基于修正ACO-CA的人员紧急疏散研究

Chunzhu Wei, Q. Meng, Wenfeng Zheng, Zhangli Sun, Lijuan Zheng, Chunmei Wang
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引用次数: 3

摘要

在突发的自然灾害中,大量的人可能被困在一个危险的空间里。近年来,此类事件在中国的数量有所增加,这激发了基于人工智能的紧急救援和疏散模拟研究。本文提出了一种结合蚁群优化和元胞自动机仿真与优化相结合的方法学方法,研究紧急疏散下人类行为的复杂性和随机性特征,求解紧急避难场所的最优紧急疏散规划问题。该集成模型中蚁群算法的路径剩余信息素和启发式因子被视为个体行为差异和聚集,可被视为最优行为因子和最短路径优先因子,反映了人群疏散过程中的随机性和交互性。通过使用蚁群算法计算相邻细胞之间相互作用的转移概率,并基于蚁群的局部最优路径,通过禁忌列表更新信息素,最终完成最优转移规则原则下的细胞安全疏散模拟。该方法可以有效地模拟延迟人群,实现自然灾害发生时疏散区域人口分布的模拟。为人口紧急疏散的研究提供科学参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A research on human emergency evacuation based on revised ACO-CA
In a sudden natural disaster, a large number of people may get detained within a hazardous space. In recent years, the number of such incidents has increased in China, which motivates the research of artificial intelligence-based simulations of emergency rescue and evacuation. This paper proposesam ethodological approach that combined with ant colony optimization and Cellular automata integrating simulation and optimizationto study the complexity and randomness characteristics of human behaviors under the emergency evacuation, for solving an optimal emergency evacuation planning problem in an emergency shelter. The path residual pheromone and heuristic factors of the Ant colony algorithm in this integrated model are treated as personal behavior difference and aggregation, which can be treated as the herb behavior factors and the shortest path first factors,reflecting the randomness and interaction in the process of population evacuation. Through using ant colony algorithm to calculate the transition probability of the interaction among the neighboring cells, and updating the pheromone through taboo list based on local optimal path of the ant colony, the cells can finally finish the simulation of safe evacuation under the principle of optimal transition rules. The method could effectively simulate the delayed population and achieve the simulation of the population distribution in the evacuation area when the natural disaster happens. It would also offer a scientific reference for the research of population emergency evacuation.
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