Multi-objective optimization model of autonomous minibus considering passenger arrival reliability and travel risk

IF 12.5 Q1 TRANSPORTATION Communications in Transportation Research Pub Date : 2024-11-26 DOI:10.1016/j.commtr.2024.100152
Zhicheng Jin , Haoyang Mao , Di Chen , Hao Li , Huizhao Tu , Ying Yang , Maria Attard
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Abstract

The advancement of self-driving technologies facilitates the emergence of autonomous minibuses (ABs) in public transportation, which could provide flexible, reliable, and safe mobility services. This study develops an AB routing and scheduling model considering each passenger’s arrival reliability and travel risk. Firstly, to guarantee each passenger’s arrival on time, the arrival reliability (a predetermined threshold of on-time arrival probability of α ​= ​0.9) is included in the constraints. Secondly, three objectives, including system costs, greenhouse gas (GHG) emissions, and travel risk, are optimized in the model. To assess the travel risk of ABs, an enhanced method based on kernel density estimation (KDE) is proposed. Thirdly, an advanced multi-objective adaptive large neighborhood search algorithm (MOALNS) is designed to find the Pareto optimal set. Finally, experiments are conducted in Shanghai to validate model performance. Results show that it can decrease GHG emissions (−2.12%) and risk (−9.47%), while only increasing costs by 2.02%. Furthermore, the proposed arrival reliability constraint can improve an average of 14.70% of passengers to meet their arrival reliability requirement (α ​= ​0.9).
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考虑乘客抵达可靠性和出行风险的自主小巴多目标优化模型
自动驾驶技术的发展促进了自动驾驶小巴(AB)在公共交通领域的出现,它可以提供灵活、可靠和安全的交通服务。本研究建立了一个考虑每位乘客到达可靠性和出行风险的 AB 路由和调度模型。首先,为保证每位乘客准时到达,在约束条件中加入了到达可靠性(预定的准时到达概率阈值为 α = 0.9)。其次,模型还优化了三个目标,包括系统成本、温室气体(GHG)排放和出行风险。为了评估 AB 的出行风险,提出了一种基于核密度估计(KDE)的增强方法。第三,设计了一种先进的多目标自适应大邻域搜索算法(MOALNS)来寻找帕累托最优集。最后,在上海进行了实验来验证模型的性能。结果表明,该模型可以减少温室气体排放量(-2.12%)和风险(-9.47%),而成本仅增加 2.02%。此外,所提出的到达可靠性约束平均可提高 14.70% 的乘客到达可靠性要求(α = 0.9)。
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