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A data-based framework for fault detection and diagnostics of non-linear systems with partial state measurement

机译:一个基于数据的框架,用于部分状态测量的非线性系统的故障检测和诊断

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摘要

A novel framework based on the use of dynamic neural networks for data-based process monitoring, fault detection and diagnostics of non-linear systems with partial state measurement is presented in this paper. The proposed framework considers the presence of three kinds of states in a generic system model: states that can easily be measured in real time and in-situ, states that are difficult to measure online but can be measured offline to generate training data, and states that cannot be measured at all. The motivation for such a categorization of state variables comes from a wide class of problems in the manufacturing and chemical industries, wherein certain states are not measurable without expensive equipments or offline analysis while some other states may not be accessible at all. The framework makes use of a recurrent neural network for modeling the hidden dynamics of the system from available measurements and uses this model along with a non-linear observer to augment the information provided by the measured variables. The performance of the proposed method is verified on a synthetic problem as well as a benchmark simulation problem.
机译:本文提出了一种基于动态神经网络的新型框架,用于基于局部状态测量的非线性系统的数据监测,故障检测和诊断。提出的框架考虑了通用系统模型中三种状态的存在:可以轻松地实时和就地测量的状态,难以在线测量但可以离线测量以生成训练数据的状态,以及状态根本无法衡量。对状态变量进行分类的动机来自制造业和化学工业中的一类广泛的问题,其中某些状态如果没有昂贵的设备或离线分析就无法测量,而另一些状态可能根本无法访问。该框架利用递归神经网络从可用的测量中对系统的隐藏动态建模,并将该模型与非线性观测器一起使用以增强由测量变量提供的信息。在综合问题和基准仿真问题上验证了该方法的性能。

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