Translating stakeholder narratives for participatory modeling in landscape ecology
Context
Engaging stakeholders in research is needed for many of the sustainability challenges that landscape ecologists address. Involving stakeholders’ perspectives through narratives in participatory modeling fosters better understanding of the problem and evaluation of the acceptability of tradeoffs and creates buy-in for management actions. However, stakeholder-driven inputs often take the form of complex qualitative descriptions, rather than model-ready numerical or categorical inputs.
Objectives
Translating narratives into models, model parameters, or scenarios is essential for leveraging stakeholder knowledge and engagement. Drawing from varied experiences to identify lessons learned and pitfalls, we address the practice of translating narratives into models and using those narratives to interpret and communicate results.
Methods
We drew from seven participatory landscape ecology projects across North America to synthesize lessons for the inclusion of stakeholder narratives in modeling studies.
Results
We offer 8 lessons as practical guidance for other landscape ecologists to move the science beyond a unilateral focus on ecological systems and to maximize the benefits of landscape sustainability science.
Conclusions
These lessons are starting points, as real projects are complex, nuanced, and sometimes contradictory. Translating narratives into models is important for addressing complex sustainability challenges; we hope that these starting points are helpful to those foraying into this type of research.
Citation Information
Publication Year | 2023 |
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Title | Translating stakeholder narratives for participatory modeling in landscape ecology |
DOI | 10.1007/s10980-023-01724-9 |
Authors | Jelena Vukomanovic, Lindsey Smart, Jennifer Koch, Virginia Dale, Sophie Plassin, Kristin B. Byrd, Colin Beier, Frederik Doyon |
Publication Type | Article |
Publication Subtype | Journal Article |
Series Title | Landscape Ecology |
Index ID | 70246596 |
Record Source | USGS Publications Warehouse |
USGS Organization | Western Geographic Science Center |