Open Access Article | |
1. |
Decision-making in cross-border e-commerce supply chains and coordination under revenue sharing and deferred payment contracts
, Pages: 1-20 Fuchang Li, Zhe Jiang, Xiaohui Hu, Yadong Du and Yutong Gui PDF (685K) |
Abstract: Deferred payment and revenue-sharing contracts are significantly important for promoting the collaboration and the management of retail export supply chains for cross-border e-commerce. This research addresses the real-world challenges faced by managers in this domain by using a joint optimization model to investigate the best ordering and pricing tactics within cross-border e-commerce retail export supply chains, particularly taking into account export tax rebates and import tariffs. Our findings reveal that while revenue-sharing contracts and deferred payment mechanisms can significantly enhance supply chain profitability, their effectiveness is contingent on variables such as export rebate rates, tariffs, and tariff transfer factors. The practical implications of this study suggest that business administrators should carefully assess these factors when designing contracts to ensure robust supply chain coordination. When traditional contract mechanisms fail, hybrid approaches combining revenue-sharing and deferred payment can offer superior outcomes, thus providing a strategic advantage in volatile markets. These insights are crucial for managers seeking to navigate the complexities of international trade and optimize their supply chain performance. DOI: 10.5267/j.ijiec.2024.12.001 Keywords: Supply chain management, Joint optimization of pricing and inventory, Deferred payment, Revenue sharing, Supply chain coordination | |
Open Access Article | |
2. |
A novel hybrid algorithm of cooperative variable neighborhood search and constraint programming for flexible job shop scheduling problem with sequence dependent setup time
, Pages: 21-36 Yajie Wu, Shiming Yang, Leilei Meng, Weiyao Cheng, Biao Zhang and Peng Duan PDF (685K) |
Abstract: This study focuses on the flexible job shop scheduling problem with sequence-dependent setup times (FJSP-SDST), and the goal is minimizing the makespan. To solve FJSP-SDST, first, we develop a constraint programming (CP) model to obtain optimal solutions. Due to the NP-hardness of FJSP-SDST, a CP assisted meta-heuristic algorithm (C-VNS-CP) is designed to make use of the advantages of both CP model and cooperative variable neighborhood search (C-VNS). The C-VNS-CP algorithm consists of two stages. The first stage involves C-VNS, for which eight neighborhood structures are defined. In the second stage, CP is used to further optimize the good solution obtained from C-VNS. In order to prove the efficiency of the C-VNS algorithm, CP model, and C-VNS-CP algorithm, experiments of 20 instances are conducted. DOI: 10.5267/j.ijiec.2024.11.003 Keywords: Flexible job shop scheduling problem, Sequence dependent setup time, Constraint programming, Variable neighborhood search | |
Open Access Article | |
3. |
A robust single-machine scheduling problem with scenario-dependent processing times and release dates
, Pages: 37-50 Chin-Chia Wu, Juin-Han Chen, Win-Chin Lin, Xingong Zhang, Tao Ren, Zong-Lin Wu and Yu-Hsiang Chung PDF (685K) |
Abstract: Many uncertainties arise during the manufacturing process, such as changes in the working environment, traffic transportation delays, machine breakdowns, and worker performance instabilities. These factors can cause job processing times and ready times to change. In this study, we address a scheduling model for a single machine where both job release dates and processing times are scenario dependent. The objective is to minimize the total completion time across the worst-case scenarios. Even without the uncertainty factor, this problem is NP-hard. To solve it, we derive several properties and a lower bound used in a branch-and-bound method to find an optimal solution. We propose nine heuristics based on a linear combination of scenario-dependent processing times and release times for approximate solutions. Additionally, we offer an iterated greedy population-based algorithm that efficiently solves this problem by taking advantage of the diversity of solutions. We evaluate the performance of the proposed nine heuristics and the iterated greedy population-based algorithm. DOI: 10.5267/j.ijiec.2024.11.002 Keywords: Scheduling, Scenario-dependent, Iterated greedy population-based algorithm, Total completion time | |
Open Access Article | |
4. |
Determining a manufacturing-delivery policy for a multi-item EPQ system with multi-shipment, quality assurance, overtime, postponement, and external source
, Pages: 51-68 Yuan-Shyi Peter Chiu, Victoria Chiu, Tiffany Chiu, Tsu-Ming Yeh and Singa Wang Chiu PDF (685K) |
Abstract: Facing current client expectations for high quality, timely order response, and multiple shipments of various needed merchandise, today’s producers must simultaneously satisfy external requirements and operate internally with minimum overall expenses and capacity constrained. Aiming to help present-day producers achieve the operational goals mentioned above, this work develops a decisional scheme to determine the best manufacturing-delivery policy for a multi-item economic production quantity (EPQ) system with multi-shipment, quality assurance, overtime, postponement, and external source. Combining a production postponement strategy in our multi-item batch fabricating procedures intends to first make all required standard/common parts for various client-needed merchandise and make finished goods in the 2nd phase. Two fabricating-uptime-shortening