Journal article
Authors list: Feldmeyer, Daniel; Wilden, Daniela; Jamshed, Ali; Birkmann, Joern
Publication year: 2020
Journal: Ecological Indicators
Volume number: 119
ISSN: 1470-160X
eISSN: 1872-7034
Open access status: Hybrid
DOI Link: https://doi.org/10.1016/j.ecolind.2020.106861
Publisher: Elsevier
Abstract:
High uncertainty in the occurrence of extreme events and disasters have made resilience-building an imperative part of society. Resilience assessment is an important tool in this context. Resilience is multidimensional as well as place-, scale- and time-specific, which requires a comprehensive approach for measuring and analysing. In this regard, composite indicators are preferred, and extensive literature is available on resilience indices on all spatial and temporal scales as well as hazard-specific or multi-hazard related indicators. However, transparent, robust, validated and transferable metrics are still missing from the scientific discourse. Hence, the research follows a novel composite index development approach: First, to develop and operationalise climate resilience on the county level in the state of Baden-Wurttemberg, Germany; second, to develop multiple composite indices in order to assess the impact of the construction methodology to increase transparency and decrease uncertainty; third, validating the index by statistical as well as empirical data and machine learning models - which is a novel endeavour so far. The results underscored that the two-step inclusive validation of data-driven statistical analysis in combination with empirical data proved to be essential in developing the index during the selection and aggregation of indicators. The results also highlighted a lower climate resilience of rural regions compared to metropolitan regions despite their better environmental status. Overall, machine learning proved to be essential in understanding and linking indicators and indices to policy, resilience and empirical data. The research contributes to a better understanding of climate resilience as well as to the methodological construction of composite indicators.
Citation Styles
Harvard Citation style: Feldmeyer, D., Wilden, D., Jamshed, A. and Birkmann, J. (2020) Regional climate resilience index: A novel multimethod comparative approach for indicator development, empirical validation and implementation, Ecological Indicators, 119, Article 106861. https://doi.org/10.1016/j.ecolind.2020.106861
APA Citation style: Feldmeyer, D., Wilden, D., Jamshed, A., & Birkmann, J. (2020). Regional climate resilience index: A novel multimethod comparative approach for indicator development, empirical validation and implementation. Ecological Indicators. 119, Article 106861. https://doi.org/10.1016/j.ecolind.2020.106861
Keywords
Climate adaptation; Community resilience; COMPOSITE INDICATORS; INDICATOR; NATURAL HAZARDS; SENSITIVITY-ANALYSIS; SOCIAL VULNERABILITY; VULNERABILITY ASSESSMENT