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A robust pattern recognition-based fault detection and diagnosis (FDD) method for chillers

机译:基于稳健模式识别的冷水机故障检测与诊断(FDD)方法

摘要

A new chiller fault detection and diagnosis (FDD) method is proposed in this article. Different from conventional chiller FDD methods, this article considers the FDD problem as a typical one-class classification problem. The fault-free data are classified as the fault-free class. Data of a fault type are regarded as a fault class. The task of fault detection is to detect whether the process data are outliers of the fault-free class. The task of fault diagnosis is to find to which fault class does the process data belong. In this study, support vector data description (SVDD) algorithm is introduced for the one-class classification. The basic idea of the SVDD-based method is to find a minimum-volume hypersphere in a high dimensional feature space to enclose most of the data of an individual class. The proposed method is validated using the ASHRAE RP-1043 (Comstock and Braun 1999) experimental data. It shows more powerful FDD capacity than multi-class SVM-based FDD methods and PCA-based fault detection methods. Four potential applications of the proposed method are also discussed.
机译:本文提出了一种新的冷水机组故障检测与诊断方法。与常规冷水机FDD方法不同,本文将FDD问题视为典型的一类分类问题。无故障数据被分类为无故障类别。故障类型的数据被视为故障类别。故障检测的任务是检测过程数据是否为无故障类别的异常值。故障诊断的任务是找到过程数据所属的故障类别。在这项研究中,为一类分类引入了支持向量数据描述(SVDD)算法。基于SVDD的方法的基本思想是在高维特征空间中找到最小体积的超球面,以封装单个类的大多数数据。使用ASHRAE RP-1043(Comstock和Braun 1999)的实验数据验证了该方法的有效性。与基于多类SVM的FDD方法和基于PCA的故障检测方法相比,它显示了更强大的FDD容量。还讨论了该方法的四个潜在应用。

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