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A cooperative coevolutionary optimization design of urban transit network and operating frequencies

机译:城市交通网络与运行频率的合作共同优化设计

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The transit network design and frequency setting problem (TNDFSP) is a complex combinatorial optimization problem. Generally, the nature of multiobjective in TNDFSP has not attracted enough attention, and the frequency setting is directly embedded as a subproblem to generate a unique set of frequencies for a given transit network, ignoring trade-off solutions among multiple objectives with different sets of frequencies. In this study, the problem is formulated as a multiobjective model with two conflicting objectives of minimizing passengers' and operators' costs. Moreover, we establish two populations to simultaneously optimize networks and frequencies. Also a cooperative coevolutionary multiobjective evolutionary algorithm (CCMOEA) is developed to collaboratively coevolve these two populations along multiple objectives. Unsatisfied demand is embedded into the individual prioritization process, and infeasible individuals can be retained instead of being replaced arbitrarily, driving the evolution to gradually generate more feasible solutions. The proposed CCMOEA is tested on the well-known Mandl's benchmark. The results show that our algorithm can efficiently produce a comprehensive set of high quality trade-off solutions. These solutions perform well with lower waiting time, competitive in vehicle travel time and number of transfers, resulting in lower user costs than previously published results in the same fleet size. (c) 2020 Elsevier Ltd. All rights reserved.
机译:运输网络设计和频率设置问题(TNDFSP)是一个复杂的组合优化问题。通常,TNDFSP中的多目标的性质尚未引起足够的关注,并且频率设置直接嵌入为子问题,以为给定的传输网络生成一组唯一的频率,忽略具有不同频率的多个目标之间的权衡解决方案。在这项研究中,该问题被制定为一个多目标模型,具有最大限度地减少乘客和运营商的成本的矛盾目标。此外,我们建立了两个群体,同时优化网络和频率。此外,开发了一种合作的共同型多目标进化算法(CCMOEA)以协作沿着多个目标共同共同占用这两个群体。不满意的需求嵌入到个人优先级过程中,可以保留不可行的个体而不是任意更换,驱动进化以逐渐产生更可行的解决方案。拟议的CCMOEA在众所周知的Mandl的基准测试中进行了测试。结果表明,我们的算法可以有效地生产一套全面的高质量权衡解决方案。这些解决方案具有较低的等待时间,车辆行程时间和转移数量竞争,导致用户成本低于同一车队尺寸的先前发布的结果。 (c)2020 elestvier有限公司保留所有权利。

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