Retrieval of rain from Passive Microwave radiometers data has been a challenge ever since the launch of the first Defense Meteorological Satellite Program in the late 70s. Enormous progress has been made since the launch of the Tropical Rainfall Measuring Mission (TRMM) in 1997 but until recently the data were processed pixel-by-pixel or taking a few neighboring pixels into account. Deep learning has obtained remarkable improvement in the computer vision field, and offers a whole new way to tackle the rain retrieval problem. The Global Precipitation Measurement (GPM) Core satellite carries similarly to TRMM, a passive microwave radiometer and a radar that share part of their swath. The brightness temperatures measured in the 37 and 89 GHz channels are used like the RGB components of a regular image while rain rate from Dual Frequency radar provides the surface rain. A U-net is then trained on these data to develop a retrieval algorithm: Deep-learning RAIN (DRAIN). With only four brightness temperatures as an input and no other a priori information, DRAIN is offering similar or slightly better performances than GPROF, the GPM official algorithm, in most situations. These performances are assumed to be due to the fact that DRAIN works on an image basis instead of the classical pixel-by-pixel basis.
翻译:自70年代后期首个国防气象卫星方案启动以来,从被动微波辐射计数据中恢复雨水是一个挑战,自1997年热带降雨量测量任务启动以来,已经取得了巨大的进展,但直到最近,这些数据被处理成像像素比像素,或考虑到几个相邻的像素。深入学习在计算机视野领域取得了显著的改进,为解决雨水回收问题提供了全新的方法。全球降水量测量核心卫星与TRMM、一个被动微波辐射计和一个分享其部分的雷达相类似,自1997年热带降雨量测量任务启动以来,已经取得了巨大的进展。在37和89个GHz频道测量的亮度温度与RGB成像部分一样,而双频雷达的雨率则提供了地面雨量。然后对Unet进行了有关这些数据的培训,以开发一种检索算法:深学习REA(DAIN),只有4个亮度温度作为输入和没有其他先前信息,DRAIN仅提供了类似或稍好一点的状态,因此,DRAIN在G-DRF的正像学基础上提供了类似或最接近或最优的状态。</s>