strategies are adopted: contracting out a proportion of the standard part’s batch and overtime-making of finished goods. We include screening and rework tasks in fabricating procedures to help us remove the identified scraps and correct the repairable faulty items. The quality-assured finished batches are divided into multiple equal-amount shipments transported to meet client requests. The overall manufacturing-transportation relevant expenses, including quality and uptime-expedited costs, are mathematically modeled and minimized using optimization methodology to help derive the best manufacturing-delivery operating policy. Moreover, we offer an illustration to validate the results and our research scheme’s capability numerically. This work mainly contributes to the literature by presenting a practical decision-making model. It enables the producers to expose numerous crucial problem-related managerial insights to facilitate producers in deciding the most appropriate manufacturing-delivery policy to meet clients’ multi-criteria demands. DOI: 10.5267/j.ijiec.2024.11.001 Keywords: Multi-item EPQ system, Manufacturing-delivery policy, Overtime, Postponement, Multi-shipment, Quality assurance, External source | |
Open Access Article | |
5. |
Multi-objective mixed-model assembly line balancing with hierarchical worker assignment: A case study of gear reducer manufacturing operations
, Pages: 69-92 He-Yau Kang, Amy H. I. Lee and Yi-Xuan Su PDF (685K) |
Abstract: Assembly lines, generally speaking, can reduce production costs, shorten cycle times, and achieve higher quality levels. Since the current market is characterized by increasing product variability, mixed-model assembly lines, in which similar product models can be assembled simultaneously, are more suitable to respond to varied market demands than traditional single-model assembly lines. In addition, in an assembly line, tasks often differ in processing requirements, and workers may have different qualification levels. This study, therefore, aims to construct models for the multi-objective mixed-model assembly line balancing problem with hierarchical worker assignment (MO-MALBP-HW). The goal is to generate a suitable plan for a mixed-model assembly line balancing problem considering the constraint of a hierarchical workforce, the cost of a hierarchical workforce, and production cycle time. When the problem is simple, it can be solved by a mixed integer programming (MIP) model. When the problem becomes complex, it can be solved by a multi-objective genetic algorithm (MOGA) and a non-dominated sorting genetic algorithm II (NSGA-II) to obtain a near-optimal solution. The implementation of this model can effectively manage the multi-objective mixed-model assembly line balancing plan, thereby improving plant efficiency and reducing cost. DOI: 10.5267/j.ijiec.2024.10.008 Keywords: Mixed-model assembly line balancing problem (MALBP), Hierarchical workforce, Mixed integer programming (MIP), Multi-objective genetic algorithm (MOGA), Non-dominated sorting genetic algorithm II (NSGA-II) | |
Open Access Article | |
6. |
Inventory control of deteriorating items: A review
, Pages: 93-128 Mahdi Karimi PDF (685K) |
Abstract: This paper presents a literature review for inventory control of deteriorating items since 2018. A classification including 18 classes and 33 subclasses is offered to categorize inventory control models, constraints, and solution methods used in previous studies. Providing standard classes in this field, such as demand, deterioration, shortages, number of warehouses, and time value of money alongside new classes, for example, the type of model costs and supply chain, inventory constraints, number of supply chain levels, time horizon, lead time, considering multi-item models, preservation technology, financial conditions, non-instantaneous deteriorating items, environmental issues, and solution methods made this classification more comprehensive. A brief history and explanation are given to understand each class better, and related articles are grouped in these classes. The research gaps and a crucial aspect that paves the way for future research are presented in each category. A broad view of the future of this topic is provided, and exciting opportunities are highlighted for researchers to contribute to this field and inspire them to explore these potential areas of research. The potential for future research in this subject is vast and promising; this article offers numerous opportunities for researchers to make significant contributions. The results show that the best ways to extend this topic are using variable deterioration rates, costs, and demand functions, considering realistic assumptions, including allowable shortages with partial backlogging, two warehouses, inflation and discounts, preservation technology, uncertain lead time, and environmental issues. Developing cyclic (if possible), multi-item, and production models with financial conditions and various inventory constraints is an excellent way to develop existing models. Finally, solving the proposed models using exact methods to find the global answer is a great effort to contribute to this field. DOI: 10.5267/j.ijiec.2024.10.007 Keywords: Inventory control, Deteriorating items, Review, Nonlinear programming, Optimization, Classification | |
Open Access Article | |
7. |
Green pickup and delivery problem with private drivers for crowd-shipping distribution considering traffic congestion
, Pages: 129-146 Xue Wu, Dawei Hu and Tianyang Gao PDF (685K) |
