Real-time adaptive entry trajectory generation with modular policy and deep reinforcement learning

被引:6
|
作者
Peng, Gaoxiang
Wang, Bo
Liu, Lei
Fan, Huijin
Cheng, Zhongtao
机构
关键词
Entry trajectory; Adaptability; Modularization; Deep reinforcement learning; Real-time; Discretization; ONBOARD GENERATION; GUIDANCE; OPTIMIZATION; CONSTRAINTS; VEHICLES;
D O I
10.1016/j.ast.2023.108594
中图分类号
V [航空、航天];
学科分类号
08 ; 0825 ;
摘要
Recently, data-driven entry trajectory generation algorithms of hypersonic vehicles were highlighted for their high accuracy with low computational costs. Learning a unique black box model mapping the state to control variables is expected. However, insufficient adaptability remains a challenging problem when applying the algorithms in practice, especially for multi-missions. In this article, a real-time entry trajectory generation algorithm with modular policy is proposed to achieve adaptability to various missions, such as changing targets and emergency entry. Based on the modular idea, the entry trajectory problem is decomposed into two decision problems, i.e., adjusting the profile of the angle of attack (AOA) to determine the flight capability and planning the bank angle to ensure the satisfaction of task constraints, which correspond to AOA module and bank module respectively. Then, algorithms are developed by utilizing deep reinforcement learning (DRL) to train the two modules with which an intelligent entry trajectory generation algorithm is proposed to achieve real-time trajectory design in a wide range of reachable areas. Moreover, a non-uniform discretization approach with a state-related independent variable is proposed to deal with state misalignment and contradiction in stepsize settings. The simulation results demonstrate that the proposed algorithm can provide a reliable trajectory in a very short time and adapt to various tasks.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] Realizing a deep reinforcement learning agent for real-time quantum feedback
    Kevin Reuer
    Jonas Landgraf
    Thomas Fösel
    James O’Sullivan
    Liberto Beltrán
    Abdulkadir Akin
    Graham J. Norris
    Ants Remm
    Michael Kerschbaum
    Jean-Claude Besse
    Florian Marquardt
    Andreas Wallraff
    Christopher Eichler
    Nature Communications, 14 (1)
  • [22] Realizing a deep reinforcement learning agent for real-time quantum feedback
    Reuer, Kevin
    Landgraf, Jonas
    Foesel, Thomas
    O'Sullivan, James
    Beltran, Liberto
    Akin, Abdulkadir
    Norris, Graham J.
    Remm, Ants
    Kerschbaum, Michael
    Besse, Jean-Claude
    Marquardt, Florian
    Wallraff, Andreas
    Eichler, Christopher
    NATURE COMMUNICATIONS, 2023, 14 (01)
  • [23] Real-Time Energy Management of a Microgrid Using Deep Reinforcement Learning
    Ji, Ying
    Wang, Jianhui
    Xu, Jiacan
    Fang, Xiaoke
    Zhang, Huaguang
    ENERGIES, 2019, 12 (12)
  • [24] Deep Reinforcement Learning for Green Security Games with Real-Time Information
    Wang, Yufei
    Shi, Zheyuan Ryan
    Yu, Lantao
    Wu, Yi
    Singh, Rohit
    Joppa, Lucas
    Fang, Fei
    THIRTY-THIRD AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE / THIRTY-FIRST INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE CONFERENCE / NINTH AAAI SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2019, : 1401 - 1408
  • [25] Distributed Real-Time Scheduling in Cloud Manufacturing by Deep Reinforcement Learning
    Zhang, Lixiang
    Yang, Chen
    Yan, Yan
    Hu, Yaoguang
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2022, 18 (12) : 8999 - 9007
  • [26] Benchmarking Real-Time Reinforcement Learning
    Thodoroff, Pierre
    Li, Wenyu
    Lawrence, Neil D.
    NEURIPS 2021 WORKSHOP ON PRE-REGISTRATION IN MACHINE LEARNING, VOL 181, 2021, 181 : 26 - 41
  • [27] Deep RTS: A Game Environment for Deep Reinforcement Learning in Real-Time Strategy Games
    Andersen, Per-Arne
    Goodwin, Morten
    Granmo, Ole-Christoffer
    PROCEEDINGS OF THE 2018 IEEE CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND GAMES (CIG'18), 2018, : 149 - 156
  • [28] A Real-Time and Optimal Hypersonic Entry Guidance Method Using Inverse Reinforcement Learning
    Su, Linfeng
    Wang, Jinbo
    Chen, Hongbo
    Pezzella, Giuseppe
    AEROSPACE, 2023, 10 (11)
  • [29] Reinforcement learning control method for real-time hybrid simulation based on deep deterministic policy gradient algorithm
    Li, Ning
    Tang, Jichuan
    Li, Zhong-Xian
    Gao, Xiuyu
    Structural Control and Health Monitoring, 2022, 29 (10)
  • [30] Rocket Trajectory Real-time Generation System
    Liu, Yan
    Chen, Zhenhua
    Wang, Jian
    Li, Weihuai
    2018 10TH INTERNATIONAL CONFERENCE ON COMMUNICATIONS, CIRCUITS AND SYSTEMS (ICCCAS 2018), 2018, : 241 - 245