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Design of a CMAC-Based PID Controller Using Operating Data

机译:基于CMAC的PID控制器使用操作数据设计

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In industrial processes, PID control strategy is still applied in a lot of plants. However, real process systems are nonlinear, thus it is difficult to obtain the desired control performance using fixed PID parameters. Cerebellar model articulation controller (CMAC) is attractive as an artificial neural network in designing control systems for nonlinear systems. The learning cost is drastically reduced when compared with other multi-layered neural networks. On the other hand, theories which directly calculate control parameters without system parameters represented by Virtual Reference Feedback Tuning (VRFT) or Fictitious Reference Iterative Tuning (FRIT) have received much attention in the last few years. These methods can calculate control parameters using closed-loop data and are expected to reduce time and economic costs. In this paper, an offline-learning scheme of CMAC is newly proposed. According to the proposed scheme, CMAC is able to learn PID parameters by using a set of closed-loop data. The effectiveness of the proposed method is evaluated by a numerical example.
机译:在工业过程中,PID控制策略仍应用于大量植物。然而,实际过程系统是非线性的,因此难以使用固定的PID参数获得所需的控制性能。小脑模型铰接控制器(CMAC)作为人工神经网络在设计非线性系统控制系统中具有吸引力。与其他多层神经网络相比,学习成本急剧减少。另一方面,直接计算没有虚拟参考反馈调谐(VRFT)或虚构参考迭代调谐(FRIT)的系统参数的控制参数的理论在过去几年中受到了很多关注。这些方法可以使用闭环数据计算控制参数,预计将减少时间和经济成本。在本文中,新提出了CMAC的离线学习方案。根据所提出的方案,CMAC能够通过使用一组闭环数据来学习PID参数。通过数值示例评估所提出的方法的有效性。

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