Framework for mapping the drivers of coastal vulnerability and spatial decision making for climate-change adaptation: A case study from Maharashtra, India

被引:0
作者
Pandian Krishnan
Pachampalayam Shanmugam Ananthan
Ramachandran Purvaja
Jeyapaul Joyson Joe Jeevamani
John Amali Infantina
Cherukumalli Srinivasa Rao
Arur Anand
Ranganalli Somashekharappa Mahendra
Iyyapa Sekar
Kalakada Kareemulla
Amit Biswas
Regulagedda Kalpana Sastry
Ramachandran Ramesh
机构
[1] ICAR-National Academy for Agricultural Research Management (NAARM),National Centre for Sustainable Coastal Management (NCSCM), Ministry of Environment Forest and Climate Change
[2] ICAR-Central Institute of Fisheries Education (CIFE),Indian Statistical Institute
[3] Govt. of India,Chennai Centre, Ministry of Statistics and Programme Implementation
[4] Government of India,Regional Remote Sensing Centre (NRSC
[5] Indian Space Research Organization (ISRO),RRSC)
[6] Govt. of India,Indian National Centre for Ocean Information Services (INCOIS), Ministry of Earth Sciences
来源
Ambio | 2019年 / 48卷
关键词
Adaptive capacity; Climate change; Exposure; Multi-hazard map; Sensitivity; Socio-economic;
D O I
暂无
中图分类号
学科分类号
摘要
The impacts of climate change are of particular concern to the coastal region of tropical countries like India, which are exposed to cyclones, floods, tsunami, seawater intrusion, etc. Climate-change adaptation presupposes comprehensive assessment of vulnerability status. Studies so far relied either on remote sensing-based spatial mapping of physical vulnerability or on certain socio-economic aspects with limited scope for upscaling or replication. The current study is an attempt to develop a holistic and robust framework to assess the vulnerability of coastal India at different levels. We propose and estimate cumulative vulnerability index (CVI) as a function of exposure, sensitivity and adaptive capacity, at the village level, using nationally comparable and credible datasets. The exposure index (EI) was determined at the village level by decomposing the spatial multi-hazard maps, while sensitivity (SI) and adaptive capacity indices (ACI) were estimated using 23 indicators, covering social and economic aspects. The indicators were identified through the literature review, expert consultations, opinion survey, and were further validated through statistical tests. The socio-economic vulnerability index (SEVI) was constructed as a function of sensitivity and adaptive capacity for planning grassroot-level interventions and adaptation strategies. The framework was piloted in Sindhudurg, a coastal district in Maharashtra, India. It comprises 317 villages, spread across three taluks viz., Devgad, Malvan and Vengurla. The villages in Sindhudurg were ranked based on this multi-criteria approach. Based on CVI values, 92 villages (30%) in Sindhudurg were identified as highly vulnerable. We propose a decision tool for identifying villages vulnerable to changing climate, based on their level of sensitivity and adaptive capacity in a two-dimensional matrix, thus aiding in planning location-specific interventions. Here, vulnerability indicators are classified and designated as ‘drivers’ (indicators with significantly high values and intervention priority) and ‘buffers’ (indicators with low-to-moderate values) at the village level. The framework provides for aggregation or decomposition of CVI and other sub-indices, in order to plan spatial contingency plans and enable swift action for climate adaptation.
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页码:192 / 212
页数:20
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