Research on Distribution Center Location Based on IGA and Decisions under Electronic Commerce

Ren Chun-yu, Wang Xiaobo
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Abstract

There are many traditional methods solving logistic distribution problem. However, these methods meet with various problems under electronic commerce in varying degree. Therefore, this paper modifies alternative expenses and time-restricting conditions of location model according to the specific feature of model under electronics commerce. Because location model is a NP question, the result can be gotten through heuristic algorithm. Namely, the model can be divided into the feasible sub-question using the filtering condition in first phase. In second phase, because the feasible sub-question can be considered the flexible expenses are imbedded in the objective function of transportation model, improved genetic algorithm can get the satisfied result. Therefore, the study proposes the improved genetic algorithm, which using individual amount control selection game in order to guarantee group diversity, using order cross operator and partial route overturn mutation operator to improve convergent speed of algorithm so as to better solve the inconsistency between diversity and convergent speed. Thus it's difficult to consider all the factors during the course of establishing location model. And it is also difficult to quantify the restricting condition in model. Therefore, it is very necessary to consult the experts' opinions and advices and do some qualitative decisions. Consequently, this study proposes the method combining improved quantitative genetic algorithm and qualitative comprehensive evaluation method and confirms the distribution center location under electronic commerce. Confirm the project aims at realizing scientific decision. According to the result of quantitative calculation and qualitative analysis, this study adopts harmonious analysis method in order to logically make decision of the optimized location project according with electronic commerce and proves the algorithm validity in terms of concrete application examples.
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电子商务下基于IGA与决策的配送中心选址研究
解决物流配送问题的传统方法有很多。然而,这些方法不同程度地遇到了电子商务环境下的各种问题。因此,本文根据电子商务环境下区位模型的具体特点,对区位模型的替代费用和限时条件进行了修正。由于定位模型是一个NP问题,可以通过启发式算法求解。即利用第一阶段的过滤条件将模型划分为可行子问题。在第二阶段,由于考虑了可行性子问题,将柔性费用嵌入到运输模型的目标函数中,改进的遗传算法可以得到满意的结果。因此,本研究提出了改进的遗传算法,利用个体数量控制选择博弈来保证群体的多样性,利用顺序交叉算子和部分路径翻转突变算子来提高算法的收敛速度,从而更好地解决多样性与收敛速度不一致的问题。因此,在建立区位模型的过程中,很难考虑到所有的因素。模型中的约束条件也难以量化。因此,咨询专家的意见和建议,做一些定性的决策是非常必要的。因此,本文提出了改进的定量遗传算法与定性综合评价法相结合的方法,确定了电子商务下的配送中心选址。确定项目旨在实现科学决策。根据定量计算和定性分析的结果,采用和谐分析的方法,对符合电子商务的优化选址方案进行逻辑决策,并通过具体应用实例证明了算法的有效性。
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