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Data-Driven control design by prediction error identification for a refrigeration system based on vapor compression

机译:基于预测误差的基于蒸汽压缩的制冷系统数据驱动控制设计

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This paper deals with data-driven control design in a Model Reference (MR) framework for multivariable systems. Based on a batch of input-output data collected on the process, a fixed structure controller is estimated without using a process model, by embedding the control design problem in the Prediction Error (PE) identification of an optimal controller. A multivariable extension of the OCI (Optimal Controller Identification) method is applied in the design of PID controllers for a refrigeration system based on vapor compression, which is the subject of the benchmark process challenge of the IFAC PID 2018 conference. Simulation results show the obtained controllers perform significantly better than the ones provided by the benchmark challenge.
机译:本文在多变量系统的模型参考(MR)框架中处理数据驱动的控制设计。基于在过程中收集的一批输入输出数据,通过将控制设计问题嵌入最佳控制器的预测误差(PE)识别中,无需使用过程模型即可估算固定结构控制器。 OCI(最优控制器识别)方法的多变量扩展被应用于基于蒸汽压缩的制冷系统PID控制器的设计中,这是IFAC PID 2018大会基准过程挑战的主题。仿真结果表明,所获得的控制器的性能明显优于基准挑战所提供的控制器。

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