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Yield models for predicting aboveground ectomycorrhizal fungal productivity in Pinus sylvestris and Pinus pinaster stands of northern Spain.

Authors :
Sánchez-González, Mariola
de-Miguel, Sergio
Martin-Pinto, Pablo
Martínez-Peña, Fernando
Pasalodos-Tato, María
Oria-de-Rueda, Juan Andrés
Martínez de Aragón, Juan
Cañellas, Isabel
Bonet, José Antonio
Source :
Forest Ecosystems (Springer Nature); 12/16/2019, Vol. 6 Issue 1, p1-13, 13p
Publication Year :
2019

Abstract

Background: Predictive models shed light on aboveground fungal yield dynamics and can assist decision-making in forestry by integrating this valuable non-wood forest product into forest management planning. However, the currently existing models are based on rather local data and, thus, there is a lack of predictive tools to monitor mushroom yields on larger scales. Results: This work presents the first empirical models for predicting the annual yields of ectomycorrhizal mushrooms and related ecosystem services in Pinus sylvestris and Pinus pinaster stands in northern Spain, using a long-term dataset suitable to account for the combined effect of meteorological conditions and stand structure. Models were fitted for the following groups of fungi separately: all ectomycorrhizal mushrooms, edible mushrooms and marketed mushrooms. Our results show the influence of the weather variables (mainly precipitation) on mushroom yields as well as the relevance of the basal area of the forest stand that follows a right-skewed unimodal curve with maximum predicted yields at stand basal areas of 30–40 m<superscript>2</superscript>∙ha<superscript>− 1</superscript>. Conclusion: These models are the first empirical models for predicting the annual yields of ectomycorrhizal mushrooms in Pinus sylvestris and Pinus pinaster stands in northern Spain, being of the highest resolution developed to date and enable predictions of mushrooms productivity by taking into account weather conditions and forests' location, composition and structure. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20956355
Volume :
6
Issue :
1
Database :
Complementary Index
Journal :
Forest Ecosystems (Springer Nature)
Publication Type :
Academic Journal
Accession number :
140357040
Full Text :
https://doi.org/10.1186/s40663-019-0211-1