基于地基微波辐射计的大气温、湿度廓线观测研究进展

Progress on the observation of atmospheric temperature and humidity profiles by ground-based microwave radiometers

  • 摘要: 分析地基微波辐射计大气温、湿度廓线观测的技术原理与应用进展,探讨了提升其观测精度和稳定性的关键技术路径,为气象监测和气候研究提供理论支持。基于热辐射理论、辐射传递方程和亮度温度等物理基础,系统综述了微波辐射测量原理、定标技术发展历程及数据质量控制方法,结合对中外典型设备性能参数的对比,重点解析反演算法优化方向与机器学习融合应用潜力。地基微波辐射计通过多频段观测(22—59 GHz)可实现0—10 km大气温、湿度廓线连续探测,液氮冷定标与倾斜曲线定标技术可将亮温精度提升至0.2—0.5 K,神经网络算法使温度反演均方根误差降低至1.48℃,物理约束模型使高空(>8 km)温度反演平均绝对误差(MAE)减小0.19℃。但设备仍面临复杂天气下射频干扰(L波段误差达10%)、长期定标稳定性不足(年漂移>0.2 K)及云雨条件下湿度反演误差增大(均方根误差达25.21%)等挑战。地基微波辐射计通过硬件抗干扰设计、动态实时定标技术和机器学习-物理模型融合算法优化,可显著提升大气参数反演精度,其研究为气象监测和气候研究的广泛应用奠定了理论与技术基础。未来需重点突破多频通道协同观测、非线性误差校正及极端天气适应性等关键技术瓶颈,通过对环境噪声抑制、定标误差溯源及反演鲁棒性提升等问题的深入探讨,为全球气候变化背景下大气探测技术的创新发展提供重要支撑,推动高精度、全天候大气温、湿度廓线观测体系的构建。

     

    Abstract: This study investigates technical principles and advancements in the application of ground-based microwave radiometers for the observation of atmospheric temperature and humidity profiles, explores critical pathways that can enhance measurement accuracy and stability, and provides theoretical support for meteorological monitoring and climate research. Based on physical foundations including the thermal radiation theory, radiative transfer equations, and brightness temperature, this work systematically reviews microwave radiation measurement principles and calibration technology evolution as well as data quality control methods. By comparing performance parameters of typical domestic and international devices, this study focuses on analyzing the direction of retrieval algorithms optimization and the potential of integrating machine learning approaches. Ground-based microwave radiometers enable continuous detection of atmospheric temperature and humidity profiles within 0—10 km through multi-frequency observations (22—59 GHz). Liquid nitrogen cold calibration and tilt-curve calibration techniques improve brightness temperature accuracy up to 0.2—0.5 K. Neural network algorithms reduce the root mean square error (RMSE) of temperature inversion to 1.48℃, while physically constrained models decrease the mean absolute error (MAE) of high-altitude (>8 km) temperature inversion by 0.19℃. However, challenges persist, including radio frequency interference in complex weather (10% error in L-band), insufficient long-term calibration stability (annual drift >0.2 K), and increased humidity inversion error under cloudy/rainy conditions (RMSE up to 25.21%). Ground-based microwave radiometers, enhanced by anti-interference hardware design and dynamic real-time calibration and machine learning-physical model fusion algorithms, can significantly improve the retrieval accuracy of atmospheric parameters. This research lays theoretical and technical foundations for their widespread application in meteorological monitoring and climate studies. Future efforts should prioritize breakthroughs in multi-frequency collaborative observations, nonlinear error correction, and extreme weather adaptability. Through in-depth exploration of environmental noise suppression, calibration error tracking, and retrieval robustness enhancement, this work provides a critical support for advancing atmospheric detection technologies under global climate change, facilitating the development of high-precision, all-weather atmospheric profile observation systems.

     

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