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首页> 外文期刊>Applied Soft Computing >Data-driven MIMO model-free reference tracking control with nonlinear state-feedback and fractional order controllers
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Data-driven MIMO model-free reference tracking control with nonlinear state-feedback and fractional order controllers

机译:数据驱动的MIMO模型 - 无线状态反馈和分数订单控制器的无线电模型参考跟踪控制

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In this paper we suggest an extension of the Virtual Reference Feedback Tuning (VRFT) framework to nonlinear state-feedback and fractional order (FO) controllers. Theoretical analysis incentivizes the use of VRFT for tuning general nonlinear controllers to achieve model reference matching because it is expected that the more complex controller parameterization of the nonlinear-state-feedback and FO controllers leads to improved control performance. Key factors needed for successful controller tuning are discussed: good exploration of process dynamics depending on careful input excitation signal selection, the influence of the controller parameterization and the selection of the reference model. VRFT is next applied to a Multi Input-Multi Output (MIMO) nonlinear coupled vertical tank system as a case study, to tune MIMO proportional-integral (PI), fractional order-proportional-integral (FO-PI) and neural network state-feedback controllers. PI and FO-PI controllers are tuned in continuous time but implemented in discrete time to enable their real-world applications. Controllers' complexity vs. control performance trade-off is revealed. For comparisons purposes, an original combination of VRFT and Batch Fitted Q-Learning is employed as a two-step model-free controller tuning procedure for dramatic performance improvement. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,我们建议将虚拟参考反馈调谐(VRFT)框架的扩展到非线性状态反馈和分数顺序(FO)控制器。理论分析激励了VRFT进行调整通用非线性控制器以实现模型参考匹配,因为预期非线性状态反馈和FO控制器的更复杂的控制器参数化导致控制性能提高。讨论了成功控制器调整所需的关键因素:根据仔细输入励磁信号选择,控制器参数化的影响以及参考模型的选择,对过程动态的良好探索。 VRFT接下来应用于多输入多输出(MIMO)非线性耦合垂直罐系统作为一个案例研究,调整MIMO比例积分(PI),分数阶数 - 比例积分(FO-PI)和神经网络状态 - 反馈控制器。 PI和FO-PI控制器在连续时间上进行调整,但在离散时间内实现,以实现其现实世界的应用程序。控制器的复杂性与控制性能权衡揭示。出于比较目的,VRFT和批量拟合Q-Learning的原始组合用作自由两步的无模型控制器调整过程,用于戏剧性的性能改进。 (c)2018 Elsevier B.v.保留所有权利。

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