首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >WATER VAPOR CONVERSION FACTOR OVER QINGHAI-TIBET PLATEAU REGION CONSIDERING ELEVATION, LATITUDE AND FINE SEASONAL VARIATION IS CONSTRUCTED
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WATER VAPOR CONVERSION FACTOR OVER QINGHAI-TIBET PLATEAU REGION CONSIDERING ELEVATION, LATITUDE AND FINE SEASONAL VARIATION IS CONSTRUCTED

机译:考虑升高,纬度和精细季节性变化的青藏高原地区水蒸气转换因子

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In this paper, the conversion factor K model of Qinghai-Tibet plateau region was established based on the QTm model which is established using high-precision the Global Geodetic Observing System (GGOS) Atmosphere grid data from 2007 to 2014. The model took into account the influence of elevation fluctuation and latitude change on the model, and analyzed the relevant characteristics with seasonal changes. The 2015 GGOS grid data and radiosonde data were used as the reference value for accuracy assess. The established QTm model was compared with GPT2w model in bias and RMS. Compared with GGOS grid data, the average annual bias and RMS of QTm model were -0.28K and 2.70k respectively. The RMS of GPT2w-5 and GPT2w-1 were 58.16% and 28.84% higher, respectively. Compared with radiosonde data, QTm model has 1.13k average annual bias and the RMS error of 2.92k. Compared with GPT2w-5 and GPT2w-1, the RMS value of QTm model was improved by 25.08% and 29.43%, respectively. The value of atmospheric water vapor conversion coefficient was calculated by the integral method calculated by radio sounding data in the Qinghai-Tibet region in 2015 was used as the reference value for assess the performance of conversion factor K, and compared and analyzed the conversion coefficient K which provided by QTm and GPT2w. The results show that the value of Tm provided by QTm model has the highest accuracy, which is 25.07% higher than that of GPT2w-5 and 29.42% higher than that of GPT2w-1. QTm models can achieve GPS-PWV retrieval precision of better than 2 mm. Which has potential application for high-precision real-time GNSS-PWV retrieving in Qinghai-Tibet region.
机译:在本文中,基于QTM模型建立了青藏高原地区的转换因子K模型,该模型是使用高精度的QTM模型,从2007年到2014年使用全球大道观测系统(GGOS)氛围网格数据建立。该模型考虑了升高波动和纬度变化对模型的影响,并分析了季节性变化的相关特征。 2015年GGOS网格数据和无线电电视数据用作准确性评估的参考值。与BIA和RMS中的GPT2W模型进行了比较了已建立的QTM模型。与GGOS网格数据相比,QTM型号的平均偏差和QTM型号分别为-0.28K和2.70K。 GPT2W-5和GPT2W-1的RMS分别为58.16%和28.84%,更高。与无线电探测器数据相比,QTM模型具有1.13k平均年度偏差和2.92k的rms误差。与GPT2W-5和GPT2W-1相比,QTM模型的RMS值分别提高了25.08%和29.43%。大气水蒸气转换系数的值通过通过2015年青藏区域的无线电探测数据计算的积分方法计算,用作评估转化因子K的性能的参考值,并比较和分析转换系数k由QTM和GPT2W提供。结果表明,QTM模型提供的TM值具有最高的精度,比GPT2W-5高25.07%,高于GPT2W-1的29.42%。 QTM型号可以实现GPS-PWV检索精度优于2毫米。其中有潜在应用于青藏地区的高精度实时GNSS-PWV检索。

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