前言

IF 3 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
M. Gen, G. Suer, Fulya Altiparmak, A. Grilo, YoungSu Yun
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In the first contribution ‘Applying GA-VNS Approach to Supply Chain Network Model with Facility and Route Disruptions,’ by Anudari, Yun, and Gen introduced a supply chain network (SCN) model which simultaneously considers the disruption risks of facility and route. As most of conventional studies have focused either on facility disruption solely or on route disruption solely, simultaneously considering the disruption risks of facility and route in the SCN model can reinforce the efficiency and stability for its implementation. For solving the SCN model, they proposed a GA-VNS approach which combines genetic algorithm (GA) with variable neighborhood search (VNS), as one of hybrid meta-heuristics approaches. The performance of the proposed GA-VNS approach was compared with those of some conventional single and hybrid meta-heuristic approaches, and the experimental results shown that the former outperforms the latter. In the second contribution ‘Edge Boundary Variable Neighborhood Strategy Adaptive Search for a Vegetable Crop Land Allocation Problem,’ by Nitisiria, Sethanana, Pitakaso, and Gen introduced a meta-heuristic approach to optimize crop land allocation for planting vegetables. For the meta-heuristic approach, edge boundary variable neighborhood strategy adaptive search (EB-VaNSAS) was applied to significantly improve the solution quality of the traditional variable neighborhood strategy. The numerical results shown that the proposed EBVaNSAS outperforms competing methods. In the third contribution ‘Multi-criteria decision-making methods for the evaluation of a real-green supply chain in companies with fast-moving consumer goods,’ by Rastpour, Kayvanfar, and Rafiee proposed a green supply chain management (GSCM) model to assess and compare the greenness of Iran’s industry. A step by step analysis using fuzzy Delphi method, fuzzy DEMATEL method, and weighted aggregated sum product assessment method were conducted and through real-case study in Iran’s industry, the importance of GSCM implementation was emphasized. In the fourth contribution ‘Multi-Objective Grouping Genetic Algorithm for the Joint Order Batching, Batch Assignment, and Sequencing Problem,’ by Cano, Cortes, Campo, Correa-Espinal” by Cano, Cortes, Campo, CorreaEspinal developed a multi-objective grouping genetic algorithm (GGA) to minimize total travel time and total tardiness by implementing an encoding scheme. Computer simulations showed that the proposed algorithm performs 25.4% better than a first come, first served (FCFS) rule-based heuristic and 10.2% better than an earliest due date (EDD) rule–based heuristic. In the fifth contribution ‘Green supply chain management framework for supplier selection: an integrated multi-criteria decision-making approach,’ by Ghosh, Mandal and Ray proposed a GSCM framework to evaluate three supplier organizations (service organization, manufacturing organization, and process organization). Using six important criteria including environmental, economic, and operational aspects of sustainability, a MCDM approach was implemented for evaluating the three supplier organizations. Experimental results showed that (i) the manufacturing organization is the benchmark organization and its strategies can guide other organizations to enhance their performances, and (ii) three parameters (total energy consumption, total scrap material generation, and renewable energy utilization) are the influential parameters that should predominantly be considered for green supplier selection. In the sixth contribution ‘A dynamic multi-objective green supply chain network design for perishable products in uncertain environments, the coffee industry case study’ by Torabzadeh, Nejati, Aghsami, Rabbani developed a mathematical model for the location-allocation-inventory problem based on a real-case study to design a three-echelon coffee supply chain network. Minimizing the CO2 emission was also considered to address the increasing eco-friendly challenges. The problem includes various strategic and tactical decisions. The problem’s parameters are considered","PeriodicalId":46578,"journal":{"name":"International Journal of Management Science and Engineering Management","volume":null,"pages":null},"PeriodicalIF":3.0000,"publicationDate":"2022-07-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Preface\",\"authors\":\"M. Gen, G. Suer, Fulya Altiparmak, A. 