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http://dx.doi.org/10.9723/jksiis.2021.26.5.004

Customized Model of Cold Chain Logistics Considering Hypergeometric Distribution  

Chen, Xing (호남대학교 경영학과)
Chuluunsukh, Anudari (조선대학교 경영학과)
Jang, Jun-Ho (호남대학교 경영학과)
Publication Information
Journal of Korea Society of Industrial Information Systems / v.26, no.5, 2021 , pp. 37-54 More about this Journal
Abstract
In this study, a customized model (CM) for the efficient operation of cold chain logistics considering the hypergeometric distribution is proposed. The CM focuses on the segmentation market of ready-to-eat foods and juices made from fresh materials. Companies should determine the amount of production by predicting consumer preferences and quantity to ensure high-efficiency production. The CM is represented as a mathematical formulation and implemented using the genetic algorithm (GA). Addition, the relative weights of CM are calculated. Further, the calculated weights are applied to the GA. In the numerical experiment, hypergeometric distribution is used to calculate the relative weights between the range of production quantities and the customized amount. Experiment results are the values of relative weights and the comparison results by average values of handling cost, total cost and CPU time. Finally, the significance of this study is summarized and a future research direction is remarked in conclusion.
Keywords
Customized; Cold chain logistics; Hypergeometric distribution; Genetic algorithm;
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