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Traffic network distribution based on distribution center problem and genetic algorithm

机译:基于配送中心问题和遗传算法的交通网络配送

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摘要

The first traffic network distribution based on distribution center problem (TNDBDCP) is put forward, which can not be solved by traditional algorithms. In order to solve TNDBDCP, improved genetic algorithm is put forward based on the idea of global and feasible searching. In the improved genetic algorithm, chromosome is generated to use binary-encoding, and more reasonable fitness function of improved genetic algorithm is designed according to the characteristics of spanning tree and its cotree; in order to ensure the feasibility of chromosome, more succinct check function is introduced to three kinds of genetic operations of improved genetic algorithm (generation of initial population, parental crossover operation and mutation operation); three kinds of methods are used to expand searching scope of algorithm and to ensure optimality of solution, which are as follows: the strategy of preserving superior individuals is adopted, mutation operation is improved in order to enhance the randomness of the operation, crossover rate and mutation rate are further optimized. The validity and correctness of improved genetic algorithm solving MSTLCP are explained by a simulate experiment where improved genetic algorithm is implemented using C programming language. And experimental results are analyzed: selection of population size and iteration times determines the efficiency and precision of the simulate experiment.
机译:提出了基于配送中心问题的第一次交通网络配送(TNDBDCP),这是传统算法无法解决的。为了解决TNDBDCP问题,提出了一种基于全局可行搜索思想的改进遗传算法。在改进的遗传算法中,通过使用二进制编码生成染色体,并根据生成树及其同树的特点设计了更合理的适应性函数。为了保证染色体的可行性,在改进的遗传算法的三种遗传运算中引入了更简洁的检查功能(初始种群的产生,父母交叉运算和变异运算);为了扩大算法的搜索范围并确保求解的最优性,采用了三种方法:采用保优策略,改进变异操作以提高操作的随机性,交叉率和稳定性。突变率得到进一步优化。通过模拟实验说明了改进遗传算法求解MSTLCP的有效性和正确性,在该模拟实验中,使用C编程语言实现了改进遗传算法。并分析了实验结果:种群数量和迭代时间的选择决定了模拟实验的效率和精度。

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