Policy integration in urban living labs: Delivering multi‐functional blue‐green infrastructure in Antwerp, Dordrecht, and Gothenburg.
Published In: Environmental Policy & Governance, 2023, v. 33, n. 3. P. 258 1 of 3
Database: Business Source Ultimate 2 of 3
Authored By: Willems, Jannes J.; Kuitert, Lizet; Van Buuren, Arwin 3 of 3
Abstract
Policy integration required for delivering multi‐functional blue‐green infrastructure (BGI) is difficult to achieve, because environmental policymaking is characterised by sectoral responsibilities and institutional structures that hinder collaboration. Both theory and practice consider urban living labs (ULLs) as promising vehicles for policy integration, as ULLs can overcome institutional structures. This article presents a framework that assesses how the urban living lab can contribute to policy integration in BGI projects and applies this to three case studies in Antwerp (Belgium), Dordrecht (the Netherlands), and Gothenburg (Sweden). Our findings demonstrate that ULLs can enhance policy integration through defining integrative aims, creating shared accountability structures, and assigning a clear problem owner with authority. ULLs can equally hinder policy integration because their dependence on sectoral funding results in narrowed‐down goals. Moreover, their experimental, non‐committal position gives them limited power to pull down institutional structures. Thus, ULLs do not automatically enhance policy integration in BGI projects. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Environmental Policy & Governance. 2023/06, Vol. 33, Issue 3, p258
- Document Type:Article
- Subject Area:Environmental Sciences
- Publication Date:2023
- ISSN:1756-932X
- DOI:10.1002/eet.2028
- Accession Number:164115422
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