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Climatic drivers of forest productivity in Central Europe

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    0473956 - ÚVGZ 2018 RIV NL eng J - Journal Article
    Hlásný, T. - Trombik, J. - Bošela, M. - Merganič, J. - Marušák, R. - Šebeň, V. - Štěpánek, Petr - Kubišta, J. - Trnka, Miroslav
    Climatic drivers of forest productivity in Central Europe.
    Agricultural and Forest Meteorology. Roč. 234, MAR (2017), s. 258-273. ISSN 0168-1923. E-ISSN 1873-2240
    R&D Projects: GA ČR(CZ) GA14-12262S
    Grant - others:EHP,MF ČR(CZ) EHP-CZ02-OV-1-014-2014
    Program: CZ02
    Institutional support: RVO:67179843
    Keywords : National forest inventory * Site index * European temperate forests * Regression modelling * Climate effects
    OECD category: Environmental sciences (social aspects to be 5.7)
    Impact factor: 4.039, year: 2017

    Climate is an important driver of forest health, productivity, and carbon cycle, but our understanding of these effects is limited for many regions and ecosystems. We present here a large-scale evaluation of climate effects on the productivity of three temperate tree species. We determine whether the National Forest Inventory data (NFI) collected in the Czech Republic (14,000 plots) and Slovakia (1,180 plots) contains sufficient information to be used for designing the regional climate-productivity models. Neural network-based models were used to determine which among 13 tested climate variables best predict the tree species-specific site index (SI). We also explored the differences in climate-productivity interactions between the drier and the moister part of the distribution of the investigated species. We found a strong climatic signal in spruce SI (R 0.45–0.62) but weaker signals in fir and beech (R 0.22–0.46 and 0.00–0.49, respectively). We identified the most influential climate predictors for spruce and fir, and found a distinct unimodal response of SI to some of these predictors. The dominance of water availability-related drivers in the dry-warm part of a species’ range, and vice versa, was not confirmed. Based on our findings, we suggest that (i) the NFI-based SI is responsive to climate, particularly for conifers, (ii) climate-productivity models should consider the differences in productivity drivers along ecological gradients, and models should not be based on a mixture of dry and moist sites, and (iii) future studies might consider the subset of influential climate variables identified here as productivity predictors in climate-productivity models.
    Permanent Link: http://hdl.handle.net/11104/0271058

     
     
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