. To overcome these limitations, several strategies have been used. One of these has been interested to combine the robustness theory with PCA method, such theory sonsists in robustifying the existing algorithms against noise or outliers. Fuzzy Robust Principal Components Analysis (FRPCA) is one of the result for such combination that acheive better result compared with the classical method. In this work the RFPCA method is used and compared with the classical one to monitoring a biological nitrogen removal process. The obtained results demonstrate the performances superiority of this method compared with the conventional one.
机译:主成分分析(PCA)已被深入研究,并广泛应用于工业过程监控中。使用PCA的主要目的是通过提取仍在原始数据集中包含最多信息的特征空间来降低维数。尽管在该领域取得了成功,但面临的最主要障碍是对噪声的敏感性,而且工业过程中收集的大多数数据通常都被噪声污染,这一事实在某些情况下使其不可靠。为了克服这些限制,已经使用了几种策略。其中之一感兴趣的是将鲁棒性理论与PCA方法相结合,这种理论在增强现有算法对噪声或离群值的鲁棒性。模糊稳健主成分分析(FRPCA)是这种组合的结果之一,与传统方法相比,其效果更好。在这项工作中,使用了RFPCA方法并将其与经典方法进行比较,以监测生物脱氮过程。所得结果证明了该方法与常规方法相比的性能优越性。

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