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Time-Series Predictions for People-Flow with Simulation Data

机译:模拟数据对人流的时间序列预测

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In order to prevent accidents, it is important that the administrators of large-scale facilities or event organizers be able to analyze and predict human flow. Time series prediction is generally used for such situations. However, some cases have no historical data available such as the construction of new stadium. In such cases, the multi-agent simulator (MAS) is useful for generating sufficient simulation data to support the assessment of navigation plans, and predictions can be made more accurate by comparing simulation results to monitored data. In this paper, to predict the number of passengers at the multiple observation points, we use simulation data (generated by MAS) as a learning dataset for long short-term memory (LSTM). To compare the prediction accuracy of the proposed approach, we use the real world data collected at the music live events. In addition, for the comparison, we use the nearest neighbor approach that searches the most similar result from the pre-simulated results and predicts the human flow.
机译:为了防止事故发生,重要的是大型机构的管理员或事件组织者必须能够分析和预测人员流量。时间序列预测通常用于此类情况。但是,在某些情况下,例如新体育场的建设等历史数据不可用。在这种情况下,多主体模拟器(MAS)可用于生成足够的模拟数据来支持导航计划的评估,并且可以通过将模拟结果与监视数据进行比较来使预测更加准确。在本文中,为了预测多个观察点的乘客数量,我们将模拟数据(由MAS生成)用作长短期记忆(LSTM)的学习数据集。为了比较所提出方法的预测准确性,我们使用在音乐现场活动中收集的真实世界数据。另外,为了进行比较,我们使用最近邻居方法,该方法从预先模拟的结果中搜索最相似的结果,并预测人流。

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