Contentious governance of wind energy planning

strategic dilemmas in collaborative resistance by local governments and citizen action groups

Journal Article (2022)
Author(s)

Imrat Verhoeven (Universiteit van Amsterdam)

Shannon Spruit (Populytics)

E.M.H.R. van de Grift (TU Delft - Organisation & Governance)

E.H.W.J. Cuppen (Universiteit Leiden)

Research Group
Organisation & Governance
Copyright
© 2022 Imrat Verhoeven, Shannon Spruit, E.M.H.R. van de Grift, Eefje Cuppen
DOI related publication
https://doi.org/10.1080/1523908X.2021.2023354
More Info
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Publication Year
2022
Language
English
Copyright
© 2022 Imrat Verhoeven, Shannon Spruit, E.M.H.R. van de Grift, Eefje Cuppen
Research Group
Organisation & Governance
Issue number
6
Volume number
24
Pages (from-to)
653-666
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Abstract

Local governments are at the heart of implementing increasingly ambitious national plans for wind energy. While support by local governments for these plans has been studied extensively, only few studies have looked into local governments’ contestation of wind energy development. In this paper we analyze contentious governance processes in which local governments join efforts with citizen action groups to oppose projects proposed by developers or the national government. We focus on the strategic dilemmas that local governments face while engaging in contentious governance. Uncovering strategic dilemmas helps to see contestation by local governments as part of a web of governance relationships, thus moving beyond dichotomous understandings of the players involved in wind farm conflicts. Strategic dilemmas also allow understanding of how stances of local governments and their citizen allies change over time, and how strategic and tactical considerations emerge from interaction patterns.