Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical Approaches
The aim of this work is to investigate new approaches using methods based on statistics and geo-statistics for spatio-temporal optimization of groundwater monitoring networks. The formulated and integrated methods were tested with the groundwater quality data set of Bitterfeld/Wolfen, Germany. Spati...
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doaj-0e33a18e48c14bd6b6b4952f58f75d8e2020-11-25T00:14:23ZengMDPI AGHydrology2306-53382015-08-012314817510.3390/hydrology2030148hydrology2030148Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical ApproachesJay Krishna Thakur0Environment and Information Technology Centre—UIZ, Neue Grünstraße 38, Berlin 10179, GermanyThe aim of this work is to investigate new approaches using methods based on statistics and geo-statistics for spatio-temporal optimization of groundwater monitoring networks. The formulated and integrated methods were tested with the groundwater quality data set of Bitterfeld/Wolfen, Germany. Spatially, the monitoring network was optimized using geo-statistical methods. Temporal optimization of the monitoring network was carried out using Sen’s method (1968). For geostatistical network optimization, a geostatistical spatio-temporal algorithm was used to identify redundant wells in 2- and 2.5-D Quaternary and Tertiary aquifers. Influences of interpolation block width, dimension, contaminant association, groundwater flow direction and aquifer homogeneity on statistical and geostatistical methods for monitoring network optimization were analysed. The integrated approach shows 37% and 28% redundancies in the monitoring network in Quaternary aquifer and Tertiary aquifer respectively. The geostatistical method also recommends 41 and 22 new monitoring wells in the Quaternary and Tertiary aquifers respectively. In temporal optimization, an overall optimized sampling interval was recommended in terms of lower quartile (238 days), median quartile (317 days) and upper quartile (401 days) in the research area of Bitterfeld/Wolfen. Demonstrated methods for improving groundwater monitoring network can be used in real monitoring network optimization with due consideration given to influencing factors.http://www.mdpi.com/2306-5338/2/3/148groundwater monitoring network optimizationfactors influencing monitoring network optimizationquaternary and tertiary aquifers |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jay Krishna Thakur |
spellingShingle |
Jay Krishna Thakur Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical Approaches Hydrology groundwater monitoring network optimization factors influencing monitoring network optimization quaternary and tertiary aquifers |
author_facet |
Jay Krishna Thakur |
author_sort |
Jay Krishna Thakur |
title |
Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical Approaches |
title_short |
Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical Approaches |
title_full |
Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical Approaches |
title_fullStr |
Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical Approaches |
title_full_unstemmed |
Optimizing Groundwater Monitoring Networks Using Integrated Statistical and Geostatistical Approaches |
title_sort |
optimizing groundwater monitoring networks using integrated statistical and geostatistical approaches |
publisher |
MDPI AG |
series |
Hydrology |
issn |
2306-5338 |
publishDate |
2015-08-01 |
description |
The aim of this work is to investigate new approaches using methods based on statistics and geo-statistics for spatio-temporal optimization of groundwater monitoring networks. The formulated and integrated methods were tested with the groundwater quality data set of Bitterfeld/Wolfen, Germany. Spatially, the monitoring network was optimized using geo-statistical methods. Temporal optimization of the monitoring network was carried out using Sen’s method (1968). For geostatistical network optimization, a geostatistical spatio-temporal algorithm was used to identify redundant wells in 2- and 2.5-D Quaternary and Tertiary aquifers. Influences of interpolation block width, dimension, contaminant association, groundwater flow direction and aquifer homogeneity on statistical and geostatistical methods for monitoring network optimization were analysed. The integrated approach shows 37% and 28% redundancies in the monitoring network in Quaternary aquifer and Tertiary aquifer respectively. The geostatistical method also recommends 41 and 22 new monitoring wells in the Quaternary and Tertiary aquifers respectively. In temporal optimization, an overall optimized sampling interval was recommended in terms of lower quartile (238 days), median quartile (317 days) and upper quartile (401 days) in the research area of Bitterfeld/Wolfen. Demonstrated methods for improving groundwater monitoring network can be used in real monitoring network optimization with due consideration given to influencing factors. |
topic |
groundwater monitoring network optimization factors influencing monitoring network optimization quaternary and tertiary aquifers |
url |
http://www.mdpi.com/2306-5338/2/3/148 |
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AT jaykrishnathakur optimizinggroundwatermonitoringnetworksusingintegratedstatisticalandgeostatisticalapproaches |
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