Abstract: Crowd-shipping, employing private drivers to partially replace company-owned trucks in distribution, has emerged as a prominent trend for its cost-effectiveness and sustainability. While crowd-shipping is known as a distribution pattern that combines economic efficiency and environmental benefits, however, the frequent occurrence of traffic congestion has made this pattern less effective than it should be. In this research, the problem of vehicle routing optimization under traffic congestion is investigated from the perspective of simultaneously reducing environmental pollution and costs. Considering private drivers picking up and delivering parcels on the way, this study incorporates the objective of minimizing transport as well as particulate matter (PM) and nitrogen oxides (NOx) emission costs into route optimization for crowd-shipping and proposes a Green Pickup and Delivery Problem with Private Drivers (GPDP-PD). To be more realistic, vehicle speeds depend on the level of traffic congestion, reflecting the time-dependent nature of the proposed model. An improved adaptive large neighborhood search (ALNS) algorithm is developed, and computational experiments are conducted to demonstrate the efficiency of the improved ALNS. Case studies show that there is uncertainty about the environmental benefits of crowd-shipping under traffic congestion. Our proposed model is capable of efficiently allocating private drivers and optimizing vehicle routes according to road conditions, thus identifying the crowd-shipping operational scheme with the lowest cost and emissions. Moreover, a time limit of 0.7-0.8 h and the low cost of private drivers can achieve environmental and economic benefits simultaneously. It provides useful insights into the sustainability of logistics and distribution. DOI: 10.5267/j.ijiec.2024.10.006 Keywords: Crowd-shipping, PM and NOx emissions, Green pickup and delivery problem, Congestion, Improved adaptive large neighborhood search | |
Open Access Article | |
8. |
Integrating sequence-dependent setup times and blocking in hybrid flow shop scheduling to minimize total tardiness
, Pages: 147-158 Atıl Kurt PDF (685K) |
Abstract: This study addresses the minimization of total tardiness in a hybrid flow shop scheduling problem with sequence-dependent setup times and blocking constraints. Each production stage includes multiple machines, and there are no buffers between the stages. The setup time required to process a job depends on the previously processed job. Two mixed-integer linear programming models are developed to formulate the problem. Moreover, an iterative local search algorithm and hybrid genetic algorithms are proposed to have quality solutions with minimal computational efforts. Several computational tests are conducted to tune the heuristic parameters for better performance. Computational experiments are carried out to evaluate the performance of solution methodologies in terms of quality and time. The results indicate that while mixed-integer programming models can solve small-size problem instances, they are not capable of solving large-sized instances. However, the proposed heuristic algorithms find quality solutions for all instances in a very short time. DOI: 10.5267/j.ijiec.2024.10.005 Keywords: Hybrid flow shop scheduling, Iterative local search, Hybrid genetic algorithm, Total tardiness, Blocking, sequence-dependent setup time | |
Open Access Article | |
9. |
Enhancing efficiency in supply chain management: A synergistic approach to production, logistics, and green investments under different carbon emission policies
, Pages: 159-176 Chih-Chiang Fang and Chin-Chia Hsu PDF (685K) |
Abstract: The study examines the influence of different carbon policies and the incorporation of green technologies in a two-echelon supply chain, with a focus on carbon emissions generated during transportation, production, and storage phases. The study evaluates three strategies for controlling carbon emissions: setting a maximum limit on total emissions, implementing carbon-taxation, and adopting a cap-and-trade framework. The proposed model assists businesses determine the optimal production and delivery volumes, as well as calculate the most effective investment in green technologies to reduce costs in the context of different carbon emission regulations. Furthermore, this study offers practical guidance for policymakers, highlighting the importance of balancing environmental sustainability with economic growth. Results indicate that companies are more inclined to pursue advanced green technology solutions under a carbon tax policy. The analysis highlights that carbon emissions per unit of production and transportation distance significantly impact overall emissions. The imposed emission cap has a stronger influence than the emission reduction potential of green technologies. The study recommends that governments establish realistic emission limits in cap-and-trade schemes to prevent excessive trading of emission allowances by suppliers. DOI: 10.5267/j.ijiec.2024.10.004 Keywords: Carbon-taxation, Cap-and-trade, Green Technology, Logistics | |
Open Access Article | |
10. |
Research on storage location allocation in three-dimensional automated warehouse based on cargo damage control
, Pages: 177-196 Qianli Ma, Linlin Xu, Lin Zhu and Peng Jia PDF (685K) |
