基于蚁群算法的公交出行路径查询算法

Wen-yong Li, Xue-wu Chen, Bo Yang
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引用次数: 4

摘要

针对公交乘客出行的特点,提出了一种换乘次数最少的公交出行路径查询算法,该算法基于公交站点查询的蚂蚁算法和Dijkstra算法。该算法利用蚂蚁寻找食物的路径选择特性和刷新公交线路激素强度的原理,实现了公交出行路径选择的优化目标,即换乘次数最少、公交站点最少。应用结果表明,该方法能较好地反映实际情况。
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Bus Travel Transit Path Query Algorithm Based on Ant Algorithm
Considering the character of bus passenger travel, a bus travel transit path query algorithm with the least transfer times was brought out, which was based on ant algorithm and Dijkstra algorithm of bus stops query. Using the path selection character of ant looking for food and the principle of refreshing bus-line’s hormone intensity, the algorithm achieved the optimization goals of bus travel path selection, which were the least transfer times and bus stops. Application results show that this method can reflect the real situation.
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