Traffic Flow Simulation for Autonomous Driving
Junfeng Li, Changqing Yan

TL;DR
This paper presents a traffic simulation environment for autonomous vehicles using cellular automata and bicycle intelligence theory, aiding testing and development of autonomous driving systems.
Contribution
It develops a micro-traffic flow simulation model incorporating vehicle perception, decision, and control systems for autonomous driving environments.
Findings
Built a simulation environment based on cellular automata and bicycle intelligence.
Simulated autonomous vehicle behaviors and traffic flow dynamics.
Provided a platform for testing autonomous driving algorithms.
Abstract
A traffic system is a random and complex large system, which is difficult to conduct repeated modelling and control research in a real traffic environment. With the development of automatic driving technology, the requirements for testing and evaluating the development of automatic driving technology are getting higher and higher, so the application of computer technology for traffic simulation has become a very effective technical means. Based on the micro-traffic flow modelling, this paper adopts the vehicle motion model based on cellular automata and the theory of bicycle intelligence to build the simulation environment of autonomous vehicle flow. The architecture of autonomous vehicles is generally divided into a perception system, decision system and control system. The perception system is generally divided into many subsystems, responsible for autonomous vehicle positioning,…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Simulation and Modeling Applications · Traffic control and management
