耦合因子条件传递函数条件下无模型强化学习的应用研究

Xiaoya Yang, Youtian Guo, Rui Wang, Xiaohui Hu
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引用次数: 0

摘要

动态系统在自然界中无处不在。长期以来,动态系统的稳定性和性能分析一直是控制科学和运筹学领域的研究热点。本文构造并分析了一个实际的动态系统序列决策问题。采用无模型强化学习算法对该问题进行优化。运用自适应控制理论和信息论对该问题进行了详细分析,并指出了该算法的极限性能。本文选取了三种经典的无模型强化学习算法DQN、DQN- per和PPO,比较分析了它们在构建的时序决策问题上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application Research of Model-Free Reinforcement Learning under the Condition of Conditional Transfer Function with Coupling Factors
Dynamic systems are ubiquitous in nature. The analysis of the stability and performance of dynamic systems has been a research hotspot in control science and operations research for a long time. In this paper, we construct and analyze an actual sequential decision-making problem of dynamic system. The Model-Free reinforcement learning algorithms are used to optimize this problem. The problem is analyzed in detail through adaptive control theory and information theory, also the extreme performance of the algorithm is pointed out. In this paper, we select three classic Model-Free reinforcement learning algorithms, DQN, DQN-PER, and PPO, to compare and analyze their performance on the timing series decision problem we construct.
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