用遗传算法求解多类交通分配问题

Guoqiang Zhang, Jun Chen
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引用次数: 10

摘要

多类流量分配问题是经典静态用户均衡流量分配问题的扩展。它提供了对流量模式和趋势的更正确和详细的描述。多类交通分配问题通常由非单调代价算子定义,由于模型的复杂性,无法保证可行解的唯一性和稳定性,传统的非线性优化算法失效。针对多类交通分配问题的数学特点,采用遗传算法进行求解。为保证算法的高效性,对交叉、突变等遗传算子进行了具体设计,如式11、12、13所示,满足式5所示的约束条件。以一个测试路网为例,如图1所示,新的遗传算法被证明是非常有效的。
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Solving multi-class traffic assignment problem with genetic algorithm
Multi-class traffic assignment problem is an extension of the classic static traffic assignment problem with user equilibrium. It provides a more correct and detailed description of traffic patterns and trends. Because of the complexity of the models for multi-class traffic assignment problem, which are usually defined by a non-monotonic cost operator, neither the uniqueness nor the stability of a feasible solution can be guaranteed and the traditional nonlinear optimization algorithms are therefore invalid. Based upon the mathematic characteristics of multiclass traffic assignment problem, genetic algorithm has been adopted for its solution. To ensue efficiency of the algorithm, the genetic operators such as crossover and mutation were designed specifically, as expressed by Equation 11, 12 and 13, so that constrains expressed by Equation 5 can be satisfied. With a test road network as an example, as shown in Figure 1, the new genetic algorithm has been proved to be very effective.
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