Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF Technique

Reliable seasonal prediction of groundwater levels is not always possible when the quality and the amount of available on-site groundwater data are limited. In the present work, a hybrid K-Nearest Neighbor-Random Forest (KNN-RF) is used for the prediction of variations in groundwater levels (L) of a...

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Main Authors: Omar Haji Kombo, Santhi Kumaran, Yahya H. Sheikh, Alastair Bovim, Kayalvizhi Jayavel
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Hydrology
Subjects:
Online Access:https://www.mdpi.com/2306-5338/7/3/59
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spelling doaj-ab7b5d98195843f6b65f03044a99c5982020-11-25T03:56:36ZengMDPI AGHydrology2306-53382020-08-017595910.3390/hydrology7030059Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF TechniqueOmar Haji Kombo0Santhi Kumaran1Yahya H. Sheikh2Alastair Bovim3Kayalvizhi Jayavel4African Centre of Excellence in Internet of Things, University of Rwanda, Kigali 3900, RwandaDepartment of Information Technology, Copperbelt University, Kitwe 21692, ZambiaDepartment of Computer Science, State University of Zanzibar, P.O. Box 146, Zanzibar, TanzaniaInmarsat, 99 City Road, London EC1Y 1AX, UKDepartment of Information Technology, SRM Institute of Science and Technology, Chennai 603203, IndiaReliable seasonal prediction of groundwater levels is not always possible when the quality and the amount of available on-site groundwater data are limited. In the present work, a hybrid K-Nearest Neighbor-Random Forest (KNN-RF) is used for the prediction of variations in groundwater levels (L) of an aquifer with the groundwater relatively close to the surface (<10 m) is proposed. First, the time-series smoothing methods are applied to improve the quality of groundwater data. Then, the ensemble K-Nearest Neighbor-Random Forest (KNN-RF) model is treated using hydro-climatic data for the prediction of variations in the levels of the groundwater tables up to three months ahead. Climatic and groundwater data collected from eastern Rwanda were used for validation of the model on a rolling window basis. Potential predictors were: the observed daily mean temperature (T), precipitation (P), and daily maximum solar radiation (S). Previous day’s precipitation P (t − 1), solar radiation S (t), temperature T (t), and groundwater level L (t) showed the highest variation in the fluctuations of the groundwater tables. The KNN-RF model presents its results in an intelligible manner. Experimental results have confirmed the high performance of the proposed model in terms of root mean square error (RMSE), mean absolute error (MAE), Nash–Sutcliffe (NSE), and coefficient of determination (<i>R</i><sup>2</sup>).https://www.mdpi.com/2306-5338/7/3/59seasonal forecastingensemble modelgroundwater levelmachine learningartificial neural networkpredictive modeling
collection DOAJ
language English
format Article
sources DOAJ
author Omar Haji Kombo
Santhi Kumaran
Yahya H. Sheikh
Alastair Bovim
Kayalvizhi Jayavel
spellingShingle Omar Haji Kombo
Santhi Kumaran
Yahya H. Sheikh
Alastair Bovim
Kayalvizhi Jayavel
Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF Technique
Hydrology
seasonal forecasting
ensemble model
groundwater level
machine learning
artificial neural network
predictive modeling
author_facet Omar Haji Kombo
Santhi Kumaran
Yahya H. Sheikh
Alastair Bovim
Kayalvizhi Jayavel
author_sort Omar Haji Kombo
title Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF Technique
title_short Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF Technique
title_full Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF Technique
title_fullStr Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF Technique
title_full_unstemmed Long-Term Groundwater Level Prediction Model Based on Hybrid KNN-RF Technique
title_sort long-term groundwater level prediction model based on hybrid knn-rf technique
publisher MDPI AG
series Hydrology
issn 2306-5338
publishDate 2020-08-01
description Reliable seasonal prediction of groundwater levels is not always possible when the quality and the amount of available on-site groundwater data are limited. In the present work, a hybrid K-Nearest Neighbor-Random Forest (KNN-RF) is used for the prediction of variations in groundwater levels (L) of an aquifer with the groundwater relatively close to the surface (<10 m) is proposed. First, the time-series smoothing methods are applied to improve the quality of groundwater data. Then, the ensemble K-Nearest Neighbor-Random Forest (KNN-RF) model is treated using hydro-climatic data for the prediction of variations in the levels of the groundwater tables up to three months ahead. Climatic and groundwater data collected from eastern Rwanda were used for validation of the model on a rolling window basis. Potential predictors were: the observed daily mean temperature (T), precipitation (P), and daily maximum solar radiation (S). Previous day’s precipitation P (t − 1), solar radiation S (t), temperature T (t), and groundwater level L (t) showed the highest variation in the fluctuations of the groundwater tables. The KNN-RF model presents its results in an intelligible manner. Experimental results have confirmed the high performance of the proposed model in terms of root mean square error (RMSE), mean absolute error (MAE), Nash–Sutcliffe (NSE), and coefficient of determination (<i>R</i><sup>2</sup>).
topic seasonal forecasting
ensemble model
groundwater level
machine learning
artificial neural network
predictive modeling
url https://www.mdpi.com/2306-5338/7/3/59
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AT yahyahsheikh longtermgroundwaterlevelpredictionmodelbasedonhybridknnrftechnique
AT alastairbovim longtermgroundwaterlevelpredictionmodelbasedonhybridknnrftechnique
AT kayalvizhijayavel longtermgroundwaterlevelpredictionmodelbasedonhybridknnrftechnique
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