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Forest fire risk forecasting in the upper north region of Thailand

机译:泰国北部地区森林火灾风险预测

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Forest fire often occurs in mountainous and agricultural areas as a result of a complex processes involving several factors in a particular location, landscape, local weather and human interventions are the most important factors which influence the occurrence of forest fire. Ten Provinces in the upper north region of Thailand are identified as highly susceptible areas to reoccurring hotspots and smoke plumes during January to May. Identification of hotspots will significantly aid in forecasting forest fire in these areas. Using this, forest fire risk assessment may then be undertaken which can be utilize to evaluate its impacts on the society and economy. This research focused on enhancing the application of basic concepts of forest fire risk assessment. A case study was undertaken which entailed forecasting the risk areas of forest fire in 2015 as compared to other years. Two main methodological approaches were applied, spatial modelling for susceptibility assessment and forest fire impact determination. The research generated a risk forecasting model based on major physical-spatial factors in GIS environment. Analysis Hierarchy Process (AHP) was used to define ranges of risk conditions for 7 day forecast. The risk mapping in 2015 was validated by accumulated hotspots in the same year wherein 74 % of hotspots were located in high risk zones for forest fire. Moreover, the forest fire risk forecasting was deployed by local agencies for preparedness and prevention of wildfire incidents in 2016 and 2017. Result shows that burnt areas classified from LANDSAT-8 decreased from 28.803 km3 in 2015 to 16.588 and 13.658 km2 in 2016 and 2017. respectively. The cross matching results between risk maps and burnt areas show better correlation percentage at 52 % in 2016 and 60 % in 2017. Thus, forest fire risk forecasting can efficiently support forest fire management implemented by government agencies and local communities.
机译:由于涉及特定位置,景观,当地天气和人为因素等多种因素的复杂过程,森林火灾经常在山区和农业地区发生,这是影响森林火灾发生的最重要因素。泰国北部北部地区的十个省被确定为在1月至5月期间再次出现热点和烟羽的高度敏感地区。识别热点将大大有助于预测这些地区的森林火灾。使用此方法,然后可以进行森林火灾风险评估,该评估可用于评估其对社会和经济的影响。这项研究的重点是加强森林火灾风险评估基本概念的应用。进行了案例研究,需要预测与其他年份相比,2015年森林火灾的危险区域。应用了两种主要的方法学方法,即用于敏感性评估的空间模型和确定森林火灾影响的方法。该研究基于GIS环境中的主要物理空间因素生成了风险预测模型。分析层次过程(AHP)用于定义7天预报的风险状况范围。同年累积的热点验证了2015年的风险图,其中74%的热点位于森林火灾的高风险区。此外,当地机构在2016年和2017年部署了森林火灾风险预测,以预防和预防野火事件。结果显示,LANDSAT-8分类的烧伤面积从2015年的28.803 km3减少到2016年和2017年的16.588和13.658 km2。分别。风险图与燃烧区之间的交叉匹配结果显示出更好的相关百分比,2016年为52%,2017年为60%。因此,森林火灾风险预测可以有效地支持政府机构和地方社区实施的森林火灾管理。

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