The local costs of global climate change: spatial GDP downscaling under different climate scenarios
Articolo
Data di Pubblicazione:
2023
Abstract:
We present a tractable methodology to estimate climate change costs at a 1 x 1 km grid resolution. Climate change costs are obtained as projected gross domestic product (GDP) changes, under different global shared socio-economic pathway-representative concentration pathway (SSP-RCP) scenarios, from a regional (multiple European NUTS levels) version of the Intertemporal Computable Equilibrium System (ICES) model. Local costs are obtained by downscaling projected GDP according to urbanized area estimated by a grid-level model that accounts for fixed effects, such as population and location, and spatially clustered random effects at multiple hierarchical administrative levels. We produce a grid-level dataset of climate change economic impacts under different scenarios that can be used to compare the cost - in terms of GDP loss - of no adaptation and the benefits of investing in local adaptation.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
statistical downscaling; linear mixed models; climate change; adaptation costs; urban area projections
Elenco autori:
Rizzati, Massimiliano; Standardi, Gabriele; Guastella, Gianni; Parrado, Ramiro; Bosello, Francesco; Pareglio, Stefano
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