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首页> 外文期刊>Forest Research Papers >Evaluation of long term forest fires in India with respect to state administrative boundary, forest category of LULC and future climate change scenario: A Geospatial Perspective
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Evaluation of long term forest fires in India with respect to state administrative boundary, forest category of LULC and future climate change scenario: A Geospatial Perspective

机译:评估印度长期森林火灾的国家行政范围,LULC的森林类别和未来的气候变化情景:地理空间观点

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Analysing the forest fires events in climate change scenario is essential for protecting the forest from further degradation. Geospatial technology is one of the advanced tools that has enormous capacity to evaluate the number of data sets simultaneously and to analyse the hidden relationships and trends. This study has evaluated the long term forest fire events with respect to India’s state boundary, its seasonal monthly trend, all forest categories of LULC and future climate anomalies datasets over the Indian region. Furthermore, the spatial analysis revealed the trend and their relationship. The state wise evaluation of forest fire events reflects that the state of Mizoram has the highest forest fire frequency percentage (11.33%) followed by Chhattisgarh (9.39%), Orissa (9.18%), Madhya Pradesh (8.56%), Assam (8.45%), Maharashtra (7.35%), Manipur (6.94%), Andhra Pradesh (5.49%), Meghalaya (4.86%) and Telangana (4.23%) when compared to the total country’s forest fire counts. The various LULC categories which represent the forest show some notable forest fire trends. The category ‘Deciduous Broadleaf Forest’ retain the highest fire frequency equivalent to 38.1% followed by ‘Mixed Forest’ (25.6%), ‘Evergreen Broadleaf Forest’ (16.5%), ‘Deciduous Needle leaf Forest’ (11.5%), ‘Shrub land’ (5.5%), ‘Evergreen Needle leaf Forest’ (1.5%) and ‘Plantations’ (1.2%). Monthly seasonal variation of forest fire events reveal the highest forest fire frequency percentage in the month of ‘March’ (55.4%) followed by ‘April’ (28.2%), ‘February’ (8.1%), ‘May’ (6.7%), ‘June’ (0.9%) and ‘January’ (0.7%). The evaluation of future climate data for the year 2030 shows significant increase in forest fire seasonal temperature and abrupt annual rainfall pattern; therefore, future forest fires will be more intensified in large parts of India, whereas it will be more crucial for some of the states such as Orissa, Chhattisgarh, Mizoram, Assam and in the lower Sivalik range of Himalaya. The deciduous forests will further degrade in future. The highlight/results of this study have very high importance because such spatial relationship among the various datasets is analysed at the country level in view of the future climate scenario. Such analysis gives insight to the policymakers to make sustainable future plans for prioritization of the various state forests suffering from forest fire keeping in mind the future climate change scenario.
机译:在气候变化情景中分析森林火灾事件对于保护森林免于进一步退化至关重要。地理空间技术是一种先进的工具,具有巨大的能力,可以同时评估数据集的数量并分析隐藏的关系和趋势。这项研究评估了与印度国家边界,季节性季节趋势,LULC的所有森林类别以及印度地区未来气候异常数据集有关的长期森林火灾事件。此外,空间分析揭示了趋势及其关系。对森林火灾事件的国家明智评估表明,米佐拉姆邦森林火灾发生率最高(11.33%),其次是恰蒂斯加尔邦(9.39%),奥里萨邦(9.18%),中央邦(8.56%),阿萨姆邦(8.45%) ),马哈拉施特拉邦(7.35%),曼尼普尔(6.94%),安得拉邦(5.49%),梅加拉亚邦(4.86%)和泰兰加纳邦(4.23%),与该国的森林火灾总数相比。代表森林的各种LULC类别都显示出一些明显的森林火灾趋势。落叶阔叶林类别的最高火灾频率相当于38.1%,其次是“混合林”(25.6%),“常绿阔叶林”(16.5%),“落叶针叶林”(11.5%),“灌木丛”土地”(5.5%),“常绿针叶林”(1.5%)和“种植园”(1.2%)。森林火灾事件的每月季节性变化显示“ 3月”(55.4%)月份的森林火灾发生频率百分比最高,其次是“ 4月”(28.2%),“ 2月”(8.1%),“ 5月”(6.7%) ,“ 6月”(0.9%)和“ 1月”(0.7%)。对2030年未来气候数据的评估显示,森林火灾的季节性温度显着上升,年降水量突然增加。因此,未来印度大部分地区的森林大火将更加加剧,而对于奥里萨邦(Orissa),恰蒂斯加尔邦(Chhattisgarh),米佐拉姆邦(Mizoram),阿萨姆邦(Assam)和喜马拉雅山脉西瓦里克(Sivalik)较低地区的某些州来说,这将更为重要。落叶林将在未来进一步退化。这项研究的重点/结果非常重要,因为考虑到未来的气候情景,在国家一级分析了各种数据集之间的这种空间关系。这种分析为决策者提供了洞察力,使他们可以制定可持续的未来计划,优先考虑遭受森林火灾的各种州森林,并牢记未来的气候变化情景。

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