Houston GNSS Network for Subsidence and Faulting Monitoring: Data Analysis Methods and Products

被引:14
|
作者
Wang, Guoquan [1 ]
Greuter, Ashley [2 ]
Petersen, Christina M. [2 ]
Turco, Michael J. [2 ]
机构
[1] Univ Houston, Dept Earth & Atmospher Sci, Houston, TX 77204 USA
[2] Harris Galveston Subsidence Dist, 1660 West Bay Area Blvd, Friendswood, TX 77546 USA
关键词
Faulting; Global navigation satellite system (GNSS); Houston; Reference frame; Seasonal motion; Subsidence; REFERENCE FRAME; LAND SUBSIDENCE; TIME-SERIES; GEODETIC INFRASTRUCTURE; GROUND DEFORMATION; PUERTO-RICO; GPS; TEXAS; COMPACTION; RECEIVER;
D O I
10.1061/(ASCE)SU.1943-5428.0000399
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Harris-Galveston Subsidence District (HGSD), in collaboration with several other agencies, has been operating a dense Global Navigation Satellite System (GNSS) network for subsidence and faulting monitoring within the Greater Houston region since the early 1990s. The GNSS network is designated HoustonNet, comprising approximately 250 permanent GNSS stations as of 2021. This paper documents the methods used to produce position time series, transform coordinates from the global to regional reference frames, identify outliers and steps, analyze seasonal movements, and estimate site velocities and uncertainties. The GNSS positioning methods presented in this paper achieve 2-4-mm RMS accuracy for daily positions in the north-south and east-west directions and 5-8-mm accuracy in the vertical direction within the Greater Houston region. Five-year or longer continuous observations are able to achieve submillimeter-per-year uncertainties (95% confidence interval) for both horizontal and vertical site velocities. Two decades of GNSS observations indicate that Katy in Fort Bend County, Jersey Village in northwestern Harris County, and The Woodlands in southern Montgomery County have been the areas most affected by subsidence (1-2 cm/year) since the 2000s; the overall subsidence rate and the size of subsiding area (>5 mm/year) have been decreasing as a result of the groundwater regulations enforced by HGSD and other local agencies. HoustonNet data and products are released to the public through HGSD. The primary products are the daily East-North-Up (ENU) position time series and site velocities with respect to the International GNSS Service (IGS) Reference Frame 2014 (IGS14), the stable Gulf of Mexico Reference Frame (GOM20), and the stable Houston Reference Frame (Houston20). The ENU position time series with respect to Houston20 are recommended for delineating subsidence and faulting within the Greater Houston region. The ENU time series with respect to GOM20 are recommended for studying subsidence and faulting within the Gulf coastal plain and sea-level changes along the Gulf Coast. The entire HoustonNet data set is reprocessed every a few years with updated positioning software, IGS and regional reference frames, and data analysis tools. We recommend that users use the most recent release of HoustonNet data products and avoid mixing old and new positions.
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页数:20
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