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Improved Self Adaptive Genetic Algorithm and Its Application on the Dynamic Stochastic Shortest Path Problem

机译:改进的自适应遗传算法及其对动态随机最短路径问题的应用

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In reality transportation network is dynamic and stochastic. Studies on the dynamic stochastic shortest path problem are of great research and application value. This paper introduces basic genetic algorithm into it. Then an improved self adaptive genetic algorithm is proposed by improving population initialization, selection strategy, crossover strategy and mutation strategy. In addition, the improved genetic algorithm adjusts the crossover and mutation factors adaptively. The results of simulation experiment show that the improved genetic algorithm proposed by this paper has much higher capacity of global optimization than Dijkstra and A* algorithm in the dynamic stochastic shortest path problem.
机译:在现实运输网络中是动态和随机的。关于动态随机最短路径问题的研究具有很大的研究和应用价值。本文介绍了基本的遗传算法。然后通过改善人口初始化,选择策略,交叉策略和突变策略来提出改进的自适应遗传算法。此外,改进的遗传算法适用于交叉和突变因素。仿真实验结果表明,本文提出的改进的遗传算法在动态随机最短路径问题中的全局优化容量比DIJKSTRA和A *算法更高。

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