学习大地理区域事件预测模型用于应急响应

S. Vazirizade, Ayan Mukhopadhyay, Geoffrey Pettet, S. E. Said, H. Baroud, A. Dubey
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引用次数: 5

摘要

应急响应管理(ERM)需要使用能够预测事件发生时空可能性的模型。这些模型用于主动部署,以减少总体响应时间。传统的方法只是将过去的事件在空间和时间上进行汇总;当空间区域较大且集中于细粒度的空间实体(如州际公路网络)时,这种方法无法做出有用的短期预测。这部分是由于事件相对于空间和时间的稀疏性。此外,事故受几个协变量的影响。收集、清理和管理来自不同来源的多个数据流对于大空间区域来说是具有挑战性的。在本文中,我们重点介绍了如何与田纳西州运输部(TDOT)合作解决这一问题,以改善田纳西州的ERM。我们的管道基于综合重采样、聚类和数据挖掘技术的结合,即使在稀疏条件下也能有效地预测事故发生的时空动态。我们的管道使用与道路几何形状、天气、历史事故和交通相关的数据来帮助预测事故。为了理解我们的预测模型如何影响分配和调度,我们改进并采用了一种经典的资源分配方法。实验结果表明,与现有的第一响应者采用的方法相比,我们的方法可以显著减少响应时间和无人值守事件的数量。所开发的管道具有高效、实用、开源的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Incident Prediction Models Over Large Geographical Areas for Emergency Response
Emergency Response Management (ERM) necessitates the use of models capable of predicting the spatial-temporal likelihood of incident occurrence. These models are used for proactive stationing in order to reduce overall response time. Traditional methods simply aggregate past incidents over space and time; such approaches fail to make useful short-term predictions when the spatial region is large and focused on fine-grained spatial entities like interstate highway networks. This is partially due to the sparsity of incidents with respect to space and time. Further, accidents are affected by several covariates. Collecting, cleaning, and managing multiple streams of data from various sources is challenging for large spatial areas. In this paper, we highlight how this problem is being solved in collaboration with the Tennessee Department of Transportation (TDOT) to improve ERM in the state of Tennessee. Our pipeline, based on a combination of synthetic resampling, clustering, and data mining techniques, can efficiently forecast the spatio-temporal dynamics of accident occurrence, even under sparse conditions. Our pipeline uses data related to roadway geometry, weather, historical accidents, and traffic to aid accident forecasting. To understand how our forecasting model can affect allocation and dispatch, we improve and employ a classical resource allocation approach. Experimental results show that our approach can noticeably reduce response times and the number of unattended incidents in comparison to current approaches followed by first responders. The developed pipeline is efficacious, applicable in practice, and open-source.
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