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Model Predictive Control of Unknown Nonlinear Dynamical Systems Based on Recurrent Neural Networks

机译:基于递归神经网络的未知非线性动力系统的模型预测控制

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摘要

In this paper, we present a neurodynamic approach to model predictive control (MPC) of unknown nonlinear dynamical systems based on two recurrent neural networks (RNNs). The echo state network (ESN) and simplified dual network (SDN) are adopted for system identification and dynamic optimization, respectively. First, the unknown nonlinear system is identified based on the ESN with input-output training and testing samples. Then, the resulting nonconvex optimization problem associated with nonlinear MPC is decomposed via Taylor expansion. To estimate the higher order unknown term resulted from the decomposition, an online supervised learning algorithm is developed. Next, the SDN is applied for solving the relaxed convex optimization problem to compute the optimal control actions over the predicted horizon. Simulation results are provided to demonstrate the effectiveness and characteristics of the proposed approach. The proposed RNN-based approach has many desirable properties such as global convergence and low complexity. It is shown that the RNN-based nonlinear MPC scheme is effective and potentially suitable for real-time MPC implementation in many applications.
机译:在本文中,我们提出了一种基于两个递归神经网络(RNN)的未知动力学系统的神经动力学模型预测控制(MPC)。采用回波状态网络(ESN)和简化双网络(SDN)进行系统识别和动态优化。首先,基于带有输入输出训练和测试样本的ESN识别未知的非线性系统。然后,通过泰勒展开分解与非线性MPC相关的非凸优化问题。为了估计分解产生的高阶未知项,开发了一种在线监督学习算法。接下来,SDN被用于解决松弛凸优化问题,以计算预测范围内的最优控制动作。仿真结果表明了该方法的有效性和特点。所提出的基于RNN的方法具有许多理想的属性,例如全局收敛性和低复杂度。结果表明,基于RNN的非线性MPC方案是有效的,并且可能适合于许多应用中的实时MPC实现。

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