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Application of random forest and multi-linear regression methods in downscaling GRACE derived groundwater storage changes

机译:随机森林和多线性回归方法在较低的宽限下衍生地下水储存变化

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The advent of Gravity Recovery and Climate Experiment (GRACE) has opened the doors for remote monitoring of gravitational changes and its derivatives across the globe, but received less attention due to poor spatial and temporal representation. Statistical models of varying complexity are commonly employed to downscale the GRACE datasets for use with local to regional applications. This study presents the application of two commonly employed machine learning models, multi-linear regression (MLR) and random forest (RF), in spatially downscaling (from 1 degrees to 0.25 degrees) the GRACE-derived terrestrial water storage anomalies (TWSA) by establishing a correlation with various land surface and hydroclimatic variables. The downscaled TWSA was further converted into groundwater storage anomalies. Applicability of the proposed methods was tested on four contrasting hydrogeological basins of India. For each basin, the significant predictor variables were considered to establish the relations. Seasonal groundwater levels observed in 236 wells during 2006-2015 were used for method validation and accuracy assessment. We observed a close match between GRACE-derived groundwater levels and the measurements for three of the four basins (r = 0.40-0.92, Root mean square error (RMSE) = 3.6-10.5 cm). Our results indicate that the predictor variables to downscale TWSA should be considered cautiously based on the hydrogeological, topographical, and meteorological characteristics of the basin.
机译:引力恢复和气候实验(Grace)的出现开辟了远离全球引力变化及其衍生物的门,但由于空间和时间差,由于空间和时间差而受到更少的关注。不同复杂性的统计模型通常用于降低栅格数据集以便与本地应用程序一起使用。本研究介绍了两个常用的机器学习模型,多线性回归(MLR)和随机森林(RF),在空间缩小(从1度到0.25度)的宽限性地下水储存异常(TWSA)中建立与各种陆地表面和循环变量的相关性。较低的TWSA进一步转化为地下水储存异常。在印度的四个对比水文盆地测试了所提出的方法的适用性。对于每个盆地,考虑了显着的预测变量来建立关系。 2006 - 2015年在236孔中观察到的季节性地下水水平用于方法验证和准确性评估。我们观察到恩典地下水位之间的紧密匹配和四个盆中三个的测量(R = 0.40-0.92,均均方误差(RMSE)= 3.6-10.5cm)。我们的结果表明,基于盆地的水文地质,地形和气象特征,应谨慎地考虑预测仪变量。

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