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Binary Classifier for Fault Detection Based on KDE and PCA

机译:基于KDE和PCA的故障检测二进制分类器

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Fault detection in process condition monitoring aims to declare anomalies strayed from the operation expectancy. With the number of variables increasing, the complexity of detection task grows quickly. The algorithm, Binary Classifier for Fault Detection (BaFFle), is devised to employ Principal Component Analysis (PCA) to reduce the number of variables and to detect the occurrences of fault over each distinct component using corresponding operation model. In this way, BaFFIe converts a multivariate detection task into several univariate problems. Since the observations of a steady-state system are supposed to subject to certain probability distribution, the normal operation model is represented by probability distribution. In the original BaFFIe algorithm, measured data is assumed Gaussian distribtued. In order to get rid of the strong assumption in BaFFIe, an improved BaFFIe is proposed in this paper to estimate the distribution model by Kernel Density Estimation (KDE). A main advance of KDE is attributed to the non-parametric way of estimating probability distribution, resulting in a data-driven estimator. Experiments using real data from a multiphase flow rig proved the validation of KDE-based BaFFIe. From the practice perspective, BaFFIe has the potential of being applied to operation systems with non-Gaussian distributions.
机译:过程条件监测中的故障检测旨在声明从运营期望中误入的异常。随着变量增加的数量,检测任务的复杂性快速增长。算法,用于故障检测(挡板)的二进制分类器,被设计为采用主成分分析(PCA)来减少变量的数量,并使用相应的操作模型检测每个不同组件的故障发生。通过这种方式,Baffie将多变量的检测任务转换为几个单变量问题。由于假设稳态系统的观察应该受到某些概率分布,因此正常操作模型由概率分布表示。在原始的Baffie算法中,假设高斯分布的测量数据。为了摆脱Baffie的强烈假设,本文提出了一种改进的Baffie,以通过内核密度估计(KDE)来估计分布模型。 KDE的主要进步归因于估计概率分布的非参数方式,导致数据驱动估计器。使用来自多相流量钻机的实际数据的实验证明了基于KDE的Baffie的验证。从实践角度来看,Baffie具有应用于具有非高斯分布的操作系统。

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