时变绿色车辆路径问题的机器学习多目标优化

IF 13.6 2区 经济学 Q1 ECONOMICS
Sidonie Ienra Nyako , Dalila Tayachi , Fouad Ben Abdelaziz
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引用次数: 0

摘要

本研究在能源经济学的框架下探讨了多目标时变绿色车辆路径问题(MOTDGVRP),重点是优化燃料消耗和运输效率。我们的模型最大限度地减少了总距离、运输时间和燃料消耗,所有这些都是降低能源成本和环境影响的关键。我们介绍了计算旅行时间和燃料消耗的方法,考虑了不同时期随时间变化的速度。影响燃料消耗的关键因素包括车辆负载、动态交通速度和行驶距离,反映了物流中实际的能源使用情况。考虑到问题的NP-hard性质,我们采用非支配排序遗传算法2 (NSGA-2)和机器学习增强的NSGA-2 (MLNSGA-2)来优化路由决策。本研究的独创性在于将机器学习(ML)集成到车辆路径优化中,提高了求解质量,加快了计算性能。虽然机器学习在路由中的应用越来越多,但它们在车辆路由相关模型中的应用仍然很新颖。此外,该模型考虑了与时间相关的速度变化,解决了现实世界的交通动态,显著影响燃油消耗和交付效率。将机器学习增强优化与时间敏感路线相结合,提出了一种节能运输的新途径。从能源经济学的角度来看,我们的研究结果为优化物流中的能源使用、降低运营成本和促进可持续运输提供了有价值的见解。机器学习驱动优化的集成为提高供应链的能源效率提供了一种可扩展的方法,有助于实现经济和环境目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning multi-objective optimization for time-dependent green vehicle routing problem
This study explores the Multi-Objective Time-Dependent Green Vehicle Routing Problem (MOTDGVRP) within the framework of energy economics, focusing on optimizing fuel consumption and transportation efficiency. Our model minimizes total distance, transportation time, and fuel consumption, all of which are critical for reducing energy costs and environmental impact. We introduce methodologies for calculating travel time and fuel consumption, considering time-dependent speed variations across different periods. Key factors influencing fuel consumption include vehicle load, dynamic traffic speeds, and distance traveled, reflecting real-world energy use in logistics. Given the NP-hard nature of the problem, we employ Non-dominated Sorting Genetic Algorithm 2 (NSGA-2) and an NSGA-2 enhanced with Machine Learning (MLNSGA-2) to optimize routing decisions. The originality of this study lies in the integration of machine learning (ML) in vehicle routing optimization,which enhances solution quality and accelerates computational performance. While ML applications in routing are growing, their use in Vehicle Routing related models remains novel. Additionally, the model accounts for time-dependent speed variations, addressing real-world traffic dynamics that significantly impact fuel consumption and delivery efficiency. The combination of ML-enhanced optimization with time-sensitive routing presents a new approach to energy-efficient transportation. From an energy economics perspective, our findings provide valuable insights for optimizing energy use in logistics, reducing operational costs, and promoting sustainable transportation. The integration of machine learning-driven optimization offers a scalable method for enhancing energy efficiency in supply chains, contributing to both economic and environmental objectives.
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来源期刊
Energy Economics
Energy Economics ECONOMICS-
CiteScore
18.60
自引率
12.50%
发文量
524
期刊介绍: Energy Economics is a field journal that focuses on energy economics and energy finance. It covers various themes including the exploitation, conversion, and use of energy, markets for energy commodities and derivatives, regulation and taxation, forecasting, environment and climate, international trade, development, and monetary policy. The journal welcomes contributions that utilize diverse methods such as experiments, surveys, econometrics, decomposition, simulation models, equilibrium models, optimization models, and analytical models. It publishes a combination of papers employing different methods to explore a wide range of topics. The journal's replication policy encourages the submission of replication studies, wherein researchers reproduce and extend the key results of original studies while explaining any differences. Energy Economics is indexed and abstracted in several databases including Environmental Abstracts, Fuel and Energy Abstracts, Social Sciences Citation Index, GEOBASE, Social & Behavioral Sciences, Journal of Economic Literature, INSPEC, and more.
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