一类具有状态延迟和控制约束的非线性系统的神经网络有限水平最优控制

Xiaofeng Lin, N. Cao, Yuzhang Lin
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引用次数: 0

摘要

本文提出了一种新的有限视界迭代ADP算法,用于求解一类具有状态延迟和控制约束的非线性系统问题,得到了有限时间ε-最优控制。首先,设计了一种新的性能指标函数来处理控制约束,给出了具有状态延迟的离散非线性系统HJB方程。其次,给出了有限视界ADP算法的迭代过程和收敛性的数学证明。通过引入误差键ε得到近似最优控制。在ADP算法中,采用两个BP神经网络来逼近控制律函数和性能指标函数。最后,通过仿真实例对比验证了本文方法的有效性。
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Neural network based finite horizon optimal control for a class of nonlinear systems with state delay and control constraints
In this paper, a new finite horizon iterative ADP algorithm is used to solve a class of nonlinear systems with state delay and control constraints problem and finite time ε-optimal control is obtained. First of all, a new performance index function is designed to deal with the control constraints, the discrete nonlinear systems HJB equation with state delay is presented. Second, the iterative process and mathematical proof of the convergence is illustrated for the proposed finite horizon ADP algorithm. Approximate optimal control is obtained by introducing an error bond ε. Two BP neural networks are developed to approximate control law function and performance index function in our ADP algorithm. Finally, comparing simulation cases are used to verify the effectiveness of the method proposed in this paper.
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