Classifying microwave radiometer observations over the Netherlands into dry, shallow, and nonshallow precipitation using a random forest model

Bogerd, L., C. Kidd, C. Kummerow, H. Leijnse, A. Overeem, V. Petkovic, K. Whan, R. Uijlenhoet

Spaceborne microwave radiometers represent an important component of the Global Precipitation Measurement (GPM) mission due to their frequent sampling of rain systems. Microwave radiometers measure microwave radiation (brightness temperatures Tb), which can be converted into precipitation estimates with appropriate assumptions. However, detecting shallow precipitation systems using spaceborne radiometers is challenging, especially over land, as their weak signals are hard to differentiate from those associated with dry conditions. This study uses a random forest (RF) model to classify microwave radiometer observations as dry, shallow, or nonshallow over the Netherlands—a region with varying surface conditions and frequent occurrence of shallow precipitation. The RF model is trained on five years of data (2016–20) and tested with two independent years (2015 and 2021). The observations are classified using ground-based weather radar echo top heights. Various RF models are assessed, such as using only GPM Microwave Imager (GMI) Tb values as input features or including spatially aligned ERA5 2-m temperature and freezing level reanalysis and/or Dual-Frequency Precipitation Radar (DPR) observations. Independent of the input features, the model performs best in summer and worst in winter. The model classifies observations from high-frequency channels (≥85 GHz) with lower Tb values as nonshallow, higher values as dry, and those in between as shallow. Misclassified footprints exhibit radiometric characteristics corresponding to their assigned class. Case studies reveal dry observations misclassified as shallow are associated with lower Tb values, likely resulting from the presence of ice particles in nonprecipitating clouds. Shallow footprints misclassified as dry are likely related to the absence of ice particles.

Bibliographic data

Bogerd, L., C. Kidd, C. Kummerow, H. Leijnse, A. Overeem, V. Petkovic, K. Whan, R. Uijlenhoet. Classifying microwave radiometer observations over the Netherlands into dry, shallow, and nonshallow precipitation using a random forest model
Journal: J. Hydrometeor., Volume: 25, Year: 2024, First page: 881, Last page: 898, doi: 10.1175/JHM-D-23-0202.1