Methods for Characterizing Groundwater Resources with Sparse In Situ Data
Accurate characterization of groundwater resources is required for sustainable management. Due to the cost of installing monitoring wells and challenges in collecting and managing in situ data, groundwater data are sparse—especially in developing countries. In this study, we demonstrate an analysis...
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MDPI AG
2022-07-01
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Series: | Hydrology |
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Online Access: | https://www.mdpi.com/2306-5338/9/8/134 |
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author | Ren Nishimura Norman L. Jones Gustavious P. Williams Daniel P. Ames Bako Mamane Jamila Begou |
author_facet | Ren Nishimura Norman L. Jones Gustavious P. Williams Daniel P. Ames Bako Mamane Jamila Begou |
author_sort | Ren Nishimura |
collection | DOAJ |
description | Accurate characterization of groundwater resources is required for sustainable management. Due to the cost of installing monitoring wells and challenges in collecting and managing in situ data, groundwater data are sparse—especially in developing countries. In this study, we demonstrate an analysis of long-term groundwater storage changes using temporally sparse but spatially dense well data, where each well had as few as one historical groundwater measurement. We developed methods to synthetically estimate groundwater table elevation (WTE) times series by clustering wells using two different methods; a uniform grid and k-means-constrained clustering to create pseudo-wells. These pseudo-wells had a more complete groundwater level time history, which we then temporally and spatially interpolated to analyze groundwater storage changes in an aquifer. We demonstrated these methods on the Beryl-Enterprise aquifer in Utah, USA, where other researchers quantified the groundwater storage depletion rate, and the wells had a large number of historical measurements. We randomly used one measurement per well and showed that our methods yielded storage depletion rates similar to published values. We applied the method to a region in southern Niger where wells had only one measurement per well, and showed that our estimated groundwater storage change trend reasonably matched that which was calculated using GRACE satellite data. |
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issn | 2306-5338 |
language | English |
last_indexed | 2024-03-09T13:19:19Z |
publishDate | 2022-07-01 |
publisher | MDPI AG |
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series | Hydrology |
spelling | doaj.art-4cae29155cc2455aae9c094bdb4ec0d02023-11-30T21:31:36ZengMDPI AGHydrology2306-53382022-07-019813410.3390/hydrology9080134Methods for Characterizing Groundwater Resources with Sparse In Situ DataRen Nishimura0Norman L. Jones1Gustavious P. Williams2Daniel P. Ames3Bako Mamane4Jamila Begou5Department of Civil and Construction Engineering, Brigham Young University, Provo, UT 84602, USADepartment of Civil and Construction Engineering, Brigham Young University, Provo, UT 84602, USADepartment of Civil and Construction Engineering, Brigham Young University, Provo, UT 84602, USADepartment of Civil and Construction Engineering, Brigham Young University, Provo, UT 84602, USACILSS, AGRHYMET Regional Centre, Niamey 11011, NigerCILSS, AGRHYMET Regional Centre, Niamey 11011, NigerAccurate characterization of groundwater resources is required for sustainable management. Due to the cost of installing monitoring wells and challenges in collecting and managing in situ data, groundwater data are sparse—especially in developing countries. In this study, we demonstrate an analysis of long-term groundwater storage changes using temporally sparse but spatially dense well data, where each well had as few as one historical groundwater measurement. We developed methods to synthetically estimate groundwater table elevation (WTE) times series by clustering wells using two different methods; a uniform grid and k-means-constrained clustering to create pseudo-wells. These pseudo-wells had a more complete groundwater level time history, which we then temporally and spatially interpolated to analyze groundwater storage changes in an aquifer. We demonstrated these methods on the Beryl-Enterprise aquifer in Utah, USA, where other researchers quantified the groundwater storage depletion rate, and the wells had a large number of historical measurements. We randomly used one measurement per well and showed that our methods yielded storage depletion rates similar to published values. We applied the method to a region in southern Niger where wells had only one measurement per well, and showed that our estimated groundwater storage change trend reasonably matched that which was calculated using GRACE satellite data.https://www.mdpi.com/2306-5338/9/8/134groundwateraquiferssustainabilityAfricainterpolationkriging |
spellingShingle | Ren Nishimura Norman L. Jones Gustavious P. Williams Daniel P. Ames Bako Mamane Jamila Begou Methods for Characterizing Groundwater Resources with Sparse In Situ Data Hydrology groundwater aquifers sustainability Africa interpolation kriging |
title | Methods for Characterizing Groundwater Resources with Sparse In Situ Data |
title_full | Methods for Characterizing Groundwater Resources with Sparse In Situ Data |
title_fullStr | Methods for Characterizing Groundwater Resources with Sparse In Situ Data |
title_full_unstemmed | Methods for Characterizing Groundwater Resources with Sparse In Situ Data |
title_short | Methods for Characterizing Groundwater Resources with Sparse In Situ Data |
title_sort | methods for characterizing groundwater resources with sparse in situ data |
topic | groundwater aquifers sustainability Africa interpolation kriging |
url | https://www.mdpi.com/2306-5338/9/8/134 |
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