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Nonlinear Chemical Process Fault Diagnosis Using Ensemble Deep Support Vector Data Description

机译:非线性化学过程故障诊断使用集合深度支持矢量数据描述

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摘要

As one classical anomaly detection technology, support vector data description (SVDD) has been successfully applied to nonlinear chemical process monitoring. However, the basic SVDD model cannot achieve a satisfactory fault detection performance in the complicated cases because of its intrinsic shallow learning structure. Motivated by the deep learning theory, one improved SVDD method, called ensemble deep SVDD (EDeSVDD), is proposed in order to monitor the process faults more effectively. In the proposed method, a deep support vector data description (DeSVDD) framework is firstly constructed by introducing the deep feature extraction procedure. Different to the traditional SVDD with only one feature extraction layer, DeSVDD is designed with multi-layer feature extraction structure and optimized by minimizing the data-enclosing hypersphere with the regularization of the deep network weights. Further considering the problem that DeSVDD monitoring performance is easily affected by the model structure and the initial weight parameters, an ensemble DeSVDD (EDeSVDD) is presented by applying the ensemble learning strategy based on Bayesian inference. A series of DeSVDD sub-models are generated at the parameter level and the structure level, respectively. These two levels of sub-models are integrated for a holistic monitoring model. To identify the cause variables for the detected faults, a fault isolation scheme is designed by applying the distance correlation coefficients to measure the nonlinear dependency between the original variables and the holistic monitoring index. The applications to the Tennessee Eastman process demonstrate that the proposed EDeSVDD model outperforms the traditional SVDD model and the DeSVDD model in terms of fault detection performance and can identify the fault cause variables effectively.
机译:作为一种经典异常检测技术,支持向量数据描述(SVDD)已成功应用于非线性化学过程监测。但是,由于其内在浅学习结构,基本SVDD模型无法在复杂的情况下实现令人满意的故障检测性能。由深度学习理论的动机,提出了一种改进的SVDD方法,称为集成深度SVDD(EDESVDD),以更有效地监测过程故障。在所提出的方法中,首先通过引入深度特征提取过程来构造深度支持向量数据描述(DESVDD)框架。与传统的SVDD不同,只有一个特征提取层,DESVDD采用多层特征提取结构设计,并通过最小化数据封闭的极度与深网络重量的正则化进行优化。进一步考虑到模型结构和初始权重参数容易影响DESVDD监测性能的问题,通过基于贝叶斯推断应用集合学习策略来提出集合DESVDD(EDESVDD)。在参数级别和结构级别生成一系列DESVD子模型。这两种水平的子模型被整合用于整体监测模型。为了识别检测到的故障的原因变量,通过应用距离相关系数来测量原始变量与整体监测索引之间的非线性依赖性来设计故障隔离方案。田纳西州的伊斯坦德进程的应用表明,建议的EDESVDD模型在故障检测性能方面优于传统的SVDD模型和DESVDD模型,可以有效地识别故障原因变量。

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