Interchange flow control with dynamic obstacles optimized using genetic algorithms—a concept of virtual walls

Pub Date : 2024-04-24 DOI:10.1007/s10015-024-00946-7
Junya Hoshino, Yuki Itoh, Ryuma Saotome, Tomohiro Harada, Kenji Matsuda, Tenta Suzuki, Mao Tobisawa, Kaito Kumagae, Johei Matsuoka, Toshinori Kagawa, Kiyohiko Hattori
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Abstract

In the near future, autonomous vehicles will be able to share information with other vehicles via communication, enabling appropriate traffic control approaches. A new approach to traffic control using fully autonomous driving involves the realization of a flat interchange. Unlike conventional approaches, this study focused on roads and interchanges that do not assume lanes. Specifically, we propose an interchange flow control approach to traffic control using a virtual wall (VW), which acquires and shares the initial position, destination, and speed of all vehicles entering an interchange in a two-dimensional space where vehicles can move freely, and then realizes appropriate control based on this information. Each vehicle individually calculates the shortest path to avoid the VW, thereby realizing a safe and rational path selection. In this study, a genetic algorithm was used to determine the location of the VW. The effectiveness of the proposed method was evaluated using simulations, and the results showed that compared to manual deployment in the roundabout form, the proposed method using VWs reduced the total path length and the number of collisions to zero. In addition, when comparing the case where VWs were deployed in common for all vehicles and the case where VWs were deployed individually for each vehicle, it was shown that the total path length was shorter when individual VWs were deployed.

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利用遗传算法优化带有动态障碍物的互通流量控制--虚拟墙的概念
在不久的将来,自动驾驶车辆将能够通过通信与其他车辆共享信息,从而实现适当的交通管制方法。利用完全自动驾驶技术进行交通控制的新方法包括实现平面交叉。与传统方法不同的是,本研究侧重于不假设车道的道路和互通式立交。具体来说,我们提出了一种使用虚拟墙(VW)进行交通控制的互通式立交流量控制方法,该方法可在车辆可自由移动的二维空间中获取并共享所有进入互通式立交的车辆的初始位置、目的地和速度,然后根据这些信息实现适当的控制。每辆车单独计算避开大众汽车的最短路径,从而实现安全合理的路径选择。本研究采用遗传算法来确定大众汽车的位置。模拟评估了所提方法的有效性,结果表明,与环岛形式下的人工部署相比,使用大众汽车的所提方法将总路径长度和碰撞次数降至零。此外,在比较所有车辆共同部署大众汽车和每辆车单独部署大众汽车的情况时,结果表明,单独部署大众汽车时的总路径长度更短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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