A data-driven approach for devising and assessing precision nitrogen management strategies applied to wheat systems in India

Limiting nitrogen pollution from crop production is essential for mitigating greenhouse gas emissions and protecting aquatic ecosystems while maintaining food security. Precision nitrogen management (PNM) provides a conceptual framework for achieving yield goals while maintaining nitrogen pollution...

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Bibliographic Details
Main Authors: Sherpa, Sonam, Nayak, Hari Sankar, Rossiter, David G., Craufurd, Peter, Kritee, Kritee, Kumar, Virender, Paudel, Gokul, Panneerselvam, Periyasamy , Pathak, Himanshu, Poonia, Shishpal P., Singh, Balwinder, Urfels, Anton, Van Es, Harold Mathijs, Gautam, Udham Singh, Malik, Ram Kanwar, Mcdonald, Andrew
Format: Journal Article
Language:Inglés
Published: IOP Publishing Ltd 2025
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Online Access:https://hdl.handle.net/10568/179017
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Summary:Limiting nitrogen pollution from crop production is essential for mitigating greenhouse gas emissions and protecting aquatic ecosystems while maintaining food security. Precision nitrogen management (PNM) provides a conceptual framework for achieving yield goals while maintaining nitrogen pollution within planetary boundaries by matching fertilizer rates to specific production conditions. Nevertheless, PNM strategies for smallholder contexts like India, a global nitrogen pollution hotspot, have proven costly to implement and are often ineffective. By combining survey data of production practices from 8705 wheat fields with digital soil mapping, we develop a novel PNM strategy that ‘learns from landscapes’ to generate and evaluate novel decision logic for nitrogen management. With this approach, ex-ante simulations indicate that reductions of 9% in nitrogen use and 16% in N2O emissions can be achieved without compromising yields, saving US$ 28 million per year in subsidies for the Indian state of Bihar alone. In contrast, conventional soil test-based recommendations may increase nitrogen use by 5% without corresponding yield gains. Our method that leverages large-n survey data and predictive modeling may provide a scalable pathway for PNM in similarly complex crop production environments where field and management heterogeneity is high.