4.5 Article

Precipitation Vertical Structure Characterization: A Feature-Based Approach

Journal

JOURNAL OF HYDROMETEOROLOGY
Volume 24, Issue 12, Pages 2281-2297

Publisher

AMER METEOROLOGICAL SOC
DOI: 10.1175/JHM-D-23-0034.1

Keywords

Precipitation; Radars/Radar observations; Clustering; Deep learning; Dimensionality reduction

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This study uses a high-quality radar network and deep learning methods to characterize different precipitation regimes and their vertical profiles. By using clustering algorithms, 18 distinct precipitation patterns are identified based on their structural features and precipitation rate/type. These identified precipitation regimes can be used for physics-guided retrievals and further studying precipitation patterns.
The three-dimensional (3D) structure of precipitation systems is highly dependent on hydrometeor formation processes and microphysics. This study aims to characterize distinct vertical profiles of precipitation regimes by relying on the availability of a high-quality, spatially dense radar network and its capability to observe the 3D structure of the storms. A deep-learning-based framework, coupled with unsupervised clustering methods, is developed to identify types of precipitation structures irrespective of their physical properties. A 6-month period of 3D reflectivity profiles from the Multi-Radar Multi-Sensor (MRMS) network is used to identify different regimes and investigate their properties with respect to the underlying environmental conditions. Dominant features retrieved from radar reflectivity profiles using convolutional neural-network-based autoencoders are employed to identify similar-looking vertical structures using coupled k-means and agglomerative clustering algorithms. The k-means method identifies distinct groups, while the agglomerative clustering visualizes intercluster relationships. The framework identifies 18 clusters that can be broadly combined into five groups of varied echo-top heights. The 18 clusters demonstrate variability with respect to structural features and precipitation rate/type, implying that profiles in each group belong to a physically different precipitation regime. An independent analysis of the regime properties is conducted by matching the MRMS reflectivity profiles with environmental parameters derived from the High-Resolution Rapid Refresh model forecasts. The distribution of the environmental variables confirms cluster-specific feature properties, confirming the physics-based regime separation across the clusters and their dependence on the vertical structure. The identified precipitation regimes can assist in developing physics-guided retrievals and studying precipitation regimes.

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