A platform for research: civil engineering, architecture and urbanism
Data visualisation for decision making under deep uncertainty: current challenges and opportunities
This perspective article explores the role of data visualisation in decision-making under deep uncertainty (DMDU), a growing discipline tackling complex socio-environmental challenges, such as climate impacts and adaptation, natural resource management, and preparedness for extreme events. We discuss the role of visualisation for both analysis (or exploratory) purposes, as well as communication (or explanatory) purposes, including to stakeholders and the public. We identify a lack of comprehensive guidelines on how visualisations are currently used and their potential in enhancing DMDU processes. Drawing on literature and insights from a recent workshop, we identify key challenges DMDU analysts face when visualising data: managing complexity and dimensionality, effectively communicating uncertainty, and ensuring user engagement and interpretability. We propose a research agenda to address these challenges, by taxonomising and evaluating the effectiveness of different visual forms in decision-making contexts, and fostering interdisciplinary collaboration. We argue that, through these efforts, we can improve the communication and usability of DMDU analyses, ultimately aiding in more informed and adaptive decision-making in the face of deep uncertainty.
Data visualisation for decision making under deep uncertainty: current challenges and opportunities
This perspective article explores the role of data visualisation in decision-making under deep uncertainty (DMDU), a growing discipline tackling complex socio-environmental challenges, such as climate impacts and adaptation, natural resource management, and preparedness for extreme events. We discuss the role of visualisation for both analysis (or exploratory) purposes, as well as communication (or explanatory) purposes, including to stakeholders and the public. We identify a lack of comprehensive guidelines on how visualisations are currently used and their potential in enhancing DMDU processes. Drawing on literature and insights from a recent workshop, we identify key challenges DMDU analysts face when visualising data: managing complexity and dimensionality, effectively communicating uncertainty, and ensuring user engagement and interpretability. We propose a research agenda to address these challenges, by taxonomising and evaluating the effectiveness of different visual forms in decision-making contexts, and fostering interdisciplinary collaboration. We argue that, through these efforts, we can improve the communication and usability of DMDU analyses, ultimately aiding in more informed and adaptive decision-making in the face of deep uncertainty.
Data visualisation for decision making under deep uncertainty: current challenges and opportunities
Hadjimichael, Antonia (author) / Schlumberger, Julius (author) / Haasnoot, Marjolijn (author)
2024-10-22
Hadjimichael , A , Schlumberger , J & Haasnoot , M 2024 , ' Data visualisation for decision making under deep uncertainty: current challenges and opportunities ' , Environmental Research Letters , vol. 19 , no. 11 , 111011 . https://doi.org/10.1088/1748-9326/ad858b
Article (Journal)
Electronic Resource
English
DDC:
710
Data visualisation for decision making under deep uncertainty: current challenges and opportunities
DOAJ | 2024
|Making research useful: current challenges and best practice in data visualisation
BASE | 2024
|Decision making under model uncertainty
British Library Conference Proceedings | 2005
|Implementing decision support portals with data visualisation
British Library Online Contents | 2007
|Decision making under deep uncertainty for adapting urban drainage systems to change
Taylor & Francis Verlag | 2018
|