Estimation of groundwater level using artificial neural networks: a case study of Hatay-Turkey
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Date
2017Author
Üneş, Fatih
Demirci, Mustafa
Ispir, Eyup
Kaya, Yunus Ziya
Mamak, Mustafa
Tasar, Bestami
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Groundwater, which is a strategic resource in Turkey, is used for drinking se, agricultural irrigation and industrial purposes. Population increase and total water consumption are constantly increasing. In order to meet the need for water, over hoots from underground water have caused significant falls in groundwater level. Estimation of water level is important for planning an efficient and sustainable groundwater management. In this study, groundwater level, monthly mean precipitation and temperature observations of Turkish General Directorate of State Hydraulic Works (DSI) in Hatay, Amik Plain, Kumlu district were used between 2000 and 2015 years. The performance evaluation was done by creating Multi Linear Regression (MLR) and Artificial Neural Networks (ANN) models. The ANN model gave better results than the MLR model.
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2017Author
Üneş, FatihCollections
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