应用混合模型建立巴西火灾风险等级分类指数

P. Galvão, S. Roveda, Henrique Ewbank de Miranda Vieira
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引用次数: 1

摘要

火一直对人类有着巨大的吸引力。火灾通常会对发生地点的社会和环境产生影响。巴西的几个地区,特别是在一年中最干旱的月份,更容易受到这种现象的影响。在本文中,一个指数能够分类在地理上位于巴西地区的火灾风险水平。本文提出了一种基于神经模糊系统的火灾危险等级分类指标。来自索罗卡巴市的数据被用来检验所提出的模型。该指数得到的结果是有希望的,当应用于最长3天的火灾风险预测时,平均绝对误差达到3%以下。提出的指数可以作为一种工具,支持和协助需要确定燃烧可能性的各种研究机构或研究所,证实减少大气排放的措施,并实现联合国在2015年确定的《30年议程》目标15,该目标旨在刺激保护行动以及生态系统的恢复和可持续利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Models Applied to Create a Classification Index of Fire Risk Levels in Brazil
Fire has always exerted a great attraction on humans. Fires generally provide social and environmental impacts at the places where they occur. Several Brazilian localities, especially in the driest months of the year, are more susceptible to this phenomenon. In this paper, an index able of classifying levels of fire risk in areas geographically located in Brazil. This paper presents an index capable of classifying fire risk levels elaborated from neuro-fuzzy systems. Data from the municipality of Sorocaba were used to test the proposed models. The results obtained by this index are promising, reaching values of mean absolute error below 3% when applied in the prediction of the risk of fire for the maximum period of up to 3 days. The proposed index can be used as a tool to support and assist various research agencies or institutes that need to identify the possibility of burning, corroborating the measures to reduce atmospheric emitters and meeting Goal 15 of Agenda 30 as defined by the UN in 2015, which aims to stimulate conservation actions and the recovery and sustainable use of ecosystems.
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