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http://dx.doi.org/10.14400/JDC.2018.16.10.011

Development of Indicators for the National GHG Reduction Technology Selection Based on Delphi Method  

Kim, Kiman (Division of Global Strategy, Green Technology Center)
Kang, Moon Jung (Division of Global Strategy, Green Technology Center)
Kim, Hyung-ju (Division of Policy Research, Green Technology Center)
Publication Information
Journal of Digital Convergence / v.16, no.10, 2018 , pp. 11-26 More about this Journal
Abstract
A strategic technology selection for GHG reduction is crucial to secure mitigation means. Especially, a technology selection for a public sector is encouraged to consider integrated perspectives due to various stakeholders under public goals. However, previous studies have mainly focused on technological and economic factors, moreover, consistent criteria have not been applied. This study develops indicators for the GHG reduction technology selection from the public perspective based on delphi method with 22 experts. The result provides valid indicators of technology selection for GHG reduction considering an aspect of technology, economics, environment, policy, society. Specifically, 16 indicators from 5 categories on commercialized technology, and 18 indicators from 5 categories on new technology. We expect that those indicators are useful for a decision-making tool of technology selection. Moreover, provide the basis for the study of judgement criteria to evaluate GHG reduction technology.
Keywords
National GHG Reduction; Reduction Implementation; Public Technology Selection; Delphi; Technology Selection Criteria;
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