Agroforestry has long been recognised as a nature-based solution for climate mitigation, yet its adoption in Europe has drastically declined due to the socio-economic transformations and land use intensification since the onset of the Great Acceleration (ca. mid-twentieth century). This study reconstructs the historical role of agroforestry in Northern Italy by drawing on century-long land use records (1929-2024) and historical sources, which were crucial for identifying and modelling the carbon stock of traditional silvoarable systems. Through the integration of Monte Carlo simulations and scenario-based modelling, we estimate that historic silvoarable systems stored an average of 75.4 t C ha-1, with a potential range of 50.4-101.6 t C ha-1. The widespread abandonment of agroforestry practices led to a 97% reduction in their extent, accompanied by a corresponding expansion of monocultures. Future management scenarios suggest that restoring silvoarable systems could enhance regional carbon sequestration by up to 12%, a gain comparable to afforestation strategies requiring the conversion of 25% of existing farmland. Our findings underscore the global value of traditional ecological knowledge and historical land use strategies in informing carbon-smart agricultural transitions and shaping policies for resilient, multifunctional landscapes.

Data-driven scenario analysis supports the revival of historic silvoarable systems for carbon smart rural landscapes / F. Brandolini, A. Gurgel, A. Zerboni. - In: SCIENTIFIC REPORTS. - ISSN 2045-2322. - 15:1(2025 Oct 07), pp. 34963.1-34963.14. [10.1038/s41598-025-18950-7]

Data-driven scenario analysis supports the revival of historic silvoarable systems for carbon smart rural landscapes

F. Brandolini
Primo
Writing – Original Draft Preparation
;
A. Zerboni
Ultimo
Supervision
2025

Abstract

Agroforestry has long been recognised as a nature-based solution for climate mitigation, yet its adoption in Europe has drastically declined due to the socio-economic transformations and land use intensification since the onset of the Great Acceleration (ca. mid-twentieth century). This study reconstructs the historical role of agroforestry in Northern Italy by drawing on century-long land use records (1929-2024) and historical sources, which were crucial for identifying and modelling the carbon stock of traditional silvoarable systems. Through the integration of Monte Carlo simulations and scenario-based modelling, we estimate that historic silvoarable systems stored an average of 75.4 t C ha-1, with a potential range of 50.4-101.6 t C ha-1. The widespread abandonment of agroforestry practices led to a 97% reduction in their extent, accompanied by a corresponding expansion of monocultures. Future management scenarios suggest that restoring silvoarable systems could enhance regional carbon sequestration by up to 12%, a gain comparable to afforestation strategies requiring the conversion of 25% of existing farmland. Our findings underscore the global value of traditional ecological knowledge and historical land use strategies in informing carbon-smart agricultural transitions and shaping policies for resilient, multifunctional landscapes.
Physical Geography; Landscape Modelling; Climate Adaptation; Computational Analysis
Settore GEOS-03/A - Geografia fisica e geomorfologia
Settore ARCH-01/G - Metodologie della ricerca archeologica
   Rural landscape hEritage and CArbon sequestration (RhECAST)
   RhECAST
   EUROPEAN COMMISSION
   101105219
7-ott-2025
https://www.nature.com/articles/s41598-025-18950-7
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1187016
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