用模糊 C-means 法选择仓库位置

M. Ulu
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引用次数: 0

摘要

在物流过程中,选择合适的仓库地点既能降低成本,又能提高效率和客户满意度。然而,仓库位置的选择通常涉及大量不确定因素。本研究探讨了仓库选址过程中的模糊 c-means 方法。它利用模糊逻辑原理,提供了一种可以在不确定和数据不精确的情况下评估仓库位置的方法。在仓库选址等决策过程中,模糊逻辑的灵活性、不确定性和对现实问题的成功适用性非常重要。模糊 C-means 方法是一种聚类算法,用于识别数据集中的组(簇)。这种方法使仓库选址决策更加准确,并得到信息支持。研究结果表明,模糊 C-means 法可以有效地用于仓库选址,而且这种方法为物流管理决策过程增添了价值。这种方法可用于物流规划和仓库地点战略选择的决策过程,同时帮助企业提高竞争优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WAREHOUSE LOCATION SELECTION WITH FUZZY C-MEANS METHOD
Choosing the right warehouse location reduces costs while increasing efficiency and customer satisfaction in logistics processes. However, the choice of warehouse location usually involves a large number of uncertain factors. This study examines the fuzzy c-means method in the warehouse location selection process. Using the principles of fuzzy logic, it offers a methodology that allows the warehouse location to be evaluated with uncertainty and imprecise data. The flexibility, uncertainty, and successful applicability of fuzzy logic to real-world problems are important in decision-making processes such as warehouse location. The fuzzy C-means method is a clustering algorithm used to identify groups (clusters) in the data set. This approach makes decisions regarding warehouse location selection more accurate and supported by information. The results of the study show that the fuzzy C-means method can be used effectively in warehouse location selection and that this approach adds value to the decision processes in logistics management. This methodology can be used in decision-making processes on logistics planning and strategic selection of warehouse locations, while helping businesses increase their competitive advantage.
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