基于过程运行数据的PID控制器自整定

Quan-shan Li, Liulin Cao, Lideng Pan, Xiaolin Lin, J. Cui
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引用次数: 0

摘要

本文提出了一种利用过程运行数据自整定PID参数的新算法。根据PID控制回路的动态特性,得到了可行的数据集。通过定义ε-不敏感损失函数和识别置信函数,从可行数据集中选择模型识别的有效数据集。利用有效数据集对过程对象进行建模,给出了一种具有多模型结构的PID参数整定方法。采用所开发的最优随机Luus-Jaakola算法,得到了对所有模型都有较好效果的优化PID控制器。该算法的工作不需要人员参与,得到的PID参数可以直接应用于控制回路,无需进一步调整。该算法已成功应用于多家生产工厂,取得了满意的效果。实际结果表明,这是一种实用的PID参数整定算法,使用简单,推广方便。
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Self-tuning of PID controller based on process operational data
In this work, a novel algorithm for the self-tuning PID parameters by using process operational data is proposed. A feasible data set is achieved on the basis of dynamic characteristic of PID control loop. With defined ε-insensitive loss function and identification confidence function, the valid data set for model identification is selected from the feasible data set. The valid data set is used to model process objects and then a PID parameters tuning method is given which has a multiple models structure. By using developed optimal stochastic Luus-Jaakola algorithm, an optimized PID controller is obtained which has a perfect effect for all the models. The work of the algorithm does not require staff participation, and the obtained PID parameters can be directly applied to the control loop without a further adjustment. This algorithm has been used in many production plants successfully, and produced satisfactory results. The actual results show that this is a practical algorithm of PID parameter tuning with obvious advantages of simple use and convenient promotion.
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