A participatory impact assessment of digital agriculture: A Bayesian network-based case study in Germany

Research output: Contribution to journalArticleResearchpeer review

Authors

External Research Organisations

  • Leibniz Centre for Agricultural Landscape Research (ZALF)
  • University for Sustainable Development Eberswalde (HNEE)
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Details

Original languageEnglish
Article number104222
JournalAgricultural systems
Volume224
Early online date13 Dec 2024
Publication statusE-pub ahead of print - 13 Dec 2024

Abstract

CONTEXT: The transition to digital agriculture is likely to lead to systemic changes that will affect production, consumption, governance, and the wider environment of agricultural systems. Nevertheless, the absence of sufficient evidence and ambiguities in perspectives create an ongoing lack of clarity regarding the potential impacts of digital agriculture. Therefore, to discern potential impacts while addressing system complexities, uncertainties, as well as normative aspects associated with this transition, future-oriented and participatory assessments are needed that actively involve diverse knowledge and values of affected stakeholders. OBJECTIVE: This research aims to explore the impacts and processes of agricultural digitalization according to stakeholders. The objectives are to identify key areas of impact that digital agriculture is likely to influence, identify and explore the causal pathways linking digital agriculture to impacts, and quantitatively examine the uncertainties of stakeholder perceptions associated with these impacts and causal pathways. METHODS: Through a participatory modelling procedure, diverse stakeholders from the German region of Brandenburg constructed a Bayesian Belief Network (BBN). The BBN facilitated the identification of the main impacts of digital agriculture and allowed for the modelling of uncertainties associated with these impacts. RESULTS AND CONCLUSIONS: Stakeholders perceived several socioeconomic advantages of digitalization, particularly in terms of bolstering economic stability through improved risk management and enhanced resource use efficiency, validating existing claims in the literature. The perception seems to be influenced by highly variable yields and market uncertainties, as well as shortages in labour in the region. On the other hand, there was significant uncertainty among stakeholders concerning landscape diversification and its impact on biodiversity. This uncertainty arises from the potential profitability of cultivating marginal land under heightened digitalization-induced efficiency, posing a risk of diminishing natural habitat and landscape heterogeneity. Local historical trends toward landscape simplification as result of technology-driven efficiency improvements may be a cause for this perception. SIGNIFICANCE: This study contributes to a growing body of future-oriented research assessing the impacts of digital agriculture through engaging stakeholder knowledge and values. While there is theoretical potential for digitalization to enhance biodiversity, realizing such positive impacts is improbable without improved communication and policy incentives, given the historical trend of efficiency-driven pathways. This study introduces a novel approach to assessing the impacts of agricultural digitalization through the application of a participatory Bayesian belief network.

Keywords

    Biodiversity, Digitalization, Mental models, Participatory modelling, Responsible research and innovation, Uncertainty

ASJC Scopus subject areas

Sustainable Development Goals

Cite this

A participatory impact assessment of digital agriculture: A Bayesian network-based case study in Germany. / MacPherson, Joseph; Rosman, Anna; Helming, Katharina et al.
In: Agricultural systems, Vol. 224, 104222, 03.2025.

Research output: Contribution to journalArticleResearchpeer review

MacPherson J, Rosman A, Helming K, Burkhard B. A participatory impact assessment of digital agriculture: A Bayesian network-based case study in Germany. Agricultural systems. 2025 Mar;224:104222. Epub 2024 Dec 13. doi: 10.1016/j.agsy.2024.104222
MacPherson, Joseph ; Rosman, Anna ; Helming, Katharina et al. / A participatory impact assessment of digital agriculture : A Bayesian network-based case study in Germany. In: Agricultural systems. 2025 ; Vol. 224.
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abstract = "CONTEXT: The transition to digital agriculture is likely to lead to systemic changes that will affect production, consumption, governance, and the wider environment of agricultural systems. Nevertheless, the absence of sufficient evidence and ambiguities in perspectives create an ongoing lack of clarity regarding the potential impacts of digital agriculture. Therefore, to discern potential impacts while addressing system complexities, uncertainties, as well as normative aspects associated with this transition, future-oriented and participatory assessments are needed that actively involve diverse knowledge and values of affected stakeholders. OBJECTIVE: This research aims to explore the impacts and processes of agricultural digitalization according to stakeholders. The objectives are to identify key areas of impact that digital agriculture is likely to influence, identify and explore the causal pathways linking digital agriculture to impacts, and quantitatively examine the uncertainties of stakeholder perceptions associated with these impacts and causal pathways. METHODS: Through a participatory modelling procedure, diverse stakeholders from the German region of Brandenburg constructed a Bayesian Belief Network (BBN). The BBN facilitated the identification of the main impacts of digital agriculture and allowed for the modelling of uncertainties associated with these impacts. RESULTS AND CONCLUSIONS: Stakeholders perceived several socioeconomic advantages of digitalization, particularly in terms of bolstering economic stability through improved risk management and enhanced resource use efficiency, validating existing claims in the literature. The perception seems to be influenced by highly variable yields and market uncertainties, as well as shortages in labour in the region. On the other hand, there was significant uncertainty among stakeholders concerning landscape diversification and its impact on biodiversity. This uncertainty arises from the potential profitability of cultivating marginal land under heightened digitalization-induced efficiency, posing a risk of diminishing natural habitat and landscape heterogeneity. Local historical trends toward landscape simplification as result of technology-driven efficiency improvements may be a cause for this perception. SIGNIFICANCE: This study contributes to a growing body of future-oriented research assessing the impacts of digital agriculture through engaging stakeholder knowledge and values. While there is theoretical potential for digitalization to enhance biodiversity, realizing such positive impacts is improbable without improved communication and policy incentives, given the historical trend of efficiency-driven pathways. This study introduces a novel approach to assessing the impacts of agricultural digitalization through the application of a participatory Bayesian belief network.",
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AU - Rosman, Anna

AU - Helming, Katharina

AU - Burkhard, Benjamin

N1 - Publisher Copyright: © 2024 The Authors

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Y1 - 2024/12/13

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