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  • 标题:Data-driven dynamic multi-objective optimal control: A Hamiltonian-inequality driven satisficing reinforcement learning approach
  • 本地全文:下载
  • 作者:Majid Mazouchi ; Yongliang Yang ; Hamidreza Modares
  • 期刊名称:IFAC PapersOnLine
  • 印刷版ISSN:2405-8963
  • 出版年度:2020
  • 卷号:53
  • 期号:2
  • 页码:8070-8075
  • DOI:10.1016/j.ifacol.2020.12.2275
  • 语种:English
  • 出版社:Elsevier
  • 摘要:AbstractThis paper presents an iterative data-driven algorithm for solving dynamic multi-objective (MO) optimal control problems arising in control of nonlinear continuous-time systems with multiple objectives. It is first shown that the Hamiltonian function corresponding to each objective can serve as a comparison function to compare the performance of admissible policies. Relaxed Hamilton-Jacobi-bellman (HJB) equations in terms of HJB inequalities are then solved in a dynamic constrained MO framework to find Pareto-optimal solutions. Relation to satisficing (good enough) decision-making framework is shown. A Sum-of-Square (SOS)-based iterative algorithm is developed to solve the formulated MO optimization with HJB inequalities. To obviate the requirement of complete knowledge of the system dynamics, a data-driven satisficing reinforcement learning approach is proposed to solve the SOS optimization problem in real-time using only the information of the system trajectories measured during a time interval without having full knowledge of the system dynamics. Finally, a simulation example is provided to show the effectiveness of the proposed algorithm.
  • 关键词:KeywordsMulti-objective optimizationPareto optimalityReinforcement learningSum-of-Square theory
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