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首页> 外文期刊>Journal of Process Control >Data-driven compensation method for sensor drift faults in digital PID systems with unknown dynamics
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Data-driven compensation method for sensor drift faults in digital PID systems with unknown dynamics

机译:具有未知动力学数字PID系统中传感器漂移故障的数据驱动补偿方法

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摘要

This paper investigates the problem of compensating for the slow-changing sensor drift failures occurring in digital PID systems with unknown dynamics. It is extremely difficult to ensure the tracking performance of the faulty systems, due to the system models unavailable, the measurements corrupted by the faults, and the impact of the sensor failures propagated under feedback control. Therefore, the existing data driven fault-tolerant control (FTC) methods are not capable of dealing with the above problem. Contrary to the current state-of-the-art, a novel residual generator structure is devised. Furthermore, its data-driven realization is accomplished, along with the convergence analysis of the proposed closed-loop recursive identification algorithm. On this basis, such failures can be estimated continuously from the residual signals, using an iterative estimation procedure, the convergence of whose mean-square estimation error is theoretically proven. As a result, the effect of the aforementioned failures on the tracking properties is eliminated with the aid of a fault detection mechanism and based on the tracking error signal corrected with the estimated faults. Finally, the effectiveness and merits of the resultant data-driven FTC algorithm are validated by the continuous stirred tank heater benchmark process. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文调查了在具有未知动力学中的数字PID系统中发生缓慢变化的传感器漂移失败的问题。由于系统型号不可用,可确保故障系统的跟踪性能非常困难,故障损坏的测量值,并且在反馈控制下传播的传感器故障的影响。因此,现有数据驱动的容错控制(FTC)方法不能处理上述问题。与目前的最先进的最先进,设计了一种新的剩余发电机结构。此外,其数据驱动的实现是实现的,以及所提出的闭环递归识别算法的收敛性分析。在此基础上,使用迭代估计程序可以连续地从残余信号估计这种故障,从理论上证明了其平均方形估计误差的均衡误差的收敛性。结果,借助于故障检测机制消除了上述故障对跟踪特性的影响,并基于用估计的故障校正的跟踪误差信号。最后,由连续的搅拌罐加热器基准工艺验证所得数据驱动的FTC算法的有效性和优点。 (c)2017 Elsevier Ltd.保留所有权利。

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