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首页> 外文期刊>The Science of the Total Environment >Predicting the deforestation probability using the binary logistic regression, random forest, ensemble rotational forest, REPTree: A case study at the Gumani River Basin, India
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Predicting the deforestation probability using the binary logistic regression, random forest, ensemble rotational forest, REPTree: A case study at the Gumani River Basin, India

机译:使用二进制逻辑回归,随机森林,集合旋转森林,复仇者预测森林森林概率:甘尼河流域,印度甘蓝河流域

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摘要

Rapid population growth and its corresponding effects like the expansion of human settlement, increasing agricultural land, and industry lead to the loss of forest area in most parts of the world especially in such highly populated nations like India. Forest canopy density (FCD) is a useful measure to assess the forest cover change in its own as numerous works of forest change have been done using only FCD with the help of remote sensing and CIS. The coupling of binary logistic regression (BLR), random forest (RF), ensemble of rotational forest and reduced error pruning trees (RTF-REFTree) with FCD makes it more convenient to find out the deforestation probability. Advanced vegetation index (AVI), bare soil index (BSI), shadow index (SI), and scaled vegetation density (VD) derived from Landsat imageries are the main input parameters to identify the FCD. After preparing the FCDs of 1990, 2000,2010 and 2017 the deforestation map of the study area was prepared and considered as dependent parameter for deforestation probability modelling. On the other hand, twelve deforestation determining factors were used to delineate the deforestation probability with the help of BLR, RF and RTF-REPTree models. These deforestation probability models were validated through area under curve (AUC), receiver operating characteristics (ROC), efficiency, true skill statistics (TSS) and Kappa co-efficient The validation result shows that all the models like BLR (AUC = 0.874), RF (AUC = 0.886) and RTF-REPTree (AUC = 0.919) have good capability of assessing the deforestation probability but among them, RTF-REPTree has the highest accuracy level. The result also shows that low canopy density area i.e. not under the dense forest cover has increased by 9.26% from 1990 to 2017. Besides, nearly 30% of the forested land is under high to very high deforestation probable zone, which needs to be protected with immediate measures.
机译:人口增长迅速及其相应的效果,如人类沉降,增加农业用地和产业的扩大,导致世界大部分地区的森林面积损失,特别是在印度这样的高度人口稠密的国家。森林冠层密度(FCD)是评估森林覆盖变革的有用措施,因为只有在遥感和CIS的帮助下只使用FCD完成了许多森林变化的作品。二元逻辑回归(BLR),随机森林(RF),旋转森林和减少误差修剪树(RTF-REFTEE)的耦合使得找出砍伐森林概率更方便。先进的植被指数(AVI),裸土指数(BSI),阴影指数(SI)和源自Landsat Imageries的植被密度(VD)是识别FCD的主要输入参数。在准备1990年的FCD之后,2000,2010和2017年制备了研究区域的森林砍伐地图,并被认为是砍伐森林概率建模的依赖参数。另一方面,在BLR,RF和RTF-REPTREE模型的帮助下使用十二个森林砍伐确定因子来描绘森林砍伐概率。这些遮挡概率模型通过曲线(AUC),接收器操作特性(ROC),效率,真实技能统计(TSS)和Kappa合高效的验证结果验证了验证了验证的验证结果表明,BLR(AUC = 0.874)等所有模型, RF(AUC = 0.886)和RTF-REPTRE(AUC = 0.919)具有评估砍伐森林概率但其中的良好能力,而RTF-REPTRE具有最高的准确度。结果还表明,低层冠层密度面积,即在浓度下的森林覆盖率下降了9.26%,从1990年到2017年增加了9.26%。此外,近30%的森林土地低至非常高的森林砍伐可能的区域,需要受到保护立即采取措施。

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