Variationally and Intrinsically motivated reinforcement learning for decentralized traffic signal control

01/04/2021
by   Liwen Zhu, et al.
0

One of the biggest challenges in multi-agent reinforcement learning is coordination, a typical application scenario of this is traffic signal control. Recently, it has attracted a rising number of researchers and has become a hot research field with great practical significance. In this paper, we propose a novel method called MetaVRS (Meta Variational RewardShaping) for traffic signal coordination control. By heuristically applying the intrinsic reward to the environmental reward, MetaVRS can wisely capture the agent-to-agent interplay. Besides, latent variables generated by VAE are brought into policy for automatically tradeoff between exploration and exploitation to optimize the policy. In addition, meta learning was used in decoder for faster adaptation and better approximation. Empirically, we demonstate that MetaVRS substantially outperforms existing methods and shows superior adaptability, which predictably has a far-reaching significance to the multi-agent traffic signal coordination control.

READ FULL TEXT

page 10

page 12

research
04/21/2019

Generative Exploration and Exploitation

Sparse reward is one of the biggest challenges in reinforcement learning...
research
04/03/2020

Multi-agent Reinforcement Learning for Networked System Control

This paper considers multi-agent reinforcement learning (MARL) in networ...
research
02/27/2020

Learning Scalable Multi-Agent Coordination by Spatial Differential for Traffic Signal Control

The intelligent control of the traffic signal is critical to the optimiz...
research
08/10/2019

Large-scale Traffic Signal Control Using a Novel Multi-Agent Reinforcement Learning

Finding the optimal signal timing strategy is a difficult task for the p...
research
05/19/2020

Batch-Augmented Multi-Agent Reinforcement Learning for Efficient Traffic Signal Optimization

The goal of this work is to provide a viable solution based on reinforce...
research
12/31/2020

Multi-Agent Reinforcement Learning for Unmanned Aerial Vehicle Coordination by Multi-Critic Policy Gradient Optimization

Recent technological progress in the development of Unmanned Aerial Vehi...
research
03/21/2023

Multi-agent Reinforcement Learning for Regional Signal control in Large-scale Grid Traffic network

Adaptive traffic signal control with Multi-agent Reinforcement Learning(...

Please sign up or login with your details

Forgot password? Click here to reset