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考虑实际道路网络淹没情况的水-陆多式联运应急调度模型与决策方法研究

Research on the water-ground multimodal transport emergency scheduling model and decision-making method considering the actual road network inundation situation.

作者信息

Song Yan, Sun Baiqing, Han Yunwu, Xing Zhenming

机构信息

School of Management, Harbin Institute of Technology, Harbin, China.

Department of Automobile Engineering, Jiangsu Vocational College of Electronics and Information, Huai'an, China.

出版信息

Risk Anal. 2025 Mar;45(3):600-622. doi: 10.1111/risa.17450. Epub 2024 Aug 21.

DOI:10.1111/risa.17450
PMID:39166706
Abstract

As urbanization continues to accelerate worldwide, urban flooding is becoming increasingly destructive, making it important to improve emergency scheduling capabilities. Compared to other scheduling problems, the urban flood emergency rescue scheduling problem is more complicated. Considering the impact of a disaster on the road network passability, a single type of vehicle cannot complete all rescue tasks. A reasonable combination of multiple vehicle types for cooperative rescue can improve the efficiency of rescue tasks. This study focuses on the urban flood emergency rescue scheduling problem considering the actual road network inundation situation. First, the progress and shortcomings of related research are analyzed. Then, a four-level emergency transportation network based on the collaborative water-ground multimodal transport transshipment mode is established. It is shown that the transshipment points have random locations and quantities according to the actual inundation situation. Subsequently, an interactive model based on hierarchical optimization is constructed considering the travel length, travel time, and waiting time as hierarchical optimization objectives. Next, an improved A* algorithm based on the quantity of specific extension nodes is proposed, and a scheduling scheme decision-making algorithm is proposed based on the improved A* and greedy algorithms. Finally, the proposed decision-making algorithm is applied in a practical example for solving and comparative analysis, and the results show that the improved A* algorithm is faster and more accurate. The results also verify the effectiveness of the scheduling model and decision-making algorithm. Finally, a scheduling scheme with the shortest travel time for the proposed emergency scheduling problem is obtained.

摘要

随着全球城市化进程持续加速,城市内涝的破坏性日益增大,因此提高应急调度能力至关重要。与其他调度问题相比,城市洪涝应急救援调度问题更为复杂。考虑到灾害对道路网络通行能力的影响,单一类型的车辆无法完成所有救援任务。多种车辆类型合理组合进行协同救援可提高救援任务的效率。本研究聚焦于考虑实际道路网络淹没情况的城市洪涝应急救援调度问题。首先,分析相关研究的进展与不足。然后,基于水 - 陆多式联运转运模式建立四级应急运输网络。结果表明,转运点的位置和数量根据实际淹没情况具有随机性。随后,构建一个基于分层优化的交互式模型,将行程长度、行程时间和等待时间作为分层优化目标。接下来,提出一种基于特定扩展节点数量的改进A算法,并基于改进的A算法和贪心算法提出调度方案决策算法。最后,将所提出的决策算法应用于实际案例进行求解和对比分析,结果表明改进的A*算法更快且更准确。结果还验证了调度模型和决策算法的有效性。最终,针对所提出的应急调度问题获得了行程时间最短的调度方案。

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