4.7 Article

Bi-objective intelligent water drops algorithm to a practical multi-echelon supply chain optimization problem

期刊

JOURNAL OF MANUFACTURING SYSTEMS
卷 44, 期 -, 页码 93-114

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ELSEVIER SCI LTD
DOI: 10.1016/j.jmsy.2017.05.004

关键词

Intelligent water drops (IWD) algorithm; Reference-point based non-dominated sorting genetic algorithm (NSGA-III); Supply chain management (SCM); Third party logistics provider (3PL); Industrial cluster (IC)

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Industrial Clusters (ICs) are defined as geographically adjacent interconnected companies working together within the same commercial section which enjoy unusual competitive success in their field. The relationships between Supply Chain Management (SCM) and ICs have been imperfectly mathematically investigated, in spite of their intrinsic correlation. To bridge this gap, a bi-objective multi-echelon supply distribution model is firstly proposed in this paper to optimize collaborations of different echelons. The considered problem is then solved using a recently introduced metaheuristic algorithm, the intelligent water drops (IWD) algorithm in terms of a multi -objective approach. The IWD is then compared with two well-known algorithms, reference-point based non-dominated sorting genetic algorithm (NSGA-III) and non-dominated ranking genetic algorithm (NRGA). The two considered objectives are 1) minimizing the total incurred logistics costs, and 2) maximizing the service level of customers. The small-and-medium sized enterprises (SMEs) positioned in IC as manufacturers profit from using a 3PL-managed supply demand hub in industrial cluster (SDHIC) as a public provider of warehousing and logistics services. The validity of the proposed approach is illustrated through experimental results including comprehensive statistical analysis on the three used measurement metrics. (C) 2017 The Society of Manufacturing Engineers. Published by Elsevier Ltd. All rights reserved.

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