Preprocessing approaches in machine-learning-based groundwater potential mapping: an application to the Koulikoro and Bamako regions, Mali
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Published:2022-01-18
Issue:2
Volume:26
Page:221-243
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ISSN:1607-7938
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Container-title:Hydrology and Earth System Sciences
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language:en
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Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Gómez-Escalonilla VíctorORCID, Martínez-Santos Pedro, Martín-Loeches Miguel
Abstract
Abstract. Groundwater is crucial for domestic supplies in the Sahel, where the
strategic importance of aquifers will increase in the coming years due to
climate change. Groundwater potential mapping is a valuable tool to underpin
water management in the region and, hence, to improve drinking water access.
This paper presents a machine learning method to map groundwater potential.
This is illustrated through its application in two administrative regions of
Mali. A set of explanatory variables for the presence of groundwater is
developed first. Scaling methods (standardization, normalization, maximum
absolute value and max–min scaling) are used to avoid the pitfalls
associated with reclassification. Noisy, collinear and counterproductive
variables are identified and excluded from the input dataset. A total of 20 machine
learning classifiers are then trained and tested on a large borehole
database (n=3345) in order to find meaningful correlations between the
presence or absence of groundwater and the explanatory variables. Maximum
absolute value and standardization proved the most efficient scaling
techniques, while tree-based algorithms (accuracy >0.85)
consistently outperformed other classifiers. The borehole flow rate data were
then used to calibrate the results beyond standard machine learning metrics,
thereby adding robustness to the predictions. The southern part of the study
area presents the better groundwater prospect, which is consistent with
the geological and climatic setting. Outcomes lead to three major
conclusions: (1) picking the best performers out of a large number of
machine learning classifiers is recommended as a good methodological
practice, (2) standard machine learning metrics should be complemented with
additional hydrogeological indicators whenever possible and (3) variable
scaling contributes to minimize expert bias.
Funder
Ministerio de Ciencia, Innovación y Universidades
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
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