Green logistics optimization for coal supply in a power plant connecting maritime port

IF 6.9 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Mingsheng Qiu, Liping Gao, Zhouyong Lin, Minghong Zheng, Qingzhong Lin
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引用次数: 0

Abstract

This study addresses the coal transportation and flow distribution challenges within a “port-before-plant” type thermal power plant, with a strong emphasis on green logistics principles. Despite significant advancements in clean energy, coal remains a dominant energy source in China, necessitating optimization in its usage and management to mitigate environmental impacts. This paper introduces an integrated optimization model grounded in green logistics and employs an Improved Particle Swarm Optimization (IPSO) algorithm to efficiently manage the coal supply chain from unloading at ports to loading into generators. The model incorporates new parameters and constraints that not only reflect the operational realities of coal logistics but also emphasize minimizing carbon emissions and energy consumption. Numerical experiments demonstrate the algorithm’s superior performance compared to traditional solvers like Gurobi, particularly in handling large-scale instances. Sensitivity analysis reveals the importance of prioritizing efficient and environmentally sustainable unloading and loading equipment, suggesting strategies for optimizing green coal transportation routes. Overall, this research provides valuable insights for policymakers and industry operators to enhance operational efficiency while ensuring environmental sustainability through the implementation of green logistics.
优化连接海运港口的发电厂煤炭供应的绿色物流
本研究探讨了 "先港后厂 "型火力发电厂的煤炭运输和流量分配难题,重点强调了绿色物流原则。尽管在清洁能源方面取得了重大进展,但煤炭仍是中国的主要能源,因此有必要对其使用和管理进行优化,以减轻对环境的影响。本文介绍了一个以绿色物流为基础的综合优化模型,并采用改进型粒子群优化(IPSO)算法来有效管理从港口卸货到装入发电机的煤炭供应链。该模型采用了新的参数和约束条件,不仅反映了煤炭物流的实际运作情况,还强调最大限度地减少碳排放和能源消耗。数值实验证明,与 Gurobi 等传统求解器相比,该算法性能优越,尤其是在处理大规模实例时。敏感性分析揭示了优先考虑高效和环境可持续的卸载和装载设备的重要性,并提出了优化绿色煤炭运输路线的策略。总之,这项研究为政策制定者和行业运营商提供了宝贵的见解,帮助他们提高运营效率,同时通过实施绿色物流确保环境的可持续发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
8.60
自引率
0.00%
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