A comprehensive UK crop yield dataset incorporating satellite, weather, and soil type information
Evangeline Corcoran, Daniel P. Bebber, Stelian Curceac, Natalia Efremova, Azam Lashkari, Andrew Mead, Richard J. Morris, Richard F. Pywell, John W. Redhead, Sebastian E. Ahnert

TL;DR
This paper introduces a large UK crop yield dataset combining satellite, weather, and soil data for agricultural research and machine learning applications.
Contribution
The novel contribution is a comprehensive anonymized dataset integrating multiple data sources for crop yield prediction and modeling.
Findings
The CYCleSS dataset includes precision yield data from 934 fields in England with satellite, weather, and soil data.
Anonymization preserves data alignment while protecting privacy, offering a solution for agricultural data sharing.
The dataset supports both machine learning and mechanistic crop growth model parameterization.
Abstract
Agricultural research increasingly relies on data-driven approaches for crop yield prediction that complement more established crop growth models, including machine learning techniques. However, these approaches rely on large training datasets. Here, we present the Crop Yields, Climate, Soils, and Satellites (CYCleSS) dataset, a large-scale crop yield dataset derived from precision yield data for 934 fields across England on which a variety of crops are grown. In addition, the data also contains satellite-derived remote sensing data, weather data, and data on soil type, all aligned at a grid resolution of 10 km. Weather data is available at a daily temporal resolution, satellite data at 5-day resolution, while crop yield data is available at yearly resolution. This effort has been made possible through careful anonymisation of the yield data while preserving the alignment with remote…
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Taxonomy
TopicsRemote Sensing in Agriculture · Climate change impacts on agriculture · Smart Agriculture and AI
