论文推荐|论文推荐|武汉大学夏朋飞副教授:中国区域高精度实时PWV格点模型及其在WRF同化中的初步性能评估

A High-Precision Real-Time PWV Grid Model for the China Region and Its Preliminary Performance in WRF Assimilation

中国区域高精度实时PWV格点模型及其在WRF同化中的初步性能评估

Pengfei Xia(夏朋飞)
Biyan Chen(陈必焰)
Ning Huang(黄宁)
Xin Xie(谢新)
Qinglan Zhang(张庆兰)

Wuhan University(武汉大学)
Central South University(中南大学)

引文格式 | Citation:
Pengfei Xia, Biyan Chen, Ning Huang, et al. A high-precision real-time PWV grid model for the China region and its preliminary performance in WRF assimilation[J]. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2025, 18: 3433-3447. DOI: 10.1109/JSTARS.2025.3525770.

IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing(中科院2区,IF:5.3)
ERA5 reanalysis
global navigation satellite system(GNSS)
precipitable water vapor(PWV)
real-time
weather research and forecasting(WRF)
Abstract | 摘要
Precipitable water vapor (PWV) is a key parameter in studying water vapor variations during severe weather phenomena. The high-quality PWV maps are also of significant value for monitoring and early warning of geological disasters, such as landslides and debris flows. This study presents a high-precision real-time PWV grid model for the China region, utilizing GNSS observations and surface meteorological data. The model addresses the limitations of existing PWV retrieval methods by incorporating an improved altitude correction model for pressure and temperature using ERA5 reanalysis data. The model achieves a spatial resolution of 0.5°×0.5° and incorporates real-time updates for accurate monitoring of atmospheric moisture variations. The model’s performance was evaluated using surface meteorological observations and compared with the HGPT2 model. Results showed that the new model outperforms HGPT2 in terms of accuracy, particularly in low-latitude regions. Additionally, the model was successfully assimilated into the WRF model, significantly improving the accuracy of the initial atmospheric field for numerical weather prediction. This study demonstrates the potential of GNSS and surface meteorological data in constructing high-resolution, real-time PWV models. The developed model provides valuable insights into atmospheric moisture variations and enhances the accuracy of weather forecasting and climate research in the China region.
可降水量(PWV)是研究强天气过程中水汽变化的关键参数,高精度PWV网格产品对滑坡、泥石流等地质灾害的监测预警亦具有重要价值。本研究基于GNSS观测数据与地面气象资料,构建了中国区域高精度实时PWV网格模型。该模型通过引入基于ERA5再分析资料改进的气压与温度高程校正方法,有效克服了现有PWV反演方法的局限性,实现了0.5°×0.5°的空间分辨率与实时更新能力,可精准监测大气水汽的动态变化。利用地面气象观测数据对模型性能进行评估,并与HGPT2模型进行对比,结果表明新模型在低纬度地区尤其展现出更高的精度优势。此外,通过将本模型同化至WRF数值预报系统,显著提升了初始大气场的准确性。本研究证明了GNSS与地面气象资料构建高分辨率实时PWV模型的可行性,该成果为深入认知区域水汽变化特征、提升天气预报与气候研究精度提供了重要技术支撑。

作者简介
夏朋飞(1987-),男,副教授,主要从事GNSS数据处理与GNSS气象学研究