将机器学习方法整合到基于智能体的灾难情景疏散时间预测模拟中

M. Abadeer, F. Ebeid, S. Gorlatch
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摘要

疏散过程中人们的行为可能对疏散时间产生重大影响,因此基于智能体的模拟已经被广泛研究。本文的目的是利用机器学习提前更快地预测agent撤离时间,而不是等待整个模拟时间。我们使用著名的机器学习多项式回归作为我们的预测模型,线性回归和决策树回归作为我们的基准模型。为了生成合适的数据集用于训练和验证我们的模型,我们在Vadere仿真框架中从单个模板场景和仿真输出提取过程中自动化了场景创建过程。我们的模拟实验是使用 nster大学行政大楼的结构规划进行的,其中多达100个代理以个人和团体的形式位于源房间,试图找到通往出口的最短路径。在基于代理的仿真实验中,我们使用机器学习回归模型显著提高了疏散预测。我们的多项式回归模型可以在模拟开始前预测疏散时间,预测结果与模拟结果接近,R2平均得分为84%
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Integration of Machine Learning Methods into Agent-based Simulations for Predicting Evacuation Time in Disaster Scenarios
The behavior of people during an evacuation may have a significant impact on evacuation time, so it has been extensively studied using agent-based simulations. This paper aims to use machine learning for predicting agent evacuation time faster in advance, rather than waiting the entire simulation time. We use the well-known machine-learning polynomial regression as our prediction model, and linear regression and decision tree regression as our benchmark models. In order to generate a suitable dataset for training and validating our models, we automate the scenario-creation process from a single template scenario and the simulation output extraction process in the Vadere simulation framework. Our simulation experiments are carried out using the structure plan of the University of Münster's administrative building, with up to 100 agents located in a source room as individuals and in groups, attempting to find the shortest path to an exit. We significantly improve evacuation prediction using machine learning regression models in agentbased simulation experiments. Our polynomial regression model can predict evacuation time before the simulation begins, and the prediction results are close to the simulation results, with an average R2 score of 84%
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