Abstract

BackgroundLinking qualitative scenarios with quantitative models is a common approach to integrate assumptions on possible future societal contexts into modeling. But reflection on how and to what degree knowledge is effectively integrated during this endeavor does not generally take place. In this paper, we reflect on the performance of a specific hybrid scenario approach (qualitative Cross-Impact Balance analysis, CIB, linked with quantitative energy models) concerning knowledge integration through 11 different process steps. In order to guide the scenario community in applying this approach, we reflect on general methodological features as well as different design options. We conceptualize different forms of interdisciplinary knowledge integration (compiling, combining and synthesizing) and analyze how and to what degree knowledge about society and uncertainty are integrated into scenario process and products. In addition, we discuss trade-offs regarding design choices and forms of knowledge integration.ResultsOn the basis of three case studies, we identify two general designs of linking which build on each other (basic and extended design) and which differ in essence regarding the balance of power between the CIB and the energy modeling. Ex post assessment of the form of interdisciplinary knowledge integration in each step revealed that specific method properties of CIB as well as the interaction with additional quantitative as well as specific qualitative methods foster distinct forms of knowledge integration. The specific roles assigned to CIB in the hybrid scenario process can also influence the form of knowledge integration.ConclusionsIn this study, we use a joint process scheme linking qualitative context scenarios with energy modeling. By applying our conceptualization of different forms of knowledge integration we analyze the designs’ respective potential for and respective effects on knowledge integration. Consequently, our findings can give guidance to those who are designing their own hybrid scenario processes. As this is an explorative study, it would be useful to further test our hypotheses in different hybrid scenario designs. Finally, we note that at some points in the process a more precise differentiation of three forms of knowledge integration would have been useful and propose to further differentiate and detail them in future research.

Highlights

  • Linking qualitative scenarios with quantitative models is a common approach to integrate assump‐ tions on possible future societal contexts into modeling

  • The subsection provides a review of existing scientific work that addresses knowledge integration in interdisciplinary and transdisciplinary research. This is the basis for our conceptual framework on ‘forms of interdisciplinary knowledge integration’, which we developed for the analysis

  • Interdisciplinary research can be realized by individuals [49, 50], we focus on the research of a team, which is considerably different regarding the operationalization of a project and the challenges an interdisciplinary team has to handle [51]

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Summary

Introduction

Linking qualitative scenarios with quantitative models is a common approach to integrate assump‐ tions on possible future societal contexts into modeling. We reflect on the performance of a specific hybrid scenario approach (qualitative Cross-Impact Balance analysis, CIB, linked with quantitative energy models) concerning knowledge integration through 11 different process steps. Energy models need data input about future societal developments and their impact on energy demand and supply Such information relates for example to population, lifestyles, economy, innovation and other factors and must be defined on the basis of so-called framework assumptions [4]. Such assumptions implicitly draw on the modelers’ perceptions concerning the future developments of the society into which the modeled system is embedded [5]. Not every combination of framework assumptions builds a meaningful picture of societal contexts, even if their sources are highly credible

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