An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time Series

The differences in the satellite orbit and signal quality of global navigation satellite positioning system, resulting in the complexity of random walk noise in GNSS time series, has become a bottleneck problem in applying GNSS technology to the high precision deformation monitoring industry. For th...

Full description

Bibliographic Details
Main Authors: WU Hao, CAO Tingquan, HUA Xianghong, ZOU Jingui, SHI Wenzhong, LU Nan
Format: Article
Language:zho
Published: Surveying and Mapping Press 2017-05-01
Series:Acta Geodaetica et Cartographica Sinica
Subjects:
Online Access:http://html.rhhz.net/CHXB/html/2016-S2-22.htm
id doaj-ce08c116e3e940f6809aee6971cbe8c6
record_format Article
spelling doaj-ce08c116e3e940f6809aee6971cbe8c62020-11-24T22:31:08ZzhoSurveying and Mapping PressActa Geodaetica et Cartographica Sinica1001-15951001-15952017-05-0145S2223010.11947/j.AGCS.2016.F0222016S222An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time SeriesWU Hao0CAO Tingquan1HUA Xianghong2ZOU Jingui3SHI Wenzhong4LU Nan5School of Resources and Environmental Engineering, Wuhan University of Technology, Wuhan 430070, ChinaSchool of Resources and Environmental Engineering, Wuhan University of Technology, Wuhan 430070, ChinaSchool of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaSchool of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaDepartment of Land Surveying and Geo-Informatics, Hong Kong Polytechnic University, Hong Kong 999077, ChinaSchool of Resources and Environmental Engineering, Wuhan University of Technology, Wuhan 430070, ChinaThe differences in the satellite orbit and signal quality of global navigation satellite positioning system, resulting in the complexity of random walk noise in GNSS time series, has become a bottleneck problem in applying GNSS technology to the high precision deformation monitoring industry. For the complex characteristics of random walk noise, small magnitude, low frequency and low sensitivity, an improved semisoft threshold algorithm is presented. Then it forms a unified system of semisoft threshold function, so as to improve the adaptability of conventional semisoft threshold for random walk noise. In order to verify and evaluate the effect of improved semisoft threshold algorithm, MATLAB platform is used to generate a linear trend, periodic and random walk noise of the GNSS time series, a total of 1700 epochs. The results show that the improved semisoft threshold method is better than the classical method, and has better performance in the SNR and root mean square error. The evaluation results show that the morphological character has been performanced high consistency between the noise reduced by improved method with random walk noise. Further from the view of quantitative point, the evaluation results of spectral index analysis verify the applicability of the improved method for random walk noise.http://html.rhhz.net/CHXB/html/2016-S2-22.htmGNSStime series analysisrandom walk noiseimproved semisoft threshold algorithm
collection DOAJ
language zho
format Article
sources DOAJ
author WU Hao
CAO Tingquan
HUA Xianghong
ZOU Jingui
SHI Wenzhong
LU Nan
spellingShingle WU Hao
CAO Tingquan
HUA Xianghong
ZOU Jingui
SHI Wenzhong
LU Nan
An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time Series
Acta Geodaetica et Cartographica Sinica
GNSS
time series analysis
random walk noise
improved semisoft threshold algorithm
author_facet WU Hao
CAO Tingquan
HUA Xianghong
ZOU Jingui
SHI Wenzhong
LU Nan
author_sort WU Hao
title An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time Series
title_short An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time Series
title_full An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time Series
title_fullStr An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time Series
title_full_unstemmed An Improved Semisoft Threshold Algorithm and Its Evaluation for Denoising Random Walk in GNSS Time Series
title_sort improved semisoft threshold algorithm and its evaluation for denoising random walk in gnss time series
publisher Surveying and Mapping Press
series Acta Geodaetica et Cartographica Sinica
issn 1001-1595
1001-1595
publishDate 2017-05-01
description The differences in the satellite orbit and signal quality of global navigation satellite positioning system, resulting in the complexity of random walk noise in GNSS time series, has become a bottleneck problem in applying GNSS technology to the high precision deformation monitoring industry. For the complex characteristics of random walk noise, small magnitude, low frequency and low sensitivity, an improved semisoft threshold algorithm is presented. Then it forms a unified system of semisoft threshold function, so as to improve the adaptability of conventional semisoft threshold for random walk noise. In order to verify and evaluate the effect of improved semisoft threshold algorithm, MATLAB platform is used to generate a linear trend, periodic and random walk noise of the GNSS time series, a total of 1700 epochs. The results show that the improved semisoft threshold method is better than the classical method, and has better performance in the SNR and root mean square error. The evaluation results show that the morphological character has been performanced high consistency between the noise reduced by improved method with random walk noise. Further from the view of quantitative point, the evaluation results of spectral index analysis verify the applicability of the improved method for random walk noise.
topic GNSS
time series analysis
random walk noise
improved semisoft threshold algorithm
url http://html.rhhz.net/CHXB/html/2016-S2-22.htm
work_keys_str_mv AT wuhao animprovedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT caotingquan animprovedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT huaxianghong animprovedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT zoujingui animprovedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT shiwenzhong animprovedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT lunan animprovedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT wuhao improvedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT caotingquan improvedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT huaxianghong improvedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT zoujingui improvedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT shiwenzhong improvedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
AT lunan improvedsemisoftthresholdalgorithmanditsevaluationfordenoisingrandomwalkingnsstimeseries
_version_ 1725738580155826176