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An improved atmospheric weighted mean temperature model and its impact on GNSS precipitable water vapor estimates for China

机译:改善的大气加权平均温度模型及其对中国GNSS降差水蒸气估计的影响

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The atmospheric weighted mean temperature, Tm, is an important parameter for retrieving precipitable water vapor (PWV) from global navigation satellite system (GNSS) signals. There are few empirical, high-precision Tm models for China, which limit the real-time and high-precision application of GNSS meteorology over China. The GPT2w (Global Pressure and Temperature 2 Wet) model, as a state-of-the-art global empirical tropospheric delay model, can provide values for Tm, surface temperature, surface pressure, and water vapor pressure. However, several studies have noted that the GPT2w model has significant systematic errors in the calculation of Tm for China, mainly due to the neglect of the Tm lapse rate. We develop an improved Tm model for China, IGPT2w, by refining the Tm derived from GPT2w using both gridded Tm data and ellipsoidal height grid data from the Global Geodetic Observing System (GGOS) Atmosphere. Both gridded Tm data from the GGOS Atmosphere and radiosonde data from 2015 are used to test the performance of IGPT2w in China. The results are compared with the GPT2w model and the widely used Bevis formula. The results show that IGPT2w yields significant performance against other models in Tm estimation over China, especially in western China, where the significant systematic errors of the GPT2w model are largely eradicated. IGPT2w has sigma PWV and sigma PWV/PWV values of 0.29mm and 1.38% when used to retrieve GNSS-PWV, respectively. Thus, the IGPT2w has significant potential for real-time GNSS-PWV sounding in China, especially when used to retrieve GNSS-PWV values for the study of PWV transportation in the Tibetan Plateau.
机译:大气加权平均温度TM是从全球导航卫星系统(GNSS)信号中检索可降水水蒸气(PWV)的重要参数。中国少数经验,高精度的TM模型,限制了GNSS气象对中国的实时和高精度应用。 GPT2W(全球压力和温度2湿)模型,作为最先进的全球经验对流层延迟模型,可以为TM,表面温度,表面压力和水蒸气压力提供值。然而,几项研究指出,GPT2W模型在中国TM计算中具有显着的系统误差,主要是由于忽视了TM流逝率。我们通过使用来自全球大地地理位理观测系统(GGOS)气氛的网格化的TM数据和椭圆形高度网格数据来改进来自GPT2W的TM,对中国,IGPT2W进行改进的TM模型。来自2015年GGOS气氛和无线电电视数据的网格TM数据用于测试IGPT2W在中国的性能。结果与GPT2W模型和广泛使用的BEVIS配方进行了比较。结果表明,IGPT2W对中国的TM估计中的其他模型产生了显着性能,特别是在中国,特别是GPT2W模型的显着系统误差在很大程度上。 IGPT2W分别具有0.29mm和1.38%的Sigma PWV和Sigma PWV / PWV值分别检测到GNSS-PWV。因此,IGPT2W对中国实时GNSS-PWV发出的巨大潜力,特别是当用于检索藏高原体中PWV运输研究的GNSS-PWV值。

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