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In the second contribution ‘Edge Boundary Variable Neighborhood Strategy Adaptive Search for a Vegetable Crop Land Allocation Problem,’ by Nitisiria, Sethanana, Pitakaso, and Gen introduced a meta-heuristic approach to optimize crop land allocation for planting vegetables. For the meta-heuristic approach, edge boundary variable neighborhood strategy adaptive search (EB-VaNSAS) was applied to significantly improve the solution quality of the traditional variable neighborhood strategy. The numerical results shown that the proposed EBVaNSAS outperforms competing methods. In the third contribution ‘Multi-criteria decision-making methods for the evaluation of a real-green supply chain in companies with fast-moving consumer goods,’ by Rastpour, Kayvanfar, and Rafiee proposed a green supply chain management (GSCM) model to assess and compare the greenness of Iran’s industry. A step by step analysis using fuzzy Delphi method, fuzzy DEMATEL method, and weighted aggregated sum product assessment method were conducted and through real-case study in Iran’s industry, the importance of GSCM implementation was emphasized. In the fourth contribution ‘Multi-Objective Grouping Genetic Algorithm for the Joint Order Batching, Batch Assignment, and Sequencing Problem,’ by Cano, Cortes, Campo, Correa-Espinal” by Cano, Cortes, Campo, CorreaEspinal developed a multi-objective grouping genetic algorithm (GGA) to minimize total travel time and total tardiness by implementing an encoding scheme. Computer simulations showed that the proposed algorithm performs 25.4% better than a first come, first served (FCFS) rule-based heuristic and 10.2% better than an earliest due date (EDD) rule–based heuristic. In the fifth contribution ‘Green supply chain management framework for supplier selection: an integrated multi-criteria decision-making approach,’ by Ghosh, Mandal and Ray proposed a GSCM framework to evaluate three supplier organizations (service organization, manufacturing organization, and process organization). Using six important criteria including environmental, economic, and operational aspects of sustainability, a MCDM approach was implemented for evaluating the three supplier organizations. Experimental results showed that (i) the manufacturing organization is the benchmark organization and its strategies can guide other organizations to enhance their performances, and (ii) three parameters (total energy consumption, total scrap material generation, and renewable energy utilization) are the influential parameters that should predominantly be considered for green supplier selection. 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引用次数: 0

摘要

目前,大多数跨国企业都面临着物流系统可持续发展的问题,以满足或超越客户的期望。可持续发展吸引了研究人员和行业从业者,他们专注于物流系统的设计和实施。基于人工智能的元启发式方法已经成为一种能够快速为精确优化无法解决的问题提供最优或接近最优解决方案的方法。各种基于人工智能的元启发式方法的最新进展可以解决各种复杂的物流和供应链问题类型。在本期特刊中,介绍并分析了使用基于人工智能的元启发式方法的可持续物流系统的最新趋势和研究。在Anudari、Yun和Gen的第一篇文章“将GA-VNS方法应用于设施和路线中断的供应链网络模型”中,介绍了一种供应链网络(SCN)模型,该模型同时考虑了设施和路线的中断风险。由于大多数传统研究要么只关注设施中断,要么只关注路线中断,因此在SCN模型中同时考虑设施和路线的中断风险可以提高其实施的效率和稳定性。为了求解SCN模型,他们提出了一种将遗传算法(GA)与可变邻域搜索(VNS)相结合的GA-VNS方法,作为混合元启发式方法之一。将所提出的GA-VNS方法与一些传统的单一和混合元启发式方法的性能进行了比较,实验结果表明前者优于后者。在Nitisiria、Sethanana、Pitakaso和Gen的第二篇文章“蔬菜作物土地分配问题的边缘边界可变邻域策略自适应搜索”中,介绍了一种元启发式方法来优化种植蔬菜的作物土地分配。在元启发式方法中,应用边缘边界变邻域策略自适应搜索(EB VaNSAS)显著提高了传统变邻域策略的求解质量。数值结果表明,所提出的EBVaNSAS方法优于竞争方法。在Rastpour、Kayvanfar和Rafiee的第三篇文章“快速消费品公司真正绿色供应链评估的多标准决策方法”中,提出了一个绿色供应链管理(GSCM)模型来评估和比较伊朗工业的绿色性。采用模糊德尔菲法、模糊DEMATEL法和加权总和产品评估法进行了逐步分析,并通过伊朗工业的实际案例研究,强调了实施GSCM的重要性。在Cano,Cortes,Campo,Correa-Espinal的第四篇文章“联合订单批处理、批次分配和排序问题的多目标分组遗传算法”中,Cano,Coltes,Campo和Correa-Espinal开发了一种多目标分组基因算法(GGA),通过实施编码方案来最小化总行程时间和总延误。计算机模拟表明,所提出的算法比基于先到先得(FCFS)规则的启发式算法好25.4%,比基于最早到期日(EDD)规则的启发算法好10.2%。在Ghosh、Mandal和Ray的第五篇文章“供应商选择的绿色供应链管理框架:一种集成的多标准决策方法”中,提出了一个GSCM框架来评估三个供应商组织(服务组织、制造组织和工艺组织)。利用可持续性的环境、经济和运营方面等六个重要标准,实施了MCDM方法来评估三个供应商组织。实验结果表明:(i)制造组织是基准组织,其策略可以指导其他组织提高其绩效;(ii)三个参数(总能耗、总废料产生量和可再生能源利用率)是绿色供应商选择应主要考虑的影响参数。在Torabzadeh、Nejati、Aghsami和Rabbani的第六篇文章“不确定环境中易腐产品的动态多目标绿色供应链网络设计,咖啡行业案例研究”中,基于实际案例研究开发了位置分配库存问题的数学模型,设计了一个三级咖啡供应链网络。还考虑将二氧化碳排放量降至最低,以应对日益严重的环保挑战。这个问题包括各种战略和战术决策。考虑了问题的参数
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preface
Nowadays, most of multinational enterprises faces the issues of sustainable development for their logistics systems in order to meet or exceed customer expectations. Sustainable development attracts both researchers and industrial practitioners who are focused on the design and implementation of logistics system. AI-based meta-heuristics approaches has emerged as a capable method for quickly providing optimal or near-optimal solutions for the problems that exact optimization cannot solve. Recent advances in various AI-based meta-heuristics approaches can resolve various and complex logistics and supply chain problem types. In this special issue, recent trends and studies of sustainable logistics systems using AI-based meta-heuristics approaches have been introduced and analyzed. In the first contribution ‘Applying GA-VNS Approach to Supply Chain Network Model with Facility and Route Disruptions,’ by Anudari, Yun, and Gen introduced a supply chain network (SCN) model which simultaneously considers the disruption risks of facility and route. As most of conventional studies have focused either on facility disruption solely or on route disruption solely, simultaneously considering the disruption risks of facility and route in the SCN model can reinforce the efficiency and stability for its implementation. For solving the SCN model, they proposed a GA-VNS approach which