设施选址模型在预拌混凝土厂设置中的应用——以泰国罗勇省为例

S. Doungpan
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引用次数: 2

摘要

泰国的经济增长发生在许多领域,有基础设施和大型项目是由政府和私营部门生产的。虽然,建筑工程倾向于使用预拌混凝土进行主体结构工作。但预拌混凝土厂的设施位置存在于该地区,不适合在需求点响应服务。然而,由于没有一个很好的计划来建立预拌混凝土工厂设施,这对业务造成了损害。本文的目标是找到预拌混凝土厂的最少数量,并可以适当地选择覆盖所有预期需求节点的设施位置。本文所采用的寻址方法是混合整数规划与集合覆盖问题(LSCP)方法的优化建模。此外,我们将这一问题应用于泰国罗勇省,作为我们研究的案例。结果表明,在孟罗勇区和克昂区设置预拌混凝土厂,可以充分满足整个罗勇省的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application the Facility Location Model for Setting Ready-Mix Concrete Plant: Case Study at Rayong Province, Thailand
The economic growth in Thailand has occurred in many areas, there are the infrastructure and megaprojects are produced by the government and the private sector. Although, the construction project favors to use the ready-mixed concrete for main structures work. But the facility's location of the ready-mix concrete plant exists in the area is not suitably distributed for responding service at the demand point. However, it caused damage to the business because there was not a good plan for setting up the ready- mixed concrete plant facilities. The objective of this paper is to find the least number of the ready-mix concrete plant and it can be suitably the facility location that covers all expected demand nodes. The method used for searching locations of this work is the optimization modeling by using mixed integer programming with a set covering problem (LSCP) approach. Besides, we applicated this problem in Rayong province, Thailand, which is cased our study. The results indicate that setting ready-mix concrete plants at Mueang Rayong district and Klaeng district can sufficiently service the whole Rayong province.
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