Groundwater level prediction using machine learning algorithms in a drought-prone area
Crops; Cultivation; Decision trees; Errors; Forecasting; Groundwater resources; Learning algorithms; Mean square error; Statistical tests; Support vector machines; Absolute error; Bangladesh; Correlation coefficient; Ground water level; Groundwater prediction; Locally weighted linear regression; Mea...
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Main Authors: | Pham Q.B., Kumar M., Di Nunno F., Elbeltagi A., Granata F., Islam A.R.M.T., Talukdar S., Nguyen X.C., Ahmed A.N., Anh D.T. |
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Other Authors: | 57208495034 |
Format: | Article |
Published: |
Springer Science and Business Media Deutschland GmbH
2023
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