TY - JOUR
T1 - Spatio-temporal estimation of monthly groundwater levels from GPS-based land deformation
AU - Ali, Muhammad Zeeshan
AU - Chu, Hone Jay
AU - Tatas,
AU - Burbey, Thomas J.
N1 - Funding Information:
We acknowledge the financial support from the MOST (Ministry of Science and Technology), Taiwan . This research was funded by MOST, Taiwan , grant number 105-2621-M-006 -011 - and 109-2621-M-006 -003 -. We thank the Central Geological Survey and Water Resources Agency in Taiwan for providing valuable geological survey data, groundwater monitoring records, multi-level compaction monitoring records, precise leveling data and drilling data of groundwater stations that were used in this study. We also thank Water Resources Agency and Institute of Earth Sciences, Academia Sinica, Taiwan for GPS displacement data support.
Funding Information:
We acknowledge the financial support from the MOST (Ministry of Science and Technology), Taiwan. This research was funded by MOST, Taiwan, grant number 105-2621-M-006 -011 - and 109-2621-M-006 -003 -. We thank the Central Geological Survey and Water Resources Agency in Taiwan for providing valuable geological survey data, groundwater monitoring records, multi-level compaction monitoring records, precise leveling data and drilling data of groundwater stations that were used in this study. We also thank Water Resources Agency and Institute of Earth Sciences, Academia Sinica, Taiwan for GPS displacement data support.
Publisher Copyright:
© 2021 Elsevier Ltd
PY - 2021/9
Y1 - 2021/9
N2 - Significant subsidence is susceptible to groundwater level variations in aquifer systems. The relation between groundwater level change and global positioning system (GPS) estimated subsidence is spatially variable. Time-dependent spatial regression can be used for the estimation of groundwater level changes using GPS based deformation data. Furthermore, the model can be validated using observed hydraulic head data from available monitoring stations. This study uses GPS station data to estimate the monthly groundwater levels in the west-central Taiwan for the period: 2016–17. Time-dependent spatial regression provides a more realistic estimation of groundwater level changes in response to highly heterogeneous aquifer properties than other methods. The high correlation (r = 0.95) between observed and estimated groundwater levels shows that GPS estimated deformations represent an alternative approach for estimating seasonal groundwater changes. Due to availability of spatially broad/low cost GPS data (compared to the sparse availability groundwater monitoring stations), the use of GPS data represents a powerful solution for future monitoring of estimated seasonal groundwater level changes in areas where only few groundwater observations are available.
AB - Significant subsidence is susceptible to groundwater level variations in aquifer systems. The relation between groundwater level change and global positioning system (GPS) estimated subsidence is spatially variable. Time-dependent spatial regression can be used for the estimation of groundwater level changes using GPS based deformation data. Furthermore, the model can be validated using observed hydraulic head data from available monitoring stations. This study uses GPS station data to estimate the monthly groundwater levels in the west-central Taiwan for the period: 2016–17. Time-dependent spatial regression provides a more realistic estimation of groundwater level changes in response to highly heterogeneous aquifer properties than other methods. The high correlation (r = 0.95) between observed and estimated groundwater levels shows that GPS estimated deformations represent an alternative approach for estimating seasonal groundwater changes. Due to availability of spatially broad/low cost GPS data (compared to the sparse availability groundwater monitoring stations), the use of GPS data represents a powerful solution for future monitoring of estimated seasonal groundwater level changes in areas where only few groundwater observations are available.
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U2 - 10.1016/j.envsoft.2021.105123
DO - 10.1016/j.envsoft.2021.105123
M3 - Article
AN - SCOPUS:85109890190
SN - 1364-8152
VL - 143
JO - Environmental Modelling and Software
JF - Environmental Modelling and Software
M1 - 105123
ER -