面向灾害管理的基于模式识别的火灾数据分析方法

S. Rasouli, Ole-Christoffer Granmo, Jaziar Radianti
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引用次数: 4

摘要

本文的目的是研究一种基于模式识别技术的火灾分析策略,以实现灾害管理的方法。由于火灾危害对人类和财产造成了严重的影响,因此对火灾进行预测和预防是非常必要的。几乎每一场火灾都会产生一些问题,如热、烟、气体和火焰,这些都是可以通过设备或检测系统感知和测量的。火灾行为与这些问题有关。本研究使用火灾动力学模拟器(FDS)获得的火灾温度、热辐射和能见度(烟雾)数据进行分析。火灾地点应该是在大楼中间的一个房间里。此外,一个包含几个房间和走廊的社区被选定在射击室周围。我们使用决策树学习技术对数据进行分类和预测。已经定义了三种不同的场景来评估距离和时间对识别火灾模式的影响。KNIME已被用于实现模式识别技术,在该技术中,所有火灾数据都可以根据射击室内的数据进行分类。通过场景来检验所提出策略的真实性。使用KNIME和MATLAB进行统计分析,在所有情况下都具有较高的准确性(在可接受的置信区间内达到0.9的水平)。此外,轮廓的精度有一个逻辑过程,在大多数情况下根据时间和距离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A methodology for fire data analysis based on pattern recognition towards the disaster management
The aim of this paper is to investigate a proposed strategy for fire disaster analysis that is implemented based on pattern recognition technique in order to achieve a methodology for disaster management. Since the fire hazard has severe effects onto human and properties, it is essential to predict and possibly prevent it. Almost every fire produces some issues, such as heat, smoke, gas, and flame, which are sensible and measurable via devices or detection systems. The fire behavior is relevant to these issues. In this research, temperature, heat radiation, and visibility (smoke) data of fire that have been obtained from Fire Dynamics Simulator (FDS) are used for analysis. The location of the fire is supposed to be in a room in the middle of the building. Also, a neighborhood containing several rooms and corridors is selected around the firing room. We have used Decision Tree learning technique to classify the data and predict the fire data. Three different scenarios have been defined to evaluate the effect of distance and time in recognition of the fire pattern. KNIME has been used for implementation of pattern recognition technique in which all fire data can be classified based on the data in the firing room. The authenticity of proposed strategy is examined via the scenarios. Statistical analysis using KNIME and MATLAB show the high accuracy (at the level of 0.9 with acceptable confidence interval) in all cases. Also, the profile of the accuracy has a logical process, according to the time and distance in most of the cases.
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