A Novel Tourist Trip Design Problem with Stochastic Travel Times and Partial Charging for Battery Electric Vehicles

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Samita Kedkaew, Warisa Nakkiew, Parida Jewpanya, Wasawat Nakkiew
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引用次数: 0

Abstract

This study proposes a novel mathematical model for the Multi-Day Tourist Trip Design Problem with Stochastic Travel Time and Partial Charging for Battery Electric Vehicle (MD-TTDP-STT-PCBEV). To the best of our knowledge, no prior study has fully incorporated the use of BEVs into TTDP models. Given the limited driving range of BEVs, the model requires decisions regarding the locations and policy for recharging the vehicle’s battery. The problem also incorporates real-world uncertainty by considering travel time as a random variable subjected to normal distribution. The model is formulated using chance-constraint programming, aiming to find optimal tourist routes for BEVs that maximize tourist satisfaction. Numerical experiments were conducted to compare solutions between stochastic and deterministic environments. Computational experiments using the LINGO optimization solver demonstrated that the total rating scores obtained from the stochastic model with chance-constraint programming were generally lower than those from the deterministic model due to travel time uncertainties. These results highlight the importance of incorporating real-world uncertainty and variability to achieve more accurate and reliable planning.
具有随机旅行时间和电池电动汽车部分充电功能的新型旅游行程设计问题
本研究针对具有随机旅行时间和电池电动汽车部分充电的多日旅游行程设计问题(MD-TTDP-STT-PCBEV)提出了一个新颖的数学模型。据我们所知,此前还没有任何研究将电动汽车的使用完全纳入 TTDP 模型。鉴于 BEV 的行驶里程有限,该模型需要对车辆电池充电的地点和政策做出决策。通过将旅行时间视为服从正态分布的随机变量,该问题还纳入了现实世界的不确定性。该模型采用机会约束程序设计法,旨在为 BEV 找到游客满意度最大化的最佳旅游路线。通过数值实验比较了随机环境和确定性环境下的解决方案。使用 LINGO 优化求解器进行的计算实验表明,由于旅行时间的不确定性,采用机会约束编程的随机模型得到的总评分通常低于确定性模型得到的评分。这些结果凸显了将现实世界的不确定性和可变性纳入规划以实现更准确、更可靠规划的重要性。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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