Adaptive optics control with multi-agent model-free reinforcement learning

被引:34
|
作者
Pou, B. [1 ,2 ]
Ferreira, F. [3 ]
Quinones, E. [1 ]
Gratadour, D. [3 ,4 ]
Martin, M. [2 ]
机构
[1] Barcelona Supercotnputing Ctr BSC, C Jordi Girona 29, Barcelona 08034, Spain
[2] Univ Politecn Catalunya UPC, Comp Sci Dept, C Jordi Girona 31, Barcelona 08034, Spain
[3] Univ Paris Diderot, Univ PSL, Sorbonne Paris Cite, Sorbonne Univ,CNRS,Observ Paris,LESIA, 5 Pl Jules Janssen, F-92195 Meudon, France
[4] Australian Natl Univ, Res Sch Astron & Astrophys, Canberra, ACT 2611, Australia
关键词
QUADRATIC GAUSSIAN CONTROL; WAVE-FRONT RECONSTRUCTION;
D O I
10.1364/OE.444099
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
We present a novel formulation of closed-loop adaptive optics (AO) control as a multi-agent reinforcement learning (MARL) problem in which the controller is able to learn a non-linear policy and does not need a priori information on the dynamics of the atmosphere. We identify the different challenges of applying a reinforcement learning (RL) method to AO and, to solve them, propose the combination of model-free MARL for control with an autoencoder neural network to mitigate the effect of noise. Moreover, we extend current existing methods of error budget analysis to include a RL controller. The experimental results for an 8m telescope equipped with a 40x40 Shack-Hartmann system show a significant increase in performance over the integrator baseline and comparable performance to a model-based predictive approach, a linear quadratic Gaussian controller with perfect knowledge of atmospheric conditions. Finally, the error budget analysis provides evidence that the RL controller is partially compensating for bandwidth error and is helping to mitigate the propagation of aliasing. (C) 2022 Optica Publishing Group under the terms of the Optica Open Access Publishing Agreement
引用
收藏
页码:2991 / 3015
页数:25
相关论文
共 50 条
  • [41] Multi-Agent Reinforcement Learning
    Stankovic, Milos
    2016 13TH SYMPOSIUM ON NEURAL NETWORKS AND APPLICATIONS (NEUREL), 2016, : 43 - 43
  • [42] Multi-Agent Reinforcement Learning Control for Ramp Metering
    Fares, Ahmed
    Gomaa, Walid
    PROGRESS IN SYSTEMS ENGINEERING, 2015, 366 : 167 - 173
  • [43] Scalable Reinforcement Learning Policies for Multi-Agent Control
    Hsu, Christopher D.
    Jeong, Heejin
    Pappas, George J.
    Chaudhari, Pratik
    2021 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2021, : 4785 - 4791
  • [44] Multi-Agent Reinforcement Learning for Coordinating Communication and Control
    Mason, Federico
    Chiariotti, Federico
    Zanella, Andrea
    Popovski, Petar
    IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2024, 10 (04) : 1566 - 1581
  • [45] MARLYC: Multi-Agent Reinforcement Learning Yaw Control
    Kadoche, Elie
    Gourvenec, Sebastien
    Pallud, Maxime
    Levent, Tanguy
    RENEWABLE ENERGY, 2023, 217
  • [46] Dynamic Multi-Agent Reinforcement Learning for Control Optimization
    Fagan, Derek
    Meier, Rene
    PROCEEDINGS FIFTH INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS, MODELLING AND SIMULATION, 2014, : 99 - 104
  • [47] Multi-agent Reinforcement Learning for Traffic Signal Control
    Prabuchandran, K. J.
    Kumar, Hemanth A. N.
    Bhatnagar, Shalabh
    2014 IEEE 17TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2014, : 2529 - 2534
  • [48] Cranes control using multi-agent reinforcement learning
    Arai, S
    Miyazaki, K
    Kobayashi, S
    INTELLIGENT AUTONOMOUS SYSTEMS: IAS-5, 1998, : 335 - 342
  • [49] Robust model-free adaptive iterative learning formation for unknown heterogeneous non-linear multi-agent systems
    Ren, Ye
    Hou, Zhongsheng
    IET CONTROL THEORY AND APPLICATIONS, 2020, 14 (04): : 654 - 663
  • [50] Adaptive Wireless Network Management with Multi-Agent Reinforcement Learning
    Ivoghlian, Ameer
    Salcic, Zoran
    Wang, Kevin I-Kai
    SENSORS, 2022, 22 (03)