On Predictability of Groundwater Level in Shallow Wells Using Satellite Observations

被引:0
作者
Madhumita Sahoo
Aman Kasot
Anirban Dhar
Amlanjyoti Kar
机构
[1] Indian Institute of Technology Kharagpur,School of Water Resources
[2] Indian Institute of Technology Kharagpur,Department of Civil Engineering
[3] Central Ground Water Board,undefined
来源
Water Resources Management | 2018年 / 32卷
关键词
Groundwater storage change; Satellite observations; Regional scale groundwater modeling; Grace; Machine learning techniques;
D O I
暂无
中图分类号
学科分类号
摘要
Management of groundwater resources needs continuous and efficient monitoring networks. Sparsity of in situ measurements both spatially and temporally creates hindrance in framing groundwater management policies. Remotely sensed data can be a possible alternative. GRACE satellites can trace groundwater changes globally. Moreover, gridded rainfall (RF) and soil moisture (SM) data can shed some light on the hydrologic system. The present study attempts to use GRACE, RF and SM data at a local scale to predict groundwater level. Ground referencing of satellite data were done by using three machine learning techniques- Support Vector Regression (SVR), Random Forest Method (RFM) and Gradient Boosting Mechanism (GBM). The performance of the developed methodology was tested on a part of the Indo-Gangetic basin. The analyses were carried out for nine GRACE pixels to identify relationship between individual well measurements and satellite-derived data. These nine pixels are classified on the basis of presence or absence of hydrological features. Pixels with the presence of perennial streams showed reasonably good results. However, pixels with wells located mostly near the stream gave relatively poorer predictions. These results help in identifying wells which can reasonably represent the regional shallow groundwater dynamics.
引用
收藏
页码:1225 / 1244
页数:19
相关论文
共 147 条
  • [1] Ahmad S(2010)Estimating soil moisture using remote sensing data: a machine learning approach Adv Water Resour 33 69-80
  • [2] Kalra A(2014)Characterization of Ethiopian mega hydrogeological regimes using GRACE, TRMM and GLDAS datasets Adv Water Resour 74 64-78
  • [3] Stephen H(2007)Support vector regression Neural Inf Proces Lett Rev 11 203-224
  • [4] Awange JL(2014)Estimation of soil moisture patterns in mountain grasslands by means of SAR RADARSAT2 images and hydrological modeling J Hydrol 516 245-257
  • [5] Gebremichael M(2016)Validation of GRACE based groundwater storage anomaly using in-situ groundwater level measurements in India J Hydrol 543 729-738
  • [6] Forootan E(2004)Identification of support vector machines for runoff modeling J Hydroinf 6 265-280
  • [7] Wakbulcho G(2001)Random forests Mach Learn 45 5-32
  • [8] Anyah R(2013)Estimating the above-ground biomass in Miombo savanna woodlands (Mozambique, East Africa) using L-band synthetic aperture radar data Remote Sens 5 2013-2583
  • [9] Ferreira VG(2011)An improved genetic programming to SSM/I estimation typhoon precipitation over ocean Hydrol Process 25 2573-3772
  • [10] Alemayehu T(2015)Predicting eucalyptus spp. stand volume in Zululand, South Africa: an analysis using a stochastic gradient boosting regression ensemble with multisource data sets Int J Remote Sens 36 3751-128