利用演化策略缩短事故应急服务到达时间

Javier Barrachina, Piedad Garrido, Manuel Fogué, F. Martinez, Juan-Carlos Cano, C. Calafate, P. Manzoni
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引用次数: 0

摘要

一个关键的问题,特别是在城市地区,是交通事故的发生,因为它可能会造成交通堵塞。此外,这些交通堵塞会对救援过程产生负面影响,增加了应急服务的到达时间,这可以决定事故中受伤人员的生死差异。在本文中,我们提出了四种不同的方法来解决交通拥堵问题,并对它们进行比较,以获得最佳解决方案。利用V2I通信,我们可以准确估计某一区域的交通密度,这是进行有效的交通重定向的关键参数,从而减少应急服务的到达时间,避免事故发生时的交通堵塞。具体来说,我们提出了两种基于Dijkstra算法的方法和两种基于进化策略的方法。结果表明,基于密度的演化策略系统是所有方案中最优的,因为它提供了最低的应急服务旅行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Evolution Strategies to Reduce Emergency Services Arrival Time in Case of Accident
A critical issue, especially in urban areas, is the occurrence of traffic accidents, since it could generate traffic jams. Additionally, these traffic jams will negatively affect to the rescue process, increasing the emergency services arrival time, which can determine the difference between life or death for injured people involved in the accident. In this paper, we propose four different approaches addressing the traffic congestion problem, comparing them to obtain the best solution. Using V2I communications, we are able to accurately estimate the traffic density in a certain area, which represents a key parameter to perform efficient traffic redirection, thereby reducing the emergency services arrival time, and avoiding traffic jams when an accident occurs. Specifically, we propose two approaches based on the Dijkstra algorithm, and two approaches based on Evolution Strategies. Results indicate that the Density-Based Evolution Strategy system is the best one among all the proposed solutions, since it offers the lowest emergency services travel times.
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