Effects of Smart Traffic Signal Control on Air Quality
- URL: http://arxiv.org/abs/2107.02361v1
- Date: Tue, 6 Jul 2021 02:48:42 GMT
- Title: Effects of Smart Traffic Signal Control on Air Quality
- Authors: Paolo Fazzini, Marco Torre, Valeria Rizza and Francesco Petracchini
- Abstract summary: Multi-agent deep reinforcement learning (MARL) has been studied experimentally in traffic systems.
A recently developed multi-agent variant of the well-established advantage actor-critic (A2C) algorithm, called MA2C, exploits the promising idea of some communication among the agents.
In this view, the agents share their strategies with other neighbor agents, thereby stabilizing the learning process even when the agents grow in number and variety.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Adaptive traffic signal control (ATSC) in urban traffic networks poses a
challenging task due to the complicated dynamics arising in traffic systems. In
recent years, several approaches based on multi-agent deep reinforcement
learning (MARL) have been studied experimentally. These approaches propose
distributed techniques in which each signalized intersection is seen as an
agent in a stochastic game whose purpose is to optimize the flow of vehicles in
its vicinity. In this setting, the systems evolves towards an equilibrium among
the agents that shows beneficial for the whole traffic network. A recently
developed multi-agent variant of the well-established advantage actor-critic
(A2C) algorithm, called MA2C (multi-agent A2C) exploits the promising idea of
some communication among the agents. In this view,the agents share their
strategies with other neighbor agents, thereby stabilizing the learning process
even when the agents grow in number and variety. We experimented MA2C in two
traffic networks located in Bologna (Italy) and found that its action
translates into a significant decrease of the amount of pollutants released
into the environment.
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