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Deforestation susceptibility assessment and prediction in hilltop mining-affected forest region

机译:山顶采矿影响森林地区森林森林敏感性评估与预测

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This work mainly focused on deforestation susceptibility (DS) assessment and its prediction based on statistical models (FR, LR & AHP) in the Saranda forest, India. Also, efforts had been made to quantify the effect of mining on deforestation. We had considered twenty-five (twenty present and five predicted) causative variables of deforestation, including climate, natural or geomorphological, forestry, topographical, environmental, and anthropogenic. The predicted variables have been generated from different simulation models. Also, very high-resolution, Google Earth imagery have been used in time series analysis for deforestation from 1987 to 2020 data and generated dependent variable. On deforestation analysis, it was observed that a total of 4197.84 ha forest areas were lost in the study region due to illegal mining, agricultural and tribal people allied activities. The DS results have shown that of total existing forest area, 11.22% area were under very high, 16.08% under high, 16.18% under moderate, 24.25% under low, and 32.27% falls very low categories. According to the DS assessment and predicted results, the very high susceptibility classes were found at and close to mines, agricultural, roads and settlement's surrounding sites. The sensitivity analysis results also shown that some causative variables (maximum temperature (2.95%), minimum temperature (0.51%), rainfall (2.69%), LST (4.56%), hot spot (7.36%), aspect (1.14%), NDV1 (2.64%), forest density (3.78%), lithology (3.26%), geomorphology (3.00%), distance from agricultural (19.40%), soil type (2.05%), solar radiation (5.97%), LULC (3.26%), drought (3.16%), altitude (2.85%), slope (5.97%), distance from mines (18.05%), roads (2.17%), and settlements (5.18%)) were more sensitive to deforestation. Most of the sensitive parameters showed a positive correlation with DS. The AUC values of the ROC curve had shown a better fit for AHP (0.72) than (0.69) FR and LR (0.68) models for present DS results. The correlation results had shown a good inverse relationship between DS and distance from mines and foliar dust concentration. This work will espouse the future work in the effective planning and management of the mining-affected forest region and predicted deforestation susceptibility would be helpful for forest ecosystem study and policymaking.
机译:这项工作主要集中在印度森林森林森林统计模型(FR,LR&AHP)的森林森林敏感性(DS)评估及其预测。此外,已经努力量化采矿对森林砍伐的影响。我们已经考虑了二十五次(二十礼物和五个预测)的毁灭性变量,包括气候,天然或地貌,林业,地形,环境和人为。预测变量已从不同的仿真模型中生成。此外,非常高分辨率,Google地球图像已被用于时间序列分析,从1987年到2020个数据和生成的依赖变量。在砍伐森林分析上,由于非法采矿,农业和部落人民联盟活动,研究区总共损失了4197.84亩森林地区。 DS结果表明,总现有的森林面积,11.22%的面积在很高,高于16.08%,低于16.18%,低于24.25%,低32.27%跌破了很低的类别。根据DS评估和预测的结果,在矿山,农业,道路和定居点周边地点,发现了非常高的易感性等级。敏感性分析结果还表明,一些致病变量(最高温度(2.95%),最低温度(0.51%),降雨(2.69%),LST(4.56%),热点(7.36%),方面(1.14%), NDV1(2.64%),森林密度(3.78%),岩性(3.26%),地貌(3.00%),距农业(19.40%),土壤型(2.05%),太阳辐射(5.97%),LULC(3.26 %),干旱(3.16%),海拔高度(2.85%),坡度(5.97%),距离矿山(18.05%),道路(2.17%)和沉降(5.18%))对森林砍伐更敏感。大多数敏感参数显示与DS正相关。 ROC曲线的AUC值显示为AHP(0.72)比(0.69)FR和LR(0.68)模型更好的AHP(0.72)。相关结果显示了DS和距离矿山和叶面粉尘浓度之间的良好逆关系。这项工作将使未来的工作中的有效规划和管理的工作受影响的森林地区,并预测森林砍伐敏感性对森林生态系统的研究和决策具有有用的帮助。

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