TY - JOUR
T1 - Semi-seasonal groundwater forecast using multiple data-driven models in an irrigated cropland
AU - Amaranto, Alessandro
AU - Munoz-Arriola, Francisco
AU - Corzo, Gerald
AU - Solomatine, Dimitri P.
AU - Meyer, George
N1 - Funding Information:
The authors acknowledge the support provided by the Robert B. Daugherty Water for Food Global Institute at the University of Nebraska. Some research ideas and components were also developed within the framework of the USDA National Institute of Food and Agriculture, Hatch project NEB-21-166 Accession No. 1009760 and grant No. 17-77-30006 of the Russian Science Foundation. The authors also appreciate the comments made by the reviewers and acknowledge their contribution to strength the present document.
Publisher Copyright:
© IWA Publishing 2018.
PY - 2018/11
Y1 - 2018/11
N2 - In agricultural areas where groundwater is the main water supply for irrigation, forecasts of the water table are key to optimal water management. However, water management can be constrained by semiseasonal to seasonal forecast. The objective is to create an ensemble of water table one- to fivemonth lead-time forecasts based on multiple data-driven models (DDMs). We hypothesize that datadriven modeling capabilities (e.g., random forests, support vector machines, artificial neural networks (ANNs), extreme learning machines, and genetic programming) will improve naïve and autoregressive simulations of groundwater tables. An input variable selection method was used to carry the maximum information in the input (precipitation, crop water demand, changes in groundwater table, snowmelt, and evapotranspiration) and output relationship for the DDMs. Five DDMs were implemented to forecast groundwater tables in an unconfined aquifer in the Northern High Plains (Nebraska, USA). Root mean squared error (RMSE) and Nash-Sutcliffe efficiency index were used to evaluate the skill of the model and three hydrologic regimes were determined statistically as high, mid, and low groundwater table levels. Additionally, varying storage regimes were used to construct rising and falling limbs in the tested well. Results show that all models outperform the baseline for all the lead times, ANNs being the best of all.
AB - In agricultural areas where groundwater is the main water supply for irrigation, forecasts of the water table are key to optimal water management. However, water management can be constrained by semiseasonal to seasonal forecast. The objective is to create an ensemble of water table one- to fivemonth lead-time forecasts based on multiple data-driven models (DDMs). We hypothesize that datadriven modeling capabilities (e.g., random forests, support vector machines, artificial neural networks (ANNs), extreme learning machines, and genetic programming) will improve naïve and autoregressive simulations of groundwater tables. An input variable selection method was used to carry the maximum information in the input (precipitation, crop water demand, changes in groundwater table, snowmelt, and evapotranspiration) and output relationship for the DDMs. Five DDMs were implemented to forecast groundwater tables in an unconfined aquifer in the Northern High Plains (Nebraska, USA). Root mean squared error (RMSE) and Nash-Sutcliffe efficiency index were used to evaluate the skill of the model and three hydrologic regimes were determined statistically as high, mid, and low groundwater table levels. Additionally, varying storage regimes were used to construct rising and falling limbs in the tested well. Results show that all models outperform the baseline for all the lead times, ANNs being the best of all.
KW - Data-driven models
KW - Ensemble
KW - Groundwater
KW - Semi-seasonal forecast
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U2 - 10.2166/hydro.2018.002
DO - 10.2166/hydro.2018.002
M3 - Article
AN - SCOPUS:85052081158
VL - 20
SP - 1227
EP - 1246
JO - Journal of Hydroinformatics
JF - Journal of Hydroinformatics
SN - 1464-7141
IS - 6
ER -