2024
DOI: 10.1109/access.2024.3376735
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Accurate Wheat Yield Prediction Using Machine Learning and Climate-NDVI Data Fusion

Muhammad Ashfaq,
Imran Khan,
Abdulrahman Alzahrani
et al.

Abstract: Due to exponential population growth, climate change, and an increasing demand for food, there is an unprecedented need for a timely, precise, and dependable assessment of crop yield on a large scale. Wheat, a staple crop worldwide, requires accurate and prompt prediction of its output for global food security. Traditionally, the development of empirical models for crop yield forecasting has relied on climate data, satellite data, or a combination of both. Despite the enhanced performance achieved by integrati… Show more

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Cited by 8 publications
(1 citation statement)
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“…Ashfaq et al, "Accurate Wheat Yield Prediction Using Machine Learning and Climate-NDVI Data Fusion", forecasted wheat yield in the Multan region of Pakistan's Punjab province by merging data from several sources [24]. By integrating publicly available data within the GEE (Google Earth Engine) platform, including climate, satellite, soil properties, and spatial information data, the findings were compared to the benchmark provided by Crop Report Services (CRS) Punjab.…”
Section: Sharma Et Al "Predicting Agriculture Yields Based On Machine...mentioning
confidence: 99%
“…Ashfaq et al, "Accurate Wheat Yield Prediction Using Machine Learning and Climate-NDVI Data Fusion", forecasted wheat yield in the Multan region of Pakistan's Punjab province by merging data from several sources [24]. By integrating publicly available data within the GEE (Google Earth Engine) platform, including climate, satellite, soil properties, and spatial information data, the findings were compared to the benchmark provided by Crop Report Services (CRS) Punjab.…”
Section: Sharma Et Al "Predicting Agriculture Yields Based On Machine...mentioning
confidence: 99%