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A Novel Multivariate Statistical Analysis Aided Deep Learning Approach for Nonlinear System Process Monitoring with Comparison Studies

机译:带有比较研究的非线性系统过程监控的新型多元统计分析辅助深度学习方法

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The safety, stability and reliability of the modern complex processes have always been the focus of the industry. An abnormity can lead to failures in the production and manufacturing processes or even dramatic accidents. The fault diagnosis techniques aim to enhance the aforementioned aspects by detecting the system’s deviations from the normal operating conditions and providing early warnings. By mining the hidden system features in the historical data, complex physical modeling procedures and the dependence on large amounts of prior knowledge can be avoided. In many practical scenarios, data-driven fault diagnosis algorithms are more suitable for modern industrial diagnosis. In this paper, a novel approach is proposed which integrates both multivariate statistical analysis and deep neural network to deal with the nonlinearities in the complex systems. Based on the theory of traditional data-driven methods, deep learning methods and the newly proposed method, a MATLAB-based fault diagnosis toolbox is developed and published online. Plentiful function libraries are provided to the researchers to analyze those algorithms and satisfy the need of practical industrial applications. By applying the developed toolbox, the characteristics of those algorithms are also compared, especially on the time-consumption feature and the fault discrimination feature.
机译:现代复杂工艺的安全性,稳定性和可靠性一直是行业关注的焦点。异常会导致生产和制造过程中的故障,甚至导致重大事故。故障诊断技术旨在通过检测系统与正常运行条件的偏差并提供预警来增强上述方面。通过挖掘历史数据中的隐藏系统特征,可以避免复杂的物理建模过程以及对大量先验知识的依赖。在许多实际情况下,数据驱动的故障诊断算法更适合于现代工业诊断。本文提出了一种新颖的方法,该方法将多元统计分析与深度神经网络相结合,以处理复杂系统中的非线性问题。基于传统数据驱动方法,深度学习方法和新提出的方法的理论,开发并在线发布了基于MATLAB的故障诊断工具箱。提供给研究人员大量的功能库,以分析这些算法并满足实际工业应用的需求。通过应用开发的工具箱,还比较了这些算法的特性,特别是在时间消耗特性和故障判别特性上。

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