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An improved Ant Colony algorithm for Urban Transit Network Optimization

机译:改进的蚁群算法在城市公交网络优化中的应用

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This paper develops an improved Ant Colony Optimization (IACO) algorithm to solve Urban Transit Network Optimization (UTNO) which is a typical nonlinear combinatorial optimization problem. An innovative concept of stagnation counter is used to determine the stages of the IACO. Extra pheromone intensity will be reinforced for the newly discovered path. To trade off between exploration and exploitation, a dynamic parameter setting method is also presented in this paper. It is verified that the solution quality and the convergence speed of our IACO have been improved significantly. A candidate node list for each city and a penalty mechanism for the dead ant are applied in UTNO. The numerical results obtained from a series of benchmark problem instances confirm that our IACO has achieved good results in direct passenger flow rate, line nonlinear factor and line overlap factor.
机译:本文开发了一种改进的蚁群算法(IACO)来解决城市公交网络优化(UTNO)问题,这是一个典型的非线性组合优化问题。停滞计数器的创新概念用于确定IACO的阶段。新发现的路径将增强额外的信息素强度。为了权衡勘探与开发之间的关系,本文还提出了一种动态参数设置方法。可以证明,我们的IACO的解决方案质量和收敛速度得到了显着提高。 UTNO中应用了每个城市的候选节点列表和死蚂蚁的惩罚机制。从一系列基准问题实例获得的数值结果证实,我们的IACO在直接客流率,线路非线性因子和线路重叠因子方面取得了良好的结果。

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