CloudSense: A Model for Cloud Type Identification using Machine Learning from Radar data
Mehzooz Nizar, Jha K. Ambuj, Manmeet Singh, Vaisakh S.B, G.Pandithurai

TL;DR
CloudSense employs machine learning to accurately classify precipitating cloud types using radar data, outperforming traditional algorithms and enhancing precipitation estimation over complex terrains.
Contribution
The paper introduces CloudSense, a novel ML-based model that improves cloud type classification accuracy over traditional radar methods in complex terrains.
Findings
LightGBM achieved BAC of 0.8 and F1-score of 0.82.
CloudSense outperformed conventional radar algorithms.
ML approach enhances cloud detection accuracy.
Abstract
The knowledge of type of precipitating cloud is crucial for radar based quantitative estimates of precipitation. We propose a novel model called CloudSense which uses machine learning to accurately identify the type of precipitating clouds over the complex terrain locations in the Western Ghats (WGs) of India. CloudSense uses vertical reflectivity profiles collected during July-August 2018 from an X-band radar to classify clouds into four categories namely stratiform,mixed stratiform-convective,convective and shallow clouds. The machine learning(ML) model used in CloudSense was trained using a dataset balanced by Synthetic Minority Oversampling Technique (SMOTE), with features selected based on physical characteristics relevant to different cloud types. Among various ML models evaluated Light Gradient Boosting Machine (LightGBM) demonstrate superior performance in classifying cloud…
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Taxonomy
TopicsEarthquake Detection and Analysis · Computational Physics and Python Applications · Anomaly Detection Techniques and Applications
