Research on control algorithms of systems with long time delay

Mingxia Chen, Jin-di Zhao, Hong Zhao
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引用次数: 2

Abstract

In chemical industry, metallurgy, petroleum and other industrial production processes, due to the existence of time delay, it is easy to cause the control quality of the control system to deteriorate or even become unstable. In this paper, the common equipment in the industrial process control system - heat exchanger as the controlled object, to study the control algorithm of systems with long time delay. We discuss the conventional PID control algorithm and the control algorithm based on Smith predictive control. The Matlab software is used to simulate the controlled object. The results show that compared with the conventional PID control, Smith predictive control effectively reduces the overshoot and adjustment time of the system and improves the response speed of the system, but it is only suitable for occasions with high control precision. Gain-adaptive smith predictive control still has a good control effect in the case of changed gain. The system of modified Smith predictive with regulator responds quickly and maintains good control performance in the case of changed time delay.
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长时滞系统的控制算法研究
在化工、冶金、石油等工业生产过程中,由于时滞的存在,很容易造成控制系统的控制质量恶化甚至变得不稳定。本文以工业过程控制系统中常见的设备——换热器为被控对象,研究了长时延系统的控制算法。讨论了传统的PID控制算法和基于Smith预测控制的控制算法。利用Matlab软件对被控对象进行仿真。结果表明,与传统的PID控制相比,Smith预测控制有效地减少了系统的超调量和调整时间,提高了系统的响应速度,但只适用于控制精度要求较高的场合。增益自适应史密斯预测控制在增益变化的情况下仍然具有良好的控制效果。在时滞变化的情况下,改进的带调节器的Smith预测系统响应速度快,并保持良好的控制性能。
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