Supply Chain Optimization under Risk and Uncertainty using Nondominated Sorting Genetic Algorithm II for Automobile Industry

IF 0.9 Q4 ENGINEERING, MANUFACTURING Journal of Advanced Manufacturing Systems Pub Date : 2023-04-03 DOI:10.1142/s0219686723500324
Arman Bahari, Sattar Nouri, Behnoosh Moody
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引用次数: 0

Abstract

In recent decades, the use of supply chain management is essential for developing new technologies and setting the ground in expanding major global markets to integrate suppliers, manufacturers, warehouses, and stores effectively. In addition, the growing competition in the modern business environment has created an increasing trend of new products and improved product quality for attracting more consumers. However, an increase in the related costs and uncertainty in these innovations requires the development of algorithms to solve optimization problems. Therefore, this study is aimed to implement a multi-product supply chain including raw material suppliers, factories, distributors, and customers to maximize the quality and minimize costs. To this aim, supplier quality, distribution centers, and manufacturing products were considered for the quality model, while warehousing costs, product production, transportation, defective raw materials, and the like were regarded for the cost model. Then, the NSGAII algorithm was used for solving the created optimization problem, and accordingly, the optimal Pareto points were calculated. Based on the results, the proposed model can give the manufacturer the ability to decide on a multi-product and multi-time supply chain by involving cost and quality variables. Thus, the owner can manage the supply chain of the factory effectively.
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基于非支配排序遗传算法II的汽车行业风险和不确定性下的供应链优化
近几十年来,供应链管理的使用对于开发新技术和为扩大全球主要市场奠定基础至关重要,以有效整合供应商、制造商、仓库和商店。此外,现代商业环境中日益激烈的竞争创造了新产品不断增加的趋势,并提高了产品质量,以吸引更多的消费者。然而,这些创新中相关成本和不确定性的增加需要开发算法来解决优化问题。因此,本研究旨在实现包括原材料供应商、工厂、经销商和客户在内的多产品供应链,以实现质量最大化和成本最小化。为此,质量模型考虑了供应商质量、配送中心和制造产品,而成本模型考虑了仓储成本、产品生产、运输、有缺陷的原材料等。然后,使用NSGAII算法来解决创建的优化问题,并相应地计算最优Pareto点。基于结果,所提出的模型可以让制造商通过涉及成本和质量变量来决定多产品、多时间的供应链。因此,业主可以有效地管理工厂的供应链。
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来源期刊
Journal of Advanced Manufacturing Systems
Journal of Advanced Manufacturing Systems ENGINEERING, MANUFACTURING-
CiteScore
2.90
自引率
14.30%
发文量
32
期刊介绍: Journal of Advanced Manufacturing Systems publishes original papers pertaining to state-of-the-art research and development, product development, process planning, resource planning, applications, and tools in the areas related to advanced manufacturing. The journal addresses: - Manufacturing Systems - Collaborative Design - Collaborative Decision Making - Product Simulation - In-Process Modeling - Resource Planning - Resource Simulation - Tooling Design - Planning and Scheduling - Virtual Reality Technologies and Applications - CAD/CAE/CAM Systems - Networking and Distribution - Supply Chain Management
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