Abstract: In automated high-bay warehouses, the results of storage location allocation significantly impact the operational efficiency of subsequent warehouse operations. Considering that cargo loss within the warehouse is often caused by contact with equipment, this paper proposes an innovative dual-objective optimization model aimed at minimizing unit cargo loss and the average travel time of stacker cranes through rational storage allocation. The study’s findings indicate that different cargo sizes, shelf sizes, and operational modes have varying degrees of impact on stacker crane operational efficiency and cargo loss. A reasonable match between equipment and product sizes helps enterprises minimize space waste, expedite response to customer demands, and reduce operational costs. This study optimizes storage location allocation using the SPEA-II algorithm and performs a comprehensive comparison with the results from CPLEX and NSGA-II. The results demonstrate that the SPEA-II algorithm performs excellently across various problem scales, indicating that it is an effective method for solving storage location allocation issues. DOI: 10.5267/j.ijiec.2024.10.003 Keywords: Storage location allocation, Cargo damage, Travel efficiency, SPEA-II algorithm | |
Open Access Article | |
11. |
The vehicle routing problem as applied to residential solid waste collection operations: Systematic literature review
, Pages: 197-220 Alejandra María Restrepo-Franco, Orlando Valencia-Rodríguez and Eliana Mirledy Toro-Ocampo PDF (685K) |
Abstract: The accelerated growth of cities, population increase and economic development have leveraged waste generation globally. This trend is expected to continue, with a significant increase projected in the coming years. Therefore, efficient waste management has become a crucial concern for local, national and international authorities. Transportation plays a key role in waste collection and disposal, being directly related to traffic congestion, fuel consumption and environmental pollution. Despite the existing studies on household waste collection, there is a gap in the literature regarding routing for residential waste collection in medium-sized cities, especially in emerging and frontier developing countries. Therefore, this study seeks through the science tree metaphor and PRISMA methodology, to find studies focused on the vehicle routing problem in waste collection operations, considering aspects such as Modeling approaches and solution techniques, applied Vehicle Routing Problems variants, objective functions, decision variables and constraints, applications in real environments, applied algorithms, and studies considering uncertainty and real conditions. A methodological outline of Vehicle Routing Problems in waste collection operations is presented, where central research topics are identified such as processes developed with Geographic Information System and their integration with exact methods, time windows, multi-objective capacitated vehicle routing problems, the application of stochastic models consider the uncertainty in waste collection, which has allowed including future prediction and optimization as prediction models, based on neural networks, to foresee uncertain conditions of the operations. This article analyzes the evolution in the optimization of municipal solid waste collection routes since 1964, highlighting the transition from iterative models to advanced technologies and multi-objective approaches. The importance of tools such as 3D Geographic Information System and heuristic/metaheuristic algorithms in improving planning and efficiency, despite limitations in the face of uncertainty, is emphasized. The systematic review shows a trend towards sustainable and efficient solutions, indicating future directions for research in urban waste management. DOI: 10.5267/j.ijiec.2024.10.002 Keywords: Waste collection routing problem, Vehicle routing problem, Solid waste, Residential waste | |
Open Access Article | |
12. |
Optimal green technology investment and lot-sizing decision under carbon tax and cap-and-trade regulations considering planned shortages, outsourced repair and batch shipments
, Pages: 221-246 Harun Öztürk PDF (685K) |
Abstract: In recent years, various issues such as industrial waste and emissions of greenhouse gases have led to serious environmental pollution. Industrial managers nowadays need to regard cutting carbon emissions as one of their principal responsibilities in relation to the environment, as industry is a major source of carbon emissions. Two prominent regulatory approaches to reducing carbon emissions from operations are the carbon tax and the cap-and-trade system. The existing literature on inventory studies has often considered the market-expanding effects of greening efforts. Nevertheless, a number of additional factors exert influence on greening efforts, with the cost reduction effect representing a critical one. This paper develops an inventory system in which each time a lot of items is received, a proportion of items are found to be of imperfect quality; to identify these, the retailer carries out a 100% inspection of goods received. Following this inspection, the saleable items are added to the inventory in the warehouse in batches of equal size, rather than one by one, and the retailer allows backordering to meet demand. Carbon emissions are incurred at every stage, including ordering, purchasing, repairing, transporting, and holding, so advanced green technology is employed to reduce them. Imperfect products can be sold to a second-hand market or sent to a repair shop. The model discussed in this paper calculates, for both options, the most cost-effective lot size for orders, shortage quantity, scale of green investment and number of batches. DOI: 10.5267/j.ijiec.2024.10.001 Keywords: Cost reduction effect, Carbon tax and cap-and-trade, Economic order quantity, Shortages, Outsourced repair, Batch shipment |
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