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首页> 外文期刊>Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers >Sensor fault detection and identification in a pilot plant under process control
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Sensor fault detection and identification in a pilot plant under process control

机译:在过程控制下的中试工厂中的传感器故障检测和识别

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The experimental evaluation of an automatic procedure for sensor fault detection and identification in a real process under closed-loop control is the objective of the present research. The scheme proposed here is very robust to faults in the main sensors of a multiloop control system, thus improving safety and reliability of plant operations. A state variable transformation is carried out in order to derive a model suitable for Recursive Least Squares (RCS) identification valid for all regimes of operation. The fault detection method is based on a moving window statistical analysis of the estimated model parameters. Simultaneously, a state estimation scheme, based on the Extended Kalman Filter (EKF), enables the fault identification, reduces false alarms and provides redundant measurements for alternative control purposes. Experimental runs were carried out in an industrial-scale pilot plant. Despite the large number of uncertainties and nonlinearities in the process, the system exhibited a good performance when faults occurred in the sensors of the control loops. [References: 19]
机译:本研究的目的是对在闭环控制下的实际过程中传感器故障检测和识别的自动程序进行实验评估。此处提出的方案对于多回路控制系统的主传感器中的故障非常可靠,从而提高了工厂运营的安全性和可靠性。进行状态变量转换以得出适用于递归最小二乘(RCS)识别的模型,该模型对所有操作方式均有效。故障检测方法基于估计的模型参数的移动窗口统计分析。同时,基于扩展卡尔曼滤波器(EKF)的状态估计方案可实现故障识别,减少误报并提供冗余测量值,以实现替代控制目的。实验运行是在工业规模的中试工厂中进行的。尽管过程中存在大量不确定性和非线性,但当控制回路的传感器中发生故障时,系统仍具有良好的性能。 [参考:19]

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