abhiwagh95 / Crop-yield-prediction-using-weather-data-and-NDVI-time-seriesLinks
The proposed system will be able to predict the crop yield production which will be useful to farmers for harvesting and storage. The system will use the weather forecasting which includes the parameters like temperature, rainfall, humidity, dew point and the normalized difference vegetation index time series from Sentinel-2 satellite for select…
☆20Updated 3 months ago
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