Multi-agent reinforcement learning using echo-state network and its application to pedestrian dynamics

Komatsu, Hisato

arXiv.org Artificial Intelligence 

Comprehensively understanding such motions through only experiments and observations is challenging. Thus, several studies have conducted computer simulations for a better understanding. Traditionally, animals (including humans) are assumed to obey certain mathematical rules in these simulations (Vicsek et al., (1995); Helbing and Molnar, (1995); Muramatsu et al., (1999)). However, with the recent development of machine learning, simulation methods that reproduce animals by agents of reinforcement learning (RL) have been proposed (Martinez-Gil et al., (2014, 2017); Zheng and Liu, (2019); Bahamid and Ibrahim, (2022); Huang et al., (2023)). RL in an environment with several agents exist is referred to as multi-agent reinforcement learning (MARL), and has been studied intensively to realize the competition or cooperation between agents. Currently, deep learning is usually used to implement RL agents, because it outperforms conventional methods of machine learning (Mnih et al., (2015,