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Modeling spatial climate change landuse adaptation with multi-objective genetic algorithms to improve resilience for rice yield and species richness and to mitigate disaster risk

Cited 10 time in Web of Science Cited 11 time in Scopus
Authors

Yoon, Eun Joo; Thorne, James H.; Park, Chan; Lee, Dong Kun; Kim, Kwang Soo; Yoon, Heeyeun; Seo, Changwan; Lim, Chul-Hee; Kim, Haeryung; Song, Young-Il

Issue Date
2019-02
Publisher
Institute of Physics Publishing
Citation
Environmental Research Letters, Vol.14 No.2, p. 024001
Abstract
As climate change is ongoing, many studies have recently focused on adaptation to climate change from a spatial perspective. However little is known about how changing the spatial composition of landuse could improve climate change resilience. Consideration of climate change impacts when spatially allocating landuse could be a useful and fundamental long term adaptation strategy, particularly for regional planning. Here, we identify climate adaptation scenarios based on existing extents of three landuse classes using multi-objective genetic algorithms for a 9982 km 2 region with 3.5 million inhabitants in South Korea. We selected five objectives for adaptation based on predicted climate change impacts and regional economic conditions: minimization of disaster damage and existing landuse conversion, maximization of rice yield, protection of high species richness areas, and economic value. We generated 17 Pareto landuse scenarios by six weighted combinations of the adaptation objectives. Most scenarios, although varying in magnitude, showed better performance than the current spatial landuse composition for all adaptation objectives, suggesting that some alteration of current landuse patterns could increase overall climate resilience. Given the flexible structure of the optimization model, we expect that regional stakeholders could efficiently generate other scenarios by adjusting model parameters (weighting combinations) or replacing input data (impact maps), and selecting a scenario depending on preference or a number of problem-related factors.
ISSN
1748-9326
URI
https://hdl.handle.net/10371/195257
DOI
https://doi.org/10.1088/1748-9326/aaf0cf
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