Evacuating Routes in Indoor-Fire Scenarios with Selection of Safe Exits on Known and Unknown Buildings Using Machine Learning

Aakanksha Agnihotri, Sina Fathi Kazerooni, Yagiz Kaymak, R. Rojas-Cessa
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引用次数: 3

Abstract

We propose a scheme for calculation of indoor evacuation routes of a single-floor building in the event of a fire that uses selection of a potentially safe exit before evacuation starts. We refer to potentially safe exits to those that have high probability of being accessible at evacuation time. The scheme pre-calculates whether an exit may be reached by an occupant before being reached by the fire. Among those exits, the one with the shortest distance to the occupant is selected. This exit pre-selection improves evacuation success ratio by avoiding destination changes during evacuation. This approach is applicable to a building where the floor plan is known and analyzable. With such an evacuation routing scheme, we study the applicability of our approach to cases where the floor plan has not been characterized and yet we may be able to perform route calculation in a fast manner. To do so, we use machine learning with data obtained from a floor plan where the evacuation success ratio has been analyzed and apply it on the new floor plan. This approach indicates floor plan similarities and it is used to rapidly estimate evacuation routes with high probability of a successful evacuation. We show how floor similarity accuracy estimation increases with the use of data from an increasing number of analyzed floor plans.
使用机器学习在已知和未知建筑物上选择安全出口的室内火灾场景下的疏散路线
我们提出了一种在火灾情况下单层建筑室内疏散路线的计算方案,该方案在疏散开始前使用潜在安全出口的选择。我们所说的潜在安全出口是指那些在疏散时有很大可能进入的出口。该方案预先计算出居住者是否可以在火灾到达出口之前到达出口。在这些出口中,选择与乘员距离最近的出口。这种出口预选避免了疏散过程中目的地的改变,提高了疏散成功率。这种方法适用于平面图已知且可分析的建筑。有了这样的疏散路线方案,我们研究了我们的方法在平面图尚未确定的情况下的适用性,但我们可能能够快速地进行路线计算。为了做到这一点,我们使用机器学习从一个楼层平面图中获得的数据,其中疏散成功率已经被分析,并将其应用于新的楼层平面图。该方法表明了平面图的相似性,并用于快速估计疏散路线,具有高概率的成功疏散。我们展示了楼层相似性精度估计如何随着使用越来越多的分析楼层平面图的数据而增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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