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首页> 外文期刊>Neural processing letters >SALA: A Self-Adaptive Learning Algorithm-Towards Efficient Dynamic Route Guidance in Urban Traffic Networks
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SALA: A Self-Adaptive Learning Algorithm-Towards Efficient Dynamic Route Guidance in Urban Traffic Networks

机译:SALA:一种面向城市交通网络的高效动态路径引导的自适应学习算法

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摘要

In order to alleviate traffic congestion for vehicles in urban networks, most of current researches mainly focused on signal optimization models and traffic assignment models, or tried to recognize the interaction between signal control and traffic assignment. However, these methods may not be able to provide fast and accurate route guidance due to the lack of individual traffic demands, real-time traffic data and dynamic cooperation between vehicles. To solve these problems, this paper proposes a dynamic and real-time route selection model in urban traffic networks ((DRSM)-S-2), which can supply a more accurate and personalized strategy for vehicles in urban traffic networks. Combining the preference for alternative routes with real-time traffic conditions, each vehicle in urban traffic networks updates its route selection before going through each intersection. Based on its historical experiences and estimation about route choices of the other vehicles, each vehicle uses a self-adaptive learning algorithm to play congestion game with each other to reach Nash equilibrium. In the route selection process, each vehicle selects the user-optimal route, which can maximize the utility of each driving vehicle. The results of the experiments on both synthetic and real-world road networks show that compared with non-cooperative route selection algorithms and three state-of-the-art equilibrium algorithms, (DRSM)-S-2 can effectively reduce the average traveling time in the dynamic and uncertain urban traffic networks.
机译:为了减轻城市网络中车辆的交通拥堵,当前的大多数研究主要集中在信号优化模型和交通分配模型上,或者试图识别信号控制与交通分配之间的相互作用。但是,由于缺乏个人交通需求,实时交通数据以及车辆之间的动态协作,这些方法可能无法提供快速,准确的路线引导。为了解决这些问题,本文提出了一种城市交通网络中的动态实时路线选择模型((DRSM)-S-2),该模型可以为城市交通网络中的车辆提供更准确和个性化的策略。将替代路线的偏好与实时交通条件结合起来,城市交通网络中的每辆车在通过每个十字路口之前都会更新其路线选择。根据其历史经验和对其他车辆的路线选择的估计,每辆车都使用自适应学习算法彼此进行拥塞游戏,以达到纳什均衡。在路线选择过程中,每辆车都会选择用户最佳路线,这可以使每辆驾驶车辆的效用最大化。在合成和现实世界路网上的实验结果表明,与非合作式路线选择算法和三种最新的平衡算法相比,(DRSM)-S-2可以有效地减少平均行驶时间在动态和不确定的城市交通网络中。

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