CHEN Yongqi, WU Jicang. Methodology for Monitoring Regional Crustal Deformation Using GPS[J]. Geomatics and Information Science of Wuhan University, 2007, 32(11): 961-966.
Citation: CHEN Yongqi, WU Jicang. Methodology for Monitoring Regional Crustal Deformation Using GPS[J]. Geomatics and Information Science of Wuhan University, 2007, 32(11): 961-966.

Methodology for Monitoring Regional Crustal Deformation Using GPS

Funds: 香港研究资助局资助项目(PolyU5134/06E);国家自然科学基金资助项目(40674004)
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  • Received Date: August 28, 2007
  • Revised Date: August 28, 2007
  • Published Date: November 04, 2007
  • The relevant theory and methods for studying regional crustal deformation with application of GPS technology are reviewed,the modern developments in this field is discussed.The strain analysis with least squares collocation method for displacements and inversion method of negative dislocation model are mainly introduced.The advanced spatial-temporal analysis methods for extraction of crustal deformation signals from space geodetic measurements are prospected.
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