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Transit network design by Bee Colony Optimization

机译:Bee Colony Optimization的公交网络设计

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摘要

The transit network design problem is one of the most significant problems faced by transit operators and city authorities in the world. This transportation planning problem belongs to the class of difficult combinatorial optimization problem, whose optimal solution is difficult to discover. The paper develops a Swarm Intelligence (SI) based model for the transit network design problem. When designing the transit network, we try to maximize the number of satisfied passengers, to minimize the total number of transfers, and to minimize the total travel time of all served passengers. Our approach to the transit network design problem is based on the Bee Colony Optimization (BCO) metaheuristics. The BCO algorithm is a stochastic, random-search technique that belongs to the class of population-based algorithms. This technique uses a similarity among the way in which bees in nature look for food, and the way in which optimization algorithms search for an optimum of a combinatorial optimization problem. The numerical experiments are performed on known benchmark problems. We clearly show that our approach, based on the BCO algorithm, is competitive with other approaches in the literature, and it can generate high-quality solutions.
机译:公交网络设计问题是全球公交运营商和城市当局面临的最重大问题之一。该运输计划问题属于难于组合优化的问题,其最优解难以发现。本文针对交通网络设计问题,开发了一种基于群体智能(SI)的模型。在设计公交网络时,我们尝试使满意的乘客数量最大化,使转乘总数最少,并使所有在职乘客的总出行时间最少。我们针对公交网络设计问题的方法是基于Bee Colony Optimization(BCO)元启发式方法的。 BCO算法是一种随机的随机搜索技术,属于基于种群的算法类别。该技术在自然界中的蜜蜂寻找食物的方式与优化算法搜索组合优化问题的最优方式之间使用了相似性。在已知的基准问题上进行了数值实验。我们清楚地表明,基于BCO算法的方法与文献中的其他方法相比具有竞争优势,并且可以生成高质量的解决方案。

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