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Adopting co-evolution and constraint-satisfaction concept on genetic algorithms to solve supply chain network design problems

机译:在遗传算法中采用协同进化和约束满足的概念来解决供应链网络设计问题

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With the rapid globalization of markets, integrating supply chain technology has become increasingly complex. That is, most supply chains are no longer limited to a particular region. Because the numbers of branch nodes of supply chains have increased, products and raw materials vary and resource constraints differ. Thus, integrating planning mechanisms should include the capacity to respond to change. In the past, mathematical programming and a general heuristics algorithm were used to solve globalized supply chain network design problems. When mathematical programming is used to solve a problem and the number of decision variables is too high or constraint conditions are too complex, computation time is long, resulting in low efficiency, and can easily become trapped in partial optimum solution. When a general heuristics algorithm is used and the number of variables and constraints is too high, the degree of complexity increases. This usually results in an inability of people to think about resource constraints of enterprises and obtain an optimum solution.rnTherefore, this study uses genetic algorithms with optimum search features. This work combines the co-evolutionary mode, which is in accordance with various criteria and evolves dynamically, and constraint-satisfaction mode capacity to narrow the search space, which helps in finding rapidly a solution that, solves supply chain integration network design problems. Additionally, via mathematical programming, a simple genetic algorithm, co-evolutionary genetic algorithm, constraint-satisfaction genetic algorithm and co-evolutionary constraint genetic algorithm are used to compare the experiments result and processing time to confirm the performance of the proposed method.
机译:随着市场的迅速全球化,集成供应链技术变得越来越复杂。即,大多数供应链不再局限于特定区域。由于供应链的分支节点数量增加,因此产品和原材料有所不同,资源限制也有所不同。因此,整合计划机制应包括应对变化的能力。过去,数学编程和通用启发式算法用于解决全球化的供应链网络设计问题。当使用数学编程来解决问题并且决策变量的数量过多或约束条件过于复杂时,计算时间较长,导致效率低下,并且很容易陷入局部最优解中。当使用通用启发式算法并且变量和约束的数量太高时,复杂度增加。这通常导致人们无法考虑企业的资源约束并无法获得最佳解决方案。因此,本研究使用具有最佳搜索功能的遗传算法。这项工作结合了符合各种条件并动态发展的协同进化模式和约束满足模式的能力以缩小搜索空间,从而有助于快速找到解决供应链集成网络设计问题的解决方案。另外,通过数学编程,使用简单的遗传算法,协同进化遗传算法,约束满足遗传算法和协同进化约束遗传算法对实验结果和处理时间进行比较,以验证该方法的性能。

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