QIU Weining, CHEN Yongqi. Carrier Phase Wide Lane Combination for High Precision Deformation Monitoring[J]. Geomatics and Information Science of Wuhan University, 2004, 29(10): 889-892.
Citation: QIU Weining, CHEN Yongqi. Carrier Phase Wide Lane Combination for High Precision Deformation Monitoring[J]. Geomatics and Information Science of Wuhan University, 2004, 29(10): 889-892.

Carrier Phase Wide Lane Combination for High Precision Deformation Monitoring

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  • Received Date: April 24, 2004
  • Published Date: October 04, 2004
  • In the case that the accurate coordinates of the monitoring point and reference station are known, the ambiguities of double difference phase observations are obtained. When the deformation is relatively, large high precision deformation value can be derived from the combination with different carrier phase observations. Using single epoch observations in the data processing, continuous monitoring can be achieved.
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