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Constructing the machine learning techniques based spatial drought vulnerability index in Karnataka state of India

机译:构建印度卡纳塔克邦的基于机器学习技术的空间干旱脆弱性指数

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The drought induced vulnerability is owed much to rapid modernization, climate extremes, and over exploitation of natural resources. However, a natural phenomenon, the drought is amplified by anthropogenic activities that in its enormity influences water availability, agricultural productivity, ecosystem, groundwater storage. The Karnataka state of India is frequently affected by the drought that causes huge loss in agricultural sector and other allied sectors. Therefore, it is essential to measure the vulnerability status for the better management of natural resources in the state of Karnataka. No advanced models are being used yet to portray the drought vulnerability status. Different advanced machine learning models are effective in predicting various physical vulnerabilities. The aim of this study was to use sophisticated machine learning models to precisely define relative drought vulnerability. In that endeavour, it used two advanced machine-learning algorithms (MLAs), namely, Bagging and Artificial Neural Network (ANN) which are still not used in this field. Twenty-six meteorological and socio-economical parameters were considered to find the most drought vulnerable areas. The predisposing parameters were classified as resilience (7 parameters), sensitivity (9 parameters), and exposure (10 parameters). The researchers have produced drought vulnerability maps for overall condition, resilience, sensitivity, and exposure. The relative drought vulnerability maps (RDVMs) clearly show that 40.87%-52.03% of areas fall under very high vulnerability, which is situated in the central and eastern parts of the state. The prediction capacity of newly built models was judged with efficiency, root mean square error (RMSE), true skill statistics (TSS), Friedman and Wilcoxon rank test, and area under the curve (AUC) of receiver operating characteristic (ROC). All of them showed satisfactory results - the RMSE value of 0.32 and 0.33, TSS values of 0.82 and 0.81, and AUC values of 86.50% and 84.20% as obtained by ANN and bagging models, respectively. The produced RDVMs demonstrate the urgency of policy interventions to minimize vulnerability in prioritized areas.
机译:干旱诱导的脆弱性欠迅速现代化,气候极端以及对自然资源开采的速度。然而,天然现象,通过人为的活动扩增,其巨大的活动会影响水可用性,农业生产力,生态系统,地下水储存。印度卡纳塔克邦经常受到造成农业部门和其他盟军行业巨大损失的影响。因此,必须测量易受伤害状态,以便在卡纳塔克邦的州更好地管理自然资源。没有使用高级模型来描绘干旱漏洞状态。不同的先进机器学习模型可有效预测各种物理漏洞。本研究的目的是使用复杂的机器学习模型来精确地定义相对干旱脆弱性。在这种努力中,它使用了两个先进的机器学习算法(MLA),即袋装和人工神经网络(ANN),其仍未在该领域中使用。考虑了二十六个气象和社会经济参数,以找到最多的干旱脆弱地区。将备用参数分类为弹性(7个参数),灵敏度(9个参数)和曝光(10个参数)。研究人员为整体条件,弹性,灵敏度和曝光产生了干旱漏洞图。相对干旱漏洞地图(RDVM)清楚地表明,40.87%-52.03%的地区属于非常高的脆弱性,位于州的中央和东部。新建模型的预测能力采用效率,均衡方误差(RMSE),真正的技能统计(TSS),弗里德曼和Wilcoxon等级测试,以及接收器操作特征(ROC)的曲线(AUC)下的区域。所有这些都表现出令人满意的结果 - 0.32和0.33,TSS值的RMSE值分别由ANN和装袋模型获得的86.50%和84.20%的AUC值。所产生的RDVM展示了政策干预的紧迫性,以尽量减少优先区漏洞。

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