利用先进的 RPAS 运输系统技术实现 RPAS 物流革命并减少二氧化碳排放

IF 6.9 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
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引用次数: 0

摘要

为有效管理遥控飞机系统(RPAS)网络,本研究提出了一种多目标定位-路由优化模型。该模型整合了时间窗口约束、并发取货和送货需求以及可充电电池功能,还引入了一个标准化框架,以明确遥控飞机系统的二氧化碳排放模型。这些集成大大降低了遥控飞机系统(RPAS)的电池消耗,降低了运输成本,同时还优化了交货时间,降低了运营风险,最大限度地减少了二氧化碳排放。该模型在优化交付时间表方面的改进考虑到了不确定的交通状况,从而提高了动态环境中的准确性,进一步促进了环境的可持续发展。风险评估采用了特定运营风险评估(SORA)标准,增加了第三个目标函数。这种模型组合通过优化交付计划、减少二氧化碳排放和电池消耗,以及提高动态条件下的准确性,进一步提高了 RPAS 运营的效率和可持续性。此外,它还使 RPAS 物流在实际应用中更加实用和有效。因此,NSGA-II 算法在所有目标上都实现了显著的降低:在 250 代内,成本降低 33.3%,时间降低 6.48%,风险降低 33.3%,电池使用量降低 35.7%。使用 NSGA-II 元启发式方法进行验证提高了模型的可信度和实用性。该优化模型在 250 代的表现显示,成本、时间、风险和电池使用量在初始阶段得到了快速改善,随后趋于稳定,这表明了高效的收敛性和有效的进化计算。此外,研究结果表明,每 Wh 的二氧化碳排放量为 3.773 × 104 kg,凸显了模型的效率和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revolutionizing RPAS logistics and reducing CO2 emissions with advanced RPAS technology for delivery systems

To manage remotely piloted aircraft system (RPAS) networks effectively, this research presents a multi-objective location-routing optimization model. This model integrates time window constraints, concurrent pick-up and delivery demands, and rechargeable battery functionality, and also introduces a standardized framework to clarify the RPAS CO2 emission model. These integrations significantly decrease battery consumption in Remotely Piloted Aircraft Systems (RPAS) and lower transportation costs, while also optimizing delivery times, reducing operational risks, and minimizing CO2 emissions. The model’s enhancement for optimizing delivery schedules takes into account uncertain traffic conditions, thus improving accuracy in dynamic environments and further contributing to environmental sustainability. Risk assessment employs the Specific Operations Risk Assessment (SORA) standard, adding a third objective function. This combination of the model, further enhance the efficiency and sustainability of RPAS operations, by optimizing delivery schedules, reducing CO2 emissions and battery consumption, and improving accuracy under dynamic conditions. Also, it make RPAS logistics more practical and effective in real-world applications. As result, the NSGA-II algorithm achieves significant reductions across all objectives: 33.3 % in cost, 6.48 % in time, 33.3 % in risk, and 35.7 % in battery usage within 250 generations. The use of the NSGA-II meta-heuristic method for validation enhances the credibility and practicality of the model. The optimization model’s performance over 250 generations shows rapid initial improvements in cost, time, risk, and battery usage, followed by stabilization, indicating efficient convergence and effective evolutionary computation. Also the findings show that with a CO2 emission rate of 3.773 × 104 kg of CO2 per Wh, highlighting the model’s efficiency and effectiveness.

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