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arxiv: 1805.01950 · v1 · pith:D3LPUXY5new · submitted 2018-05-04 · ⚛️ physics.ao-ph

A Data-driven Approach to Detecting Precipitation from Meteorological Sensor Data

classification ⚛️ physics.ao-ph
keywords precipitationapproachatmosphericdatadata-drivenmeteorologicalratesensor
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Precipitation is dependent on a myriad of atmospheric conditions. In this paper, we study how certain atmospheric parameters impact the occurrence of rainfall. We propose a data-driven, machine-learning based methodology to detect precipitation using various meteorological sensor data. Our approach achieves a true detection rate of 87.4% and a moderately low false alarm rate of 32.2%.

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