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Spatial Environmental Modeling for Wildfire Progression Accelerating Extent Analysis Using Geo-Informatics

机译:利用地理信息学野火进展加速范围分析的空间环境建模

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The fire situation during the dry season of Thailand, in the last 10 years, has become more severe. The Tad Sung Forest Park area has reported the intensity of wildfires for the past 7 years. This research has applied the geographic weighted regression (GWR) model to generate a spatial relationship analysis model for wildfires. This research aims to create a spatial model to analyze the risk of hazardous areas against wildfire and to analyze the factors that affect forest fire risks in order to protect against wildfires. The service area (SA(LY)) model was obtained through the first approach. The wildfire-GWR results of the study showed that the model can predict at the R-2 level greater than 82% and varies according to the sub-area boundaries. Factors affecting the acceleration of wildfires are (positive coefficient) the digital elevation model (DEM), normalized burn ratio (NBR), land surface temperature (LST) and (negative coefficient) normalized difference vegetation index (NDVI), slope and aspect. In addition, the distance from the road factor has little effect on wildfire intensity in most areas. The results of the research are used to create a risk-sensitive map of wildfires through surveillance by importing the independent variable factors in the model and using it as a prototype of the same kind of space.
机译:在泰国旱季期间的火灾情况,在过去的10年里,已经变得更加严重。 Tad Sung Forest Park地区报告了过去7年的野火强度。该研究已经应用了地理加权回归(GWR)模型来为野火产生空间关系分析模型。该研究旨在创建一个空间模型,分析野火危险区域的风险,并分析影响森林火灾风险的因素,以防止野火。通过第一种方法获得服务区(SA(LY))模型。该研究的野火-GWR结果表明,该模型可以在R-2水平上预测大于82%并根据子区域边界而变化。影响野火加速度的因素是(正系数)数字高度模型(DEM),归一化烧伤比(NBR),陆地表面温度(LST)和(负系数)归一化差异植被指数(NDVI),斜率和方面。此外,距离道路因子的距离对大多数区域的野火强度几乎没有影响。该研究的结果用于通过在模型中的独立变量因子和使用它作为相同空间的原型来创建野火的风险敏感性地图。

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