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Multi input-multi output tank system data-driven model reference control

机译:多输入多输出储罐系统数据驱动模型参考控制

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This paper suggests a model-free control approach for tuning nonlinear state feedback controllers to ensure model reference output tracking in an optimal control framework. An iterative Batch fitted Q (BFQ)-learning strategy uses two neural networks (NNs) to estimate the value function (critic) and the controller (actor). An initially stabilizing linear Virtual Reference Feedback Tuning (VRFT) controller learned from few input-output process samples is then used to collect significantly more input-state-output samples in a controlled constrained environment, by compensating for undesired process dynamics. This collected data is subsequently used to learn significantly superior nonlinear state feedback NN controllers for model reference output tracking using the proposed iterative BFQ-learning strategy. The mixed VRFT-BFQ learning approach is experimentally validated on the water level control of a multi input-multi output (MIMO) nonlinear constrained coupled two-tank system. Although the VRFT control is designed independently for each control channel and does not ensure decoupling, straightforward (MIMO) BFQ-learning proves good decoupling and ensures indirect linearization of the feedback MIMO control system.
机译:本文提出了一种用于调整非线性状态反馈控制器的无模型控制方法,以确保在最佳控制框架中跟踪模型参考输出。迭代批量拟合Q(BFQ)学习策略使用两个神经网络(NN)来估计值函数(临界)和控制器(行为者)。从很少的输入输出过程样本中学习的最初稳定的线性虚拟参考反馈调整(VRFT)控制器然后用于通过补偿不期望的过程动态来在受控的受限环境中收集更多的输入状态输出样本。此收集的数据随后用于使用所提出的迭代BFQ学习策略来学习明显更好的非线性状态反馈NN控制器,以进行模型参考输出跟踪。 VRFT-BFQ混合学习方法在多输入多输出(MIMO)非线性约束耦合双水箱系统的水位控制上进行了实验验证。尽管VRFT控制是为每个控制信道独立设计的,并且不能确保解耦,但是简单的(MIMO)BFQ学习证明了良好的解耦,并且可以确保反馈MIMO控制系统进行间接线性化。

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