On the challenges of using field spectroscopy to measure the impact of soil type on leaