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Title: Species origin affects the rate of response to inter‐annual growing season precipitation and nutrient addition in four Australian native grasslands
Abstract Questions

Predicted increases in temperature and changes to precipitation are expected to alter the amount of plant available nutrients, in turn, altering rates of primary production and exotic plant invasions. However, it remains unclear whether increased responses occur in wetter than average years, even in low fertility and low rainfall regions.

Location

Four Australian grasslands, including sites in arid Western Australia, semi‐arid Victoria, alpine Victoria and sub‐tropical Queensland.

Methods

Using identical nutrient addition experiments, we use 6‐years of biomass, cover and species richness data to examine how rates of biomass production and native and exotic cover and richness are affected by growing season precipitation [proportion of yearly growing season precipitation (GSP) to long‐term meanGSP] and nutrient (N, P, K and micronutrients) addition.

Results

Rates of grassland productivity strongly increased with increasingGSP.GSPincreased rates of native cover but not native or exotic richness, nor rates of exotic cover change. We detected no significantNPKeffect on rates of grassland productivity, exotic cover or exotic richness change. In contrast,NPKaddition decreased rates of native cover change and fertilized plots had significantly fewer native species. We did not detect a significant interaction betweenNPKandGSP.

Conclusions

Grassland productivity was more strongly predicted by variation in growing season precipitation than by nutrient addition, suggesting it will vary with future changes in rainfall. Response to nutrients, however, depend on species origin, suggesting that increasing soil nutrient availability due to anthropogenic activities is likely to lead to negative effects on native species richness and cover.

 
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NSF-PAR ID:
10246524
Author(s) / Creator(s):
 ;  ;  ;  ;  ;  ;  ;  ;  ;  ;  ;
Publisher / Repository:
Wiley-Blackwell
Date Published:
Journal Name:
Journal of Vegetation Science
Volume:
27
Issue:
6
ISSN:
1100-9233
Page Range / eLocation ID:
p. 1164-1176
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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