4.7 Article

A new approach to characterising and predicting crop rotations using national-scale annual crop maps

Journal

SCIENCE OF THE TOTAL ENVIRONMENT
Volume 860, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.scitotenv.2022.160471

Keywords

Rotationclassification; Crop sequence; Crop prediction; Spatial pattern; Transition probability matrix

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Cropping decisions have significant impacts on agricultural management strategies and environmental outcomes. Mapping and predicting crop rotations enable targeted mitigation measures and risk forecasting. The study demonstrates the complexity of crop rotations and suggests their importance across disciplines beyond agronomy and ecology.
Cropping decisions affect the nature, timing and intensity of agricultural management strategies. Specific crop rota-tions are associated with different environmental impacts, which can be beneficial or detrimental. The ability to map, characterise and accurately predict rotations enables targeting of mitigation measures where most needed and forecasting of potential environmental risks. Using six years of the national UKCEH Land Cover (R) plus: Crops maps (2015-2020), we extracted crop sequences for every agricultural field parcel in Great Britain (GB). Our aims were to first characterise spatial patterns in rotation properties over a national scale based on their length, type and struc-tural diversity values, second, to test an approach to predicting the next crop in a rotation, using transition probability matrices, and third, to test these predictions at a range of spatial scales. Strict cyclical rotations only occupy 16 % of all agricultural land, whereas long-term grassland and complex-rotational agriculture each occupy over 40 %. Our rota-tion classifications display a variety of distinctive spatial patterns among rotation lengths, types and diversity values. Rotations are mostly 5 years in length, short mixed crops are the most abundant rotation type, and high structural di-versity is concentrated in east Scotland. Predictions were most accurate when using the most local spatial approach (spatial scaling), 5-year rotations, and including long-term grassland. The prediction framework we built demonstrates that our crop predictions have an accuracy of 36-89 %, equivalent to classification accuracy of national crop and land cover mapping using earth observation, and we suggest this could be improved with additional contextual data. Our results emphasise that rotation complexity is multi-faceted, yet it can be mapped in different ways and forms the basis for further exploration in and beyond agronomy, ecology, and other disciplines.

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