Using a regional numerical weather prediction model for GNSS positioning over Brazil

被引:0
作者
Daniele Barroca Marra Alves
Luiz Fernando Sapucci
Haroldo Antonio Marques
Eniuce Menezes de Souza
Tayná Aparecida Ferreira Gouveia
Jackes Akira Magário
机构
[1] São Paulo State University - UNESP - Brazil,
[2] INPE - Instituto Nacional de Pesquisas Espaciais,undefined
[3] UFPE - Universidade Federal de Pernambuco - Brazil,undefined
[4] Maringa State University - UEM - Brazil,undefined
来源
GPS Solutions | 2016年 / 20卷
关键词
Numerical weather prediction; Zenithal tropospheric delay; GNSS; Positioning;
D O I
暂无
中图分类号
学科分类号
摘要
The global navigation satellite system (GNSS) can provide centimeter positioning accuracy at low costs. However, in order to obtain the desired high accuracy, it is necessary to use high-quality atmospheric models. We focus on the troposphere, which is an important topic of research in Brazil where the tropospheric characteristics are unique, both spatially and temporally. There are dry regions, which lie mainly in the central part of the country. However, the most interesting area for the investigation of tropospheric models is the wet region which is located in the Amazon forest. This region substantially affects the variability of humidity over other regions of Brazil. It provides a large quantity of water vapor through the humidity convergence zone, especially for the southeast region. The interconnection and large fluxes of water vapor can generate serious deficiencies in tropospheric modeling. The CPTEC/INPE (Center for Weather Forecasting and Climate Studies/Brazilian Institute for Space Research) has been providing since July 2012 a numerical weather prediction (NWP) model for South America, known as Eta. It has yield excellent results in weather prediction but has not been used in GNSS positioning. This NWP model was evaluated in precise point positioning (PPP) and network-based positioning. Concerning PPP, the best positioning results were obtained for the station SAGA, located in Amazon region. Using the NWP model, the 3D RMS are less than 10 cm for all 24 h of data, whereas the values reach approximately 60 cm for the Hopfield model. For network-based positioning, the best results were obtained mainly when the tropospheric characteristics are critical, in which case an improvement of up to 7.2 % was obtained in 3D RMS using NWP models.
引用
收藏
页码:677 / 685
页数:8
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