Using Particle Swarm Optimization to Learn a Lane Change Model for Autonomous Vehicle Merging

Na'Shea Wiesner, John W. Sheppard, B. Haberman
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引用次数: 2

Abstract

This paper presents the results of experiments applying a Particle Swarm Optimization (PSO) approach to lane changing for autonomous vehicles. The lane change model proposed is rule-based, where PSO learns the parameters of the rules. A study was conducted to compare the proposed lane change model to the existing lane change model in the microscopic simulator, SUMO. Experiments performed include simulating vehicles using the Krauss car-following model with the SUMO lane change model, with the proposed PSO lane change model, and with all lane changing decisions turned off. The latter case, where merges are replaced by vehicle reset, serves as a baseline for missed merge opportunities. The objective was to develop an adaptive approach to improve merge efficiency as an example of lane changing behavior. Varying vehicle densities and levels of congestion on the merge lane and through-lane were tested. Empirical results show the proposed lane change model is able to learn merging strategies with minimal collisions and is comparable to the SUMO lane change model in some scenarios. Further investigation is needed to improve performance and safety, but initial results show promise for the proposed PSO-based approach to autonomous lane changing.
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基于粒子群算法的自动驾驶车辆归并变道模型研究
本文介绍了将粒子群优化方法应用于自动驾驶汽车变道的实验结果。提出的变道模型是基于规则的,粒子群算法学习规则的参数。在微观仿真器SUMO中,将本文提出的变道模型与现有变道模型进行了比较研究。进行的实验包括使用Krauss汽车跟随模型与SUMO变道模型、建议的PSO变道模型以及关闭所有变道决策来模拟车辆。后一种情况下,合并被车辆重置所取代,作为错过合并机会的基线。目标是开发一种自适应方法来提高合并效率,作为变道行为的一个例子。测试了合并车道和直通车道上不同的车辆密度和拥堵程度。实验结果表明,所提出的变道模型能够以最小的碰撞学习合并策略,在某些情况下与SUMO变道模型相当。需要进一步的研究来提高性能和安全性,但初步结果表明,基于pso的自动变道方法是有希望的。
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