基于smith预测器的供热系统神经模糊PID控制器设计

A. Dehghani, H. Khodadadi
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引用次数: 17

摘要

采暖、通风、空调技术中最重要的部分是采暖系统。这部分用于智能建筑,提供所需的空气质量和热舒适。多种运行方式所带来的时滞和模型参数的不确定性是传统PID控制供热系统的主要挑战。为了克服这些问题,本文提出了一种将模糊逻辑和神经网络相结合的智能PID算法,并将其应用于Smith预测器结构中。为此,本文提出了一种基于Smith预测器的模糊神经网络PID控制器。通过对神经网络的动态学习和模糊推理进行校正,得到控制器的PID参数的最优值。加热系统的仿真结果表明,基于Smith预测器的模糊神经网络PID控制器的性能与其他控制结构相比有了很大的提高,具有响应快、超调量小、上升沉降时间短等特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing a neuro-fuzzy PID controller based on smith predictor for heating system
The most important part of the heating, ventilation, and air conditioning technology is heating System. This part is used in smart buildings and provides the desired air quality and thermal comfort. The time delay and uncertainty in model parameters due to the several operation mode cause the main challenges in heating system control by the traditional PID approaches. To overcome these problems, this paper presents an intelligent PID algorithm combines the fuzzy logic and neural network method together and used it in Smith predictor structure. Hence, a fuzzy neural network PID controller based on Smith predictor is proposed in this paper for the heating system. By correction of the dynamic learning of neural network and fuzzy inference, PID parameters of the controller get their optimal values. Simulation results of the heating system illustrate that the performance of the fuzzy neural network PID controller based on Smith predictor in comparison to the other control structures has been greatly improved, with fast response, smallest overshoot and lowest rise and settling time.
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