combines genetic algorithm (GA) with variable neighborhood search (VNS), as one of hybrid meta-heuristics approaches. The performance of the proposed GA-VNS approach was compared with those of some conventional single and hybrid meta-heuristic approaches, and the experimental results shown that the former outperforms the latter. In the second contribution ‘Edge Boundary Variable Neighborhood Strategy Adaptive Search for a Vegetable Crop Land Allocation Problem,’ by Nitisiria, Sethanana, Pitakaso, and Gen introduced a meta-heuristic approach to optimize crop land allocation for planting vegetables. For the meta-heuristic approach, edge boundary variable neighborhood strategy adaptive search (EB-VaNSAS) was applied to significantly improve the solution quality of the traditional variable neighborhood strategy. The numerical results shown that the proposed EBVaNSAS outperforms competing methods. In the third contribution ‘Multi-criteria decision-making methods for the evaluation of a real-green supply chain in companies with fast-moving consumer goods,’ by Rastpour, Kayvanfar, and Rafiee proposed a green supply chain management (GSCM) model to assess and compare the greenness of Iran’s industry. A step by step analysis using fuzzy Delphi method, fuzzy DEMATEL method, and weighted aggregated sum product assessment method were conducted and through real-case study in Iran’s industry, the importance of GSCM implementation was emphasized. In the fourth contribution ‘Multi-Objective Grouping Genetic Algorithm for the Joint Order Batching, Batch Assignment, and Sequencing Problem,’ by Cano, Cortes, Campo, Correa-Espinal” by Cano, Cortes, Campo, CorreaEspinal developed a multi-objective grouping genetic algorithm (GGA) to minimize total travel time and total tardiness by implementing an encoding scheme. Computer simulations showed that the proposed algorithm performs 25.4% better than a first come, first served (FCFS) rule-based heuristic and 10.2% better than an earliest due date (EDD) rule–based heuristic. In the fifth contribution ‘Green supply chain management framework for supplier selection: an integrated multi-criteria decision-making approach,’ by Ghosh, Mandal and Ray proposed a GSCM framework to evaluate three supplier organizations (service organization, manufacturing organization, and process organization). Using six important criteria including environmental, economic, and operational aspects of sustainability, a MCDM approach was implemented for evaluating the three supplier organizations. Experimental results showed that (i) the manufacturing organization is the benchmark organization and its strategies can guide other organizations to enhance their performances, and (ii) three parameters (total energy consumption, total scrap material generation, and renewable energy utilization) are the influential parameters that should predominantly be considered for green supplier selection. In the sixth contribution ‘A dynamic multi-objective green supply chain network design for perishable products in uncertain environments, the coffee industry case study’ by Torabzadeh, Nejati, Aghsami, Rabbani developed a mathematical model for the location-allocation-inventory problem based on a real-case study to design a three-echelon coffee supply chain network. Minimizing the CO2 emission was also considered to address the increasing eco-friendly challenges. The problem includes various strategic and tactical decisions. The problem’s parameters are considered
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来源期刊
CiteScore
8.50
自引率
33.30%
发文量
40
期刊介绍: International Journal of Management Science and Engineering Management (IJMSEM) is a peer-reviewed quarterly journal that provides an international forum for researchers and practitioners of management science and engineering management. The journal focuses on identifying problems in the field, and using innovative management theories and new management methods to provide solutions. IJMSEM is committed to providing a platform for researchers and practitioners of management science and engineering management to share experiences and communicate ideas. Articles published in IJMSEM contain fresh information and approaches. They provide key information that will contribute to new scientific inquiries and improve competency, efficiency, and productivity in the field. IJMSEM focuses on the following: 1. identifying Management Science problems in engineering; 2. using management theory and methods to solve above problems innovatively and effectively; 3. developing new management theory and method to the newly emerged management issues in engineering; IJMSEM prefers papers with practical background, clear problem description, understandable physical and mathematical model, physical model with practical significance and theoretical framework, operable algorithm and successful practical applications. IJMSEM also takes into account management papers of original contributions in one or several aspects of these elements.
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