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Local Tracking Control for Unknown Interconnected Systems via Neuro-Dynamic Programming

机译:通过神经动力学编程对未知互连系统进行本地跟踪控制

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This paper develops a neuro-dynamic programming based local tracking control (LTC) scheme for unknown interconnected systems. By using the local input-output data and the desired states of coupling subsystems, a local neural network (NN) identifier is established to obtain the local input gain matrix online. By introducing a modified local cost function, the Hamilton-Jacobi-Bellman equation is solved by a local critic NN with asymptotically convergent weight vector, which is obtained by nested update law, and the LTC can be derived with the desired state aided augmented subsystem. The stability of the closed-loop system is shown by Lyapunov's direct method. The simulation on the parallel inverted pendulum system illustrates that the developed LTC scheme is effective.
机译:本文针对未知的互连系统,开发了一种基于神经动力学编程的局部跟踪控制(LTC)方案。通过使用本地输入输出数据和耦合子系统的期望状态,可以建立本地神经网络(NN)标识符以在线获取本地输入增益矩阵。通过引入修改后的局部成本函数,汉密尔顿-雅各比-贝尔曼方程由具有嵌套收敛定律的具有渐近收敛权向量的局部评论者NN求解,并且可以使用所需状态辅助的增强子系统来导出LTC。 Lyapunov的直接方法表明了闭环系统的稳定性。对并联倒立摆系统的仿真表明,所开发的LTC方案是有效的。

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