class='kwd-title'>Method name: Random forest and'/> Evaluation of performance of drought prediction in Indonesia based on TRMM and MERRA-2 using machine learning methods
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Evaluation of performance of drought prediction in Indonesia based on TRMM and MERRA-2 using machine learning methods

机译:基于TRMM和MERRA-2的机器学习方法评估印度尼西亚的干旱预报性能

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摘要

class="kwd-title">Method name: Random forest and CART class="kwd-title">Keywords: Drought, Random forest, CART, Remote-sensing class="head no_bottom_margin" id="abs0010title">AbstractEast Nusa Tenggara Province is one of the most vulnerable regions in Indonesia to drought. Drought prediction is definitely needed as a mitigation action to minimize the risk of drought. However, a sparse dataset has led to difficulties in accurately predicting future droughts in areas without meteorological stations, and hence a dataset with a finer resolution is required. This research investigates the performance of a 3-month Standardized Precipitation Index (SPI) derived from the Tropical Rainfall Measuring Mission (TRMM) and Modern-Era Retrospective analysis for Research and Applications (MERRA-2) to predict drought. CART and Random Forest are applied as the classification methods. Using several predictors, the analysis finds that CART has lower predictability than Random Forest. The average accuracy of the prediction using Random Forest reaches 100% with an average Area Under Curve (AUC) of about 0.8. The analysis also shows that predictions using the MERRA-2 dataset lead to higher accuracy and AUC than those using the TRMM. Therefore, using the MERRA-2 dataset predicted by Random Forest can be an optimal way to predict drought in East Nusa Tenggara. The methods confirmed that average soil surface temperature (day and night), Multivariate ENSO Index (MEI), Arctic Oscillation Index (AOI) and Normalized Difference Vegetation Index (NDVI) are strong predictors of drought. The performance of CART and Random Forest is improved with the Synthetic Minority Over-Sampling Technique (SMOTE).The techniques described: class="first-line-outdent" id="lis0005">
  • • translate drought information and predictors of drought into a base classifier that optimizes the AUC;
  • • allow drought to be predicted for many grid points efficiently and with high accuracy; and
  • • are computationally efficient and easy to implement.
  • 机译:<!-fig ft0-> <!-fig @ position =“ anchor” mode =文章f4-> <!-fig mode =“ anchred” f5-> <!-fig / graphic | fig / alternatives / graphic mode =“ anchored” m1-> class =“ kwd-title”>方法名称:随机森林和CART class =“ kwd-title”>关键字:干旱,随机森林,CART,遥感 class =“ head no_bottom_margin” id =“ abs0010title”>摘要东努沙登加拉省是印度尼西亚最容易遭受干旱的地区之一。绝对需要干旱预测作为缓解措施,以最大程度降低干旱风险。但是,稀疏的数据集导致难以准确预测没有气象站的地区未来的干旱,因此需要分辨率更高的数据集。这项研究调查了3个月标准化降水指数(SPI)的性能,该指数来自热带降雨测量任务(TRMM)和现代时代研究和应用回顾性分析(MERRA-2)来预测干旱。 CART和随机森林被用作分类方法。使用多个预测变量,分析发现CART的可预测性低于随机森林。使用随机森林进行预测的平均准确性达到100%,平均曲线下面积(AUC)约为0.8。分析还显示,与使用TRMM相比,使用MERRA-2数据集进行的预测会带来更高的准确性和AUC。因此,使用随机森林预测的MERRA-2数据集可能是预测东努沙登加拉邦干旱的最佳​​方法。这些方法证实,平均土壤表面温度(白天和黑夜),多元ENSO指数(MEI),北极涛动指数(AOI)和归一化植被指数(NDVI)是干旱的重要指标。通过综合少数群体过采样技术(SMOTE),可以提高CART和随机森林的性能。这些技术描述如下: class =“ first-line-outdent” id =“ lis0005”> <!-list-behavior = simple prefix-word = mark-type = none max-label-size = 9->
  • •将干旱信息和干旱预测因子转换为可优化AUC的基本分类器; < li id =“ lsti0010”>•可以高效,高精度地预测许多网格点的干旱;和
  • •的计算效率高且易于实现。
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