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A Hybrid Genetic and Ant Colony Algorithm for Finding the Shortest Path in Dynamic Traffic Networks

机译:一种混合遗传遗传和蚁群算法,用于在动态交通网络中找到最短路径

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Abstract Solving the dynamic shortest path problem has become important in the development of intelligent transportation systems due to the increasing use of this technology in supplying accurate traffic information. This paper focuses on the problem of finding the dynamic shortest path from a single source to a destination in a given traffic network. The goal of our studies is to develop an algorithm to optimize the journey time for the traveler when traffic conditions are in a state of dynamic change. In this paper, the models of the dynamic traffic network and the dynamic shortest path were investigated. A novel dynamic shortest path algorithm based on hybridizing genetic and ant colony algorithms was developed, and some improvements in the algorithm were made according to the nature of the dynamic traffic network. The performance of the hybrid algorithm was demonstrated through an experiment on a real traffic network. The experimental results proved that the algorithm proposed in this paper could effectively find the optimum path in a dynamic traffic network. This algorithm may be useful for vehicle navigation in intelligent transportation systems.
机译:摘要解决动态最短路径问题在智能运输系统的发展中是重要的,因为这种技术在提供准确的交通信息时越来越多地使用。本文重点介绍在给定业务网络中从单个源找到动态最短路径的问题。我们的研究的目标是开发一种算法,以便在交通状况处于动态变化状态时优化旅行者的旅程时间。本文研究了动态业务网络和动态最短路径的模型。开发了一种基于杂交遗传和蚁群算法的新型动态最短路径算法,并根据动态交通网络的性质进行了算法的一些改进。通过实验对真实交通网络的实验进行了说明了混合算法的性能。实验结果证明,本文提出的算法可以有效地找到动态交通网络中的最佳路径。该算法可用于智能运输系统中的车辆导航。

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