• Complex
  • Title
  • Keyword
  • Abstract
  • Scholars
  • Journal
  • ISSN
  • Conference
搜索

Author:

Wang, Zihao (Wang, Zihao.) | Zhang, Yanxin (Zhang, Yanxin.) | Yin, Chenkun (Yin, Chenkun.) | Huang, Zhiqing (Huang, Zhiqing.)

Indexed by:

EI Scopus

Abstract:

Deep reinforcement learning at the same time combines the perception of deep learning and the decision-making of reinforcement learning, is currently a hot research topic in the field of artificial intelligence. Multi-agent deep reinforcement learning applies the idea and algorithm of deep reinforcement learning to the learning and control of multi-agent system, which is an important method to develop multi-agent system with swarm agent. Multi-agent deep deterministic policy gradient(MADDPG) is the most popular model-free multi-agent reinforcement learning algorithm. To solve the problem of low learning and training efficiency and slow convergence speed of MADDPG due to the deterministic single action output of policy network, this paper combines the maximum reinforcement learning soft actor -critic algorithm to make each agent's policy network output action with a random strategy and propose a multi-agent deep reinforcement learning algorithm MASAC based on maximum entropy. The experimental results show that the training speed of MASAC is better than that of MADDPG. At the same time, the learning agent has good performance, stable performance and strong anti-interference ability. © 2021 IEEE.

Keyword:

Multi agent systems Reinforcement learning Deep learning Decision making Learning systems Learning algorithms Entropy

Author Community:

  • [ 1 ] [Wang, Zihao]Beijing Jiaotong University, China
  • [ 2 ] [Zhang, Yanxin]Beijing Jiaotong University, China
  • [ 3 ] [Yin, Chenkun]Beijing Jiaotong University, China
  • [ 4 ] [Huang, Zhiqing]Beijing University of Technology, China

Reprint Author's Address:

Email:

Show more details

Related Keywords:

Related Article:

Source :

ISSN: 2693--2814

Year: 2021

Page: 1402-1406

Language: English

Cited Count:

WoS CC Cited Count: 0

SCOPUS Cited Count: 18

ESI Highly Cited Papers on the List: 0 Unfold All

WanFang Cited Count:

Chinese Cited Count:

30 Days PV: 15

Affiliated Colleges:

Online/Total:864/10547965
Address:BJUT Library(100 Pingleyuan,Chaoyang District,Beijing 100124, China Post Code:100124) Contact Us:010-67392185
Copyright:BJUT Library Technical Support:Beijing Aegean Software Co., Ltd.