Multi-objective optimization of truss structure using multi-agent reinforcement learning and graph representation

被引:4
|
作者
Kupwiwat, Chi-tathon [1 ]
Hayashi, Kazuki [1 ]
Ohsaki, Makoto [1 ]
机构
[1] Kyoto Univ, Grad Sch Engn, Dept Architecture & Architectural Engn, Kyoto, Japan
基金
日本学术振兴会;
关键词
Engineering design; Graph convolutional network; Multi -agent reinforcement learning; Multi -objective optimization; Truss structure; EVOLUTIONARY ALGORITHMS; COLLECTIVE INTELLIGENCE;
D O I
10.1016/j.engappai.2023.107594
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This paper presents a novel method for multi-objective optimization of truss design utilizing multi-agent reinforcement learning and graph representation. The agents are trained to modify solutions to increase the hypervolume and spread the distribution of the non-dominated solutions. This iterative modification is modeled as a Markov game where multiple agents interact with the environment by changing the state of the environment, i.e., the solution and the current non-dominated solutions. Agents observe data representations of the state, modify each solution in the current non-dominated solutions, and receive their reward based on the improve-ment of the current non-dominated solutions. Each agent is modeled by the multi-agent deep deterministic gradient consisting of a policy function that predicts actions from its observation data and a value function that estimates rewards from the observation data, its action, and the actions of the other agents. The non-dominated solutions are represented as graph data and observed by the agents as the observation data through graph representation. The proposed method is applied to three multi-objective optimization problems: (1) a simple mathematical problem, (2) a 10-bar truss problem to minimize the structural volume and the displacement, and (3) trade-off designs of trusses to minimize the structural volume and bring the shape closer to the target shape. These numerical examples show the versatility of the trained agents to obtain superior solutions in practical structural optimization problems, compared to a conventional method.
引用
收藏
页数:19
相关论文
共 50 条
  • [1] Multi-Objective Dynamic Dispatch Optimisation using Multi-Agent Reinforcement Learning
    Mannion, Patrick
    Mason, Karl
    Devlin, Sam
    Duggan, Jim
    Howley, Enda
    [J]. AAMAS'16: PROCEEDINGS OF THE 2016 INTERNATIONAL CONFERENCE ON AUTONOMOUS AGENTS & MULTIAGENT SYSTEMS, 2016, : 1345 - 1346
  • [2] Multi-objective optimization of turbine blade profiles based on multi-agent reinforcement learning
    Li, Lele
    Zhang, Weihao
    Li, Ya
    Jiang, Chiju
    Wang, Yufan
    [J]. ENERGY CONVERSION AND MANAGEMENT, 2023, 297
  • [3] Multi-objective reinforcement learning for designing ethical multi-agent environments
    Rodriguez-Soto, Manel
    Lopez-Sanchez, Maite
    Rodriguez-Aguilar, Juan A.
    [J]. NEURAL COMPUTING & APPLICATIONS, 2023,
  • [4] Multi-objective reinforcement learning for designing ethical multi-agent environments
    Rodriguez-Soto, Manel
    Lopez-Sanchez, Maite
    Rodriguez-Aguilar, Juan A.
    [J]. NEURAL COMPUTING & APPLICATIONS, 2023,
  • [5] Joint Multi-Objective Optimization for Radio Access Network Slicing Using Multi-Agent Deep Reinforcement Learning
    Zhou, Guorong
    Zhao, Liqiang
    Zheng, Gan
    Xie, Zhijie
    Song, Shenghui
    Chen, Kwang-Cheng
    [J]. IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2023, 72 (09) : 11828 - 11843
  • [6] An Algorithm for Multi-Objective Multi-Agent Optimization
    Blondin, Maude J.
    Hale, Matthew
    [J]. 2020 AMERICAN CONTROL CONFERENCE (ACC), 2020, : 1489 - 1494
  • [7] Heuristically accelerated reinforcement learning modularization for multi-agent multi-objective problems
    Ferreira, Leonardo Anjoletto
    Costa Ribeiro, Carlos Henrique
    da Costa Bianchi, Reinaldo Augusto
    [J]. APPLIED INTELLIGENCE, 2014, 41 (02) : 551 - 562
  • [8] Multi-Agent Deep Reinforcement Learning for Resource Allocation in the Multi-Objective HetNet
    Nie, Hongrui
    Li, Shaosheng
    Liu, Yong
    [J]. IWCMC 2021: 2021 17TH INTERNATIONAL WIRELESS COMMUNICATIONS & MOBILE COMPUTING CONFERENCE (IWCMC), 2021, : 116 - 121
  • [9] Heuristically accelerated reinforcement learning modularization for multi-agent multi-objective problems
    Leonardo Anjoletto Ferreira
    Carlos Henrique Costa Ribeiro
    Reinaldo Augusto da Costa Bianchi
    [J]. Applied Intelligence, 2014, 41 : 551 - 562
  • [10] A Multi-agent genetic algorithm for multi-objective optimization
    Akopov, Andranik S.
    Hevencev, Maxim A.
    [J]. 2013 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS (SMC 2013), 2013, : 1391 - 1395