基于历史记录的独立可定制区域林火天气指数自动定标

J. S. Junior, J. Paulo, Jérôme Mendes, D. Alves, L. Ribeiro
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引用次数: 6

摘要

野火决策支持系统是民防部门管理包括预防在内的所有野火阶段的关键工具。为了及时采取行动并采取必要的预防措施来减少野火的火灾危险,许多关于加拿大森林火灾天气指数系统(CFFWIS)的拟议校准研究主要基于仍然依赖于人工和经验分析的技术,仅限于开发少数地区。本文提出了一种自动校准CFFWIS的方法,以获得最适合给定地区特定特征的火灾危险测量值。该方法应用于欧洲769个地区,基于k-均值聚类技术,自动识别由CFFWIS和野火记录元素组成的数据集中的模式。769个区域的CFFWIS自动校准结果强化了所提出方法的通用性,该方法可以适应不同的区域。
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Automatic Calibration of Forest Fire Weather Index For Independent Customizable Regions Based on Historical Records
Wildfire Decision Support Systems are critical tools for civil protection authorities in the management of all wildfire stages, including prevention. To timely act and apply the necessary preventive measures to reduce the fire danger in wildfires, many proposed calibration studies of the Canadian Forest Fire Weather Index System (CFFWIS) have been performed mainly based on techniques that still depend on manual and empirical analysis, being limited to exploiting a few regions. This paper proposes a methodology for automatic calibration of the CFFWIS to obtain a fire danger measurement that best suits the specific characteristics of a given region. The proposed methodology, applied to 769 regions from Europe, is based on the k-means clustering technique to automatically identify patterns in the data sets composed of elements of the CFFWIS and wildfire records. The results of the automatic calibration of the CFFWIS on each of the 769 regions reinforce the versatility of the proposed methodology, which can be adapted to different regions.
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