Automatic Driving Material Handling Vehicle Station Location and Scheduling Mathematical Modeling and Analysis

Qi Zhang, Qianzhen Zhang
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Abstract

Traditional material handling vehicles often use internal combustion engines as their power source, which results in exhaust emissions that pollute the environment. In contrast, automated material handling vehicles have the advantages of zero emissions, low noise, and low vibration, thus avoiding exhaust pollution and providing a more comfortable working environment for operators. In order to achieve the goals of “peaking carbon emissions by 2030 and achieving carbon neutrality by 2060”, the use of environmentally friendly autonomous material handling vehicles for material transportation is an inevitable trend. To maximize the amount of transported materials, consider peak-to-valley electricity pricing, battery pack procurement, and the construction of charging and swapping stations while achieving “minimum daily transportation volume” and “lowest investment and operational cost over a 3-year settlement period” with the shortest overall travel distance for all material handling vehicles, this paper examines two different scenarios and establishes goal programming models. The appropriate locations for material handling vehicle swapping stations and vehicle battery pack scheduling schemes are then developed using the NSGA-II algorithm and ant colony optimization algorithm. The results show that, while ensuring a daily transportation volume of no less than 300 vehicles, the lowest investment and operational cost over a 3-year settlement period is approximately 24.1 million Yuan. The material handling vehicles follow the shortest path of 119.2653 km passing through the designated retrieval points and have two shortest routes. Furthermore, the advantages and disadvantages of the proposed models are analyzed, followed by an evaluation, deepening, and potential extension of the models. Finally, future research directions in this field are suggested.
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自动驾驶物料搬运车辆站位调度数学建模与分析
传统的物料搬运车辆通常使用内燃机作为动力源,导致废气排放污染环境。相比之下,自动化物料搬运车辆具有零排放、低噪音、低振动的优点,从而避免了废气污染,为操作人员提供了更舒适的工作环境。为了实现“到2030年碳排放达到峰值,到2060年实现碳中和”的目标,使用环保的自动装卸车辆进行物料运输是必然趋势。为实现物料运输量最大化,考虑峰谷电价、电池组采购、充电站建设等因素,同时实现所有物料搬运车辆总行驶距离最短,“日运输量最小”和“3年结算期投资和运行成本最低”,本文考察了两种不同的场景,建立了目标规划模型。然后利用NSGA-II算法和蚁群优化算法制定了物料搬运车辆换站的合适位置和车辆电池组调度方案。结果表明,在保证每日运输量不低于300辆的情况下,3年结算期内最低投资和运营成本约为2410万元。物料搬运车辆沿最短路径119.2653 km通过指定的回收点,有两条最短路径。在此基础上,分析了模型的优缺点,并对模型进行了评价、深化和推广。最后,对该领域未来的研究方向提出了建议。
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