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Sensitivity of Korean fir (Abies koreana Wils.), a threatened climate relict species, to increasing temperature at an island subalpine area

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  • Koo, Kyung Ah
  • Kong, Woo-Seok
  • Park, Seon Uk
  • Lee, Joon Ho
  • Kim, Jaeuk
  • Jung, Huicheul

Abstract

The Korean fir (Abies koreana), a subalpine cold-adapted climatic relict, has declined in the Republic of Korea (ROK) since the 1980′s, and IUCN 3.1 has assessed it as a species endangered by global warming. We projected thermal habitat suitability for Korean fir at the subalpine zone of Mt. Halla (>1300m a.s.l.), ROK, using high-resolution microclimatic and topographic variables (30×30m resolution) and forecasted the effects of global warming on thermal suitability at a local scale. These analyses resulted in a more precise definition of the thermal niche of the species, reflecting topoclimatic conditions. We used three single and one ensemble species distribution models (SDMs) for the projection. The results showed that Korean fir was sensitive to heat stress and heat-associated drought stress, showing a strong preference for sites with low temperature, low radiation and near streams. Thermal habitat suitability therefore increased from the southwest (lowland areas) to the northeast (higher elevation areas). All SDMs effectively captured thermal microrefugia, such as north-facing slope, thermally suitable patches and sites near streams at Mt. Halla. In particular, thermal microrefugia successively explained small populations of Korean fir in the south area. All SDMs forecasted that thermal habitat suitability decreased under increasing temperature, with the area of thermally suitable habitats decreasing 80.2% to 94.8% under a 2°C increase scenario. We conclude that Korean fir will likely experience degradation in thermal habitat suitability under rising temperature, with upslope shifts of populations potentially causing continued local decline. However, the extent of decline will depend on metapopulation dynamics among thermal microrefugia and other biotic and abiotic factors. Hence, we need to implement much ecological and physiological research to improve the predictive power of climate response models, and to protect thermal microrefugia from competing and invasive species in order to buffer the upward range shift of Korean fir at Mt. Halla under global warming.

Suggested Citation

  • Koo, Kyung Ah & Kong, Woo-Seok & Park, Seon Uk & Lee, Joon Ho & Kim, Jaeuk & Jung, Huicheul, 2017. "Sensitivity of Korean fir (Abies koreana Wils.), a threatened climate relict species, to increasing temperature at an island subalpine area," Ecological Modelling, Elsevier, vol. 353(C), pages 5-16.
  • Handle: RePEc:eee:ecomod:v:353:y:2017:i:c:p:5-16
    DOI: 10.1016/j.ecolmodel.2017.01.018
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    2. Konstantinos Kougioumoutzis & Ioannis P. Kokkoris & Arne Strid & Thomas Raus & Panayotis Dimopoulos, 2021. "Climate-Change Impacts on the Southernmost Mediterranean Arctic-Alpine Plant Populations," Sustainability, MDPI, vol. 13(24), pages 1-23, December.

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