作者
Naeem Iqbal, Anam-Nawaz Khan, Atif Rizwan, Bong Wan Kim, Kwangsoo Kim, Do-Hyeun Kim
发表日期
2021/7/5
期刊
IEEE Access
卷号
9
页码范围
96092-96113
出版商
IEEE
简介
Drilling data for groundwater extraction incur changes over time due to variations in hydrogeological and weather conditions. At any time, if there is a need to deploy a change in drilling operations, drilling companies keep monitoring the time-series drilling data to make sure it is not introducing any changes or new errors. Therefore, a solution is needed to predict groundwater levels (GWL) and detect a change in boreholes data to improve drilling efficiency. The proposed study presents an ensemble GWL prediction (E-GWLP) model using boosting and bagging models based on stacking techniques to predict GWL for enhancing hydraulic resource management and planning. The proposed research study consists of two modules; descriptive analysis of boreholes data and GWL prediction model using ensemble model based on stacking. First, descriptive analysis techniques, such as correlation analysis and …
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