基于非策略强化学习技术的零和微分博弈问题鲁棒控制设计

Q3 Earth and Planetary Sciences
Hongji Zhuang, Hongxu Zhu, Shufan Wu, Xiaoliang Wang, Zhongcheng Mu, Qiang Shen
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引用次数: 0

摘要

本文旨在利用非策略强化学习技术来解决鲁棒零和微分博弈问题。首先在名义模型的基础上建立了鲁棒系统模型。提出了控制策略,并严格证明了渐近稳定性和最优性。非策略强化学习技术由贝尔曼方程生成控制策略。由于其结果是通过获得的系统数据集得出的,因此避免了可能不准确的系统动态模型的影响。这是首次在这一鲁棒性双人零和微分博弈问题上应用非策略 RL 算法。此外,还演示了最终算法的收敛性,并运行了一个仿真实例来证实其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Robust control design for zero-sum differential games problem based on off-policy reinforcement learning technique

Robust control design for zero-sum differential games problem based on off-policy reinforcement learning technique

This paper aims to figure out the robust zero-sum differential game problem using an off-policy reinforcement learning technique. The robust system model is first established based on the nominal one. The control strategy is proposed with the asymptotic stability and optimality being strictly proved. The off-policy reinforcement learning technique is built from the Bellman equation to generate the control policy. A potentially inaccurate system dynamic model’s influence is avoided because the outcome is attained from the system data set obtained. It is the first-time application of the off-policy RL algorithm on this robust two-player zero-sum differential game problem. Additionally, the final algorithm’s convergence is demonstrated, and a simulation example is run to confirm its efficacy.

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来源期刊
Aerospace Systems
Aerospace Systems Social Sciences-Social Sciences (miscellaneous)
CiteScore
1.80
自引率
0.00%
发文量
53
期刊介绍: Aerospace Systems provides an international, peer-reviewed forum which focuses on system-level research and development regarding aeronautics and astronautics. The journal emphasizes the unique role and increasing importance of informatics on aerospace. It fills a gap in current publishing coverage from outer space vehicles to atmospheric vehicles by highlighting interdisciplinary science, technology and engineering. Potential topics include, but are not limited to: Trans-space vehicle systems design and integration Air vehicle systems Space vehicle systems Near-space vehicle systems Aerospace robotics and unmanned system Communication, navigation and surveillance Aerodynamics and aircraft design Dynamics and control Aerospace propulsion Avionics system Opto-electronic system Air traffic management Earth observation Deep space exploration Bionic micro-aircraft/spacecraft Intelligent sensing and Information fusion
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