A framework for facilitating dialogue between policy planners and local climate change adaptation professionals: Cases from Sweden, Canada and Indonesia

Environmental Science & Policy(2012)

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摘要
The dominant approach to mainstreaming climate adaptation into sectoral policies relies on an 'upscaling' model in which it is envisaged to extract lessons from local change processes to inspire generic sub-national and national policies. One of the central methodological questions, which remain unanswered in climate change adaptation research, is exactly how public policy can learn from highly contextual experiences of community-based adaptation and what role should be played by case study research. In this paper we undertake a comparison between three large research projects in Sweden, Canada and Indonesia, which aim to study and/or foster local adaptation in selected case studies through a process of social learning. We present a novel framework based on mapping of 'sense-making perspectives', which enables analysis of the multiple ways case study research can support local climate adaptation and link such efforts to higher level public policy. The analysis demonstrates how methodological choices shape how case study research works at the interface between planned (steered/regulatory policy) and self-organised adaptation of stakeholders (non-coercive policy). In this regard, there is a need for a high degree of transparency from the research community to enable local professionals to decide on their stakes and interests when inviting researchers into their grounded activities. We conclude that case study research can achieve new significance if viewed as a platform to leverage stakeholder competencies when informing existing social structures and enable the implementation of political objectives, but equally driving the very reinvention and improvement of these institutions. (C) 2012 Elsevier Ltd. All rights reserved.
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关键词
Climate adaptation,Case study,Meta-analysis,Public policy,Social learning
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