A Genetic Programming System with an Epigenetic Mechanism for Traffic Signal Control

03/09/2019
by   Esteban Ricalde, et al.
0

Traffic congestion is an increasing problem in most cities around the world. It impacts businesses as well as commuters, small cities and large ones in developing as well as developed economies. One approach to decrease urban traffic congestion is to optimize the traffic signal behaviour in order to be adaptive to changes in the traffic conditions. From the perspective of intelligent transportation systems, this optimization problem is called the traffic signal control problem and is considered a large combinatorial problem with high complexity and uncertainty. A novel approach to the traffic signal control problem is proposed in this thesis. The approach includes a new mechanism for Genetic Programming inspired by Epigenetics. Epigenetic mechanisms play an important role in biological processes such as phenotype differentiation, memory consolidation within generations and environmentally induced epigenetic modification of behaviour. These properties lead us to consider the implementation of epigenetic mechanisms as a way to improve the performance of Evolutionary Algorithms in solution to real-world problems with dynamic environmental changes, such as the traffic control signal problem. The epigenetic mechanism proposed was evaluated in four traffic scenarios with different properties and traffic conditions using two microscopic simulators. The results of these experiments indicate that Genetic Programming was able to generate competitive actuated traffic signal controllers for all the scenarios tested. Furthermore, the use of the epigenetic mechanism improved the performance of Genetic Programming in all the scenarios. The evolved controllers adapt to modifications in the traffic density and require less monitoring and less human interaction than other solutions because they dynamically adjust the signal behaviour depending on the local traffic conditions at each intersection.

READ FULL TEXT
research
09/02/2021

A Comparative Study of Algorithms for Intelligent Traffic Signal Control

In this paper, methods have been explored to effectively optimise traffi...
research
09/01/2019

An Open-Source Framework for Adaptive Traffic Signal Control

Sub-optimal control policies in transportation systems negatively impact...
research
03/10/2022

Random Ensemble Reinforcement Learning for Traffic Signal Control

Traffic signal control is a significant part of the construction of inte...
research
12/13/2018

TuSeRACT: Turn-Sample-Based Real-Time Traffic Signal Control

Real-time traffic signal control systems can effectively reduce urban tr...
research
10/02/2022

Economic-Driven Adaptive Traffic Signal Control

With the emerging connected-vehicle technologies and smart roads, the ne...
research
06/11/2019

Traffic signal control optimization under severe incident conditions using Genetic Algorithm

Traffic control optimization is a challenging task for various traffic c...
research
08/01/2021

SignalGP-Lite: Event Driven Genetic Programming Library for Large-Scale Artificial Life Applications

Event-driven genetic programming representations have been shown to outp...

Please sign up or login with your details

Forgot password? Click here to reset