Quantifying sustainable intensification of agriculture: The contribution of metrics and modelling

Publication date

2021-10

Authors

Mouratiadou, IoannaISNI 0000000506029952
Latka, Catharina
van der Hilst, F.ORCID 0000-0002-6839-9375ISNI 0000000391237750
Müller, Christoph
Berges, Regine
Bodirsky, Benjamin Leon
Ewert, Frank
Faye, Babacar
Heckelei, Thomas
Hoffmann, Munir

Editors

Advisors

Supervisors

Document Type

Article
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cc_by

Abstract

Sustainable intensification (SI) of agriculture is a promising strategy for boosting the capacity of the agricultural sector to meet the growing demands for food and non-food products and services in a sustainable manner. Assessing and quantifying the options for SI remains a challenge due to its multiple dimensions and potential associated trade-offs. We contribute to overcoming this challenge by proposing an approach for the ex-ante evaluation of SI options and trade-offs to facilitate decision making in relation to SI. This approach is based on the utilization of a newly developed SI metrics framework (SIMeF) combined with agricultural systems modelling. We present SIMeF and its operationalization approach with modelling and evaluate the approach's feasibility by assessing to what extent the SIMeF metrics can be quantified by representative agricultural systems models. SIMeF is based on the integration of academic and policy indicator frameworks, expert opinions, as well as the Sustainable Development Goals. Structured along seven SI domains and consisting of 37 themes, 142 sub-themes and 1128 metrics, it offers a holistic, generic, and policy-relevant dashboard for selecting the SI metrics to be quantified for the assessment of SI options in diverse contexts. The use of SIMeF with agricultural systems modelling allows the ex-ante assessment of SI options with respect to their productivity, resource use efficiency, environmental sustainability and, to a large extent, economic sustainability. However, we identify limitations to the use of modelling to represent several SI aspects related to social sustainability, certain ecological functions, the multi-functionality of agriculture, the management of losses and waste, and security and resilience. We suggest advancements in agricultural systems models and greater interdisciplinary and transdisciplinary integration to improve the ability to quantify SI metrics and to assess trade-offs across the various dimensions of SI.

Keywords

Ex-ante scenario assessment, Indicators, Metrics, Modelling of agricultural systems, Sustainable development goals, Sustainable intensification, General Decision Sciences, Ecology, Evolution, Behavior and Systematics, Ecology, SDG 2 - Zero Hunger, SDG 8 - Decent Work and Economic Growth, SDG 12 - Responsible Consumption and Production, SDG 17 - Partnerships for the Goals

Citation

Mouratiadou, I, Latka, C, van der Hilst, F, Müller, C, Berges, R, Bodirsky, B L, Ewert, F, Faye, B, Heckelei, T, Hoffmann, M, Lehtonen, H, Lorite, I J, Nendel, C, Palosuo, T, Rodríguez, A, Rötter, R P, Ruiz-Ramos, M, Stella, T, Webber, H & Wicke, B 2021, 'Quantifying sustainable intensification of agriculture : The contribution of metrics and modelling', Ecological Indicators, vol. 129, 107870, pp. 1-16. https://doi.org/10.1016/j.ecolind.2021.107870