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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Decentralized Stabilization for a Class of Continuous-Time Nonlinear Interconnected Systems Using Online Learning Optimal Control Approach
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Decentralized Stabilization for a Class of Continuous-Time Nonlinear Interconnected Systems Using Online Learning Optimal Control Approach

机译:利用在线学习最优控制方法的一类连续时间非线性互联系统的分散镇定

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摘要

In this paper, using a neural-network-based online learning optimal control approach, a novel decentralized control strategy is developed to stabilize a class of continuous-time nonlinear interconnected large-scale systems. First, optimal controllers of the isolated subsystems are designed with cost functions reflecting the bounds of interconnections. Then, it is proven that the decentralized control strategy of the overall system can be established by adding appropriate feedback gains to the optimal control policies of the isolated subsystems. Next, an online policy iteration algorithm is presented to solve the Hamilton–Jacobi–Bellman equations related to the optimal control problem. Through constructing a set of critic neural networks, the cost functions can be obtained approximately, followed by the control policies. Furthermore, the dynamics of the estimation errors of the critic networks are verified to be uniformly and ultimately bounded. Finally, a simulation example is provided to illustrate the effectiveness of the present decentralized control scheme.
机译:在本文中,使用基于神经网络的在线学习最优控制方法,开发了一种新的分散控制策略,以稳定一类连续时间非线性互连的大规模系统。首先,设计隔离子系统的最优控制器,其成本函数反映了互连范围。然后,证明了可以通过将适当的反馈增益添加到隔离子系统的最优控制策略来建立整个系统的分散控制策略。接下来,提出了一种在线策略迭代算法来求解与最优控制问题有关的Hamilton–Jacobi–Bellman方程。通过构造一组评论者神经网络,可以大致获得成本函数,然后获得控制策略。此外,评论者网络的估计误差的动态被证实是一致的并最终是有界的。最后,提供了一个仿真示例来说明本分散控制方案的有效性。

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