Pargo18/Applying-Deep-Learning-vs-Machine-Learning-models-to-reproduce-dry-spell-sequences

This research constitutes an attempt to assess the dry spell patterns in the northern region of Ghana, near Burkina Faso. We aim to develop a model which by exploiting satellite products overcomes the poor temporal and spatial coverage of existing ground precipitation measurements. For this purpose 14 meteorological stations featuring different temporal coverage are used together with satellite-based precipitation products. Conventional machine-learning and deep-learning algorithms were compared in an attempt to establish a link between satellite products and field rainfall data for dry spell assessment.

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This project helps agricultural communities and small farmers in Ghana better predict dry spells. It takes satellite-based precipitation data and ground rainfall measurements to produce more reliable climatic information. This supports farmers in adapting their practices to climate change and natural precipitation variability, crucial for rainfed agriculture.

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Use this if you need to assess dry spell patterns and enhance knowledge about dry spell characteristics in regions with limited ground-based rainfall data.

Not ideal if your primary need is real-time, short-term weather forecasting for immediate operational decisions, rather than long-term dry spell assessment.

agriculture climate-resilience drought-monitoring food-security precipitation-forecasting
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May 21, 2025

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