首页> 外文期刊>Transactions of The Institution of Chemical Engineers. Process Safety and Environmental Protection, Part B >Model selection and fault detection approach based on Bayes decision theory: Application to changes detection problem in a distillation column
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Model selection and fault detection approach based on Bayes decision theory: Application to changes detection problem in a distillation column

机译:基于贝叶斯决策理论的模型选择与故障检测方法:在蒸馏塔变化检测中的应用

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摘要

The fault detection of industrial processes is very important for increasing the safety, reliability and availability of the different components involved in the production scheme. In this paper, a fault detection (FD) method is developed for nonlinear systems. The main contribution consists in the design of this FD scheme through a combination of the Bayes theorem and a neural adaptive black-box identification for such systems. The performance of the proposed fault detection system has been tested on a real plant as a distillation column. The simplicity of the developed neural model of normal condition operation, under all regimes (i.e. steady-state and unsteady state), used in this case is realised by means of a NARX (Nonlinear Auto-Regressive with exogenous input) model and by an experimental design. To show the effectiveness of proposed fault detection method, it was tested on a realistic fault of a distillation plant of laboratory scale.
机译:工业过程的故障检测对于提高生产方案中涉及的不同组件的安全性,可靠性和可用性非常重要。本文提出了一种针对非线性系统的故障检测(FD)方法。主要贡献在于通过结合贝叶斯定理和此类系统的神经自适应黑匣子识别来设计此FD方案。建议的故障检测系统的性能已在作为蒸馏塔的实际工厂中进行了测试。这种情况下使用的已开发的正常状态神经模型在所有情况下(即稳态和非稳态)的简单性都可以通过NARX(带有外源输入的非线性自回归)模型和实验来实现。设计。为了显示提出的故障检测方法的有效性,在实验室规模的蒸馏厂的实际故障上进行了测试。

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