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Transit network design using a genetic algorithm with integrated road network and disaggregated O-D demand data

机译:运输网络设计使用具有集成道路网络的遗传算法和分列的O-F需求数据

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摘要

Evolutionary algorithms have been used extensively over the past 2 decades to provide solutions to the Transit Network Design Problem and the Transit Network and Frequencies Setting Problem. Genetic algorithms in particular have been used to solve the multi-objective problem of minimizing transit users' and operational costs. By finding better routes geometry and frequencies, evolutionary algorithms proposed more efficient networks in a timely manner. However, to the knowledge of the authors, no experimentation included precise and complete pedestrian network data for access, egress and transfer routing. Moreover, the accuracy and representativeness of the transit demand data (Origin Destination matrices) are usually generated from fictitious data or survey data with very low coverage and/or representativity. In this paper, experiments conducted with three medium-sized cities in Quebec demonstrate that performing genetic algorithm optimizations using precise local road network data and representative public transit demand data can generate plausible scenarios that are between 10 and 20% more efficient than existing networks, using the same parameters and similar fleet sizes.
机译:在过去的2年内,进化算法已广泛使用,为运输网络设计问题和运输网络和频率设置问题提供解决方案。特别是遗传算法已被用于解决最小化过境用户和运营成本的多目标问题。通过找到更好的路线几何和频率,进化算法及时提出了更有效的网络。然而,对于作者的知识,没有实验包括准确和完整的步行网络数据,用于访问,出口和传输路由。此外,传输需求数据(原点目的地矩阵)的准确性和代表性通常由虚拟数据或测量数据产生,具有非常低的覆盖和/或表示性。在本文中,用魁北克特三个中型城市进行的实验表明,使用精确的本地道路网络数据和代表公共交通需求数据进行遗传算法优化可以产生比现有网络更有效地在10%至20%之间的合理情景,使用相同的参数和类似的舰队尺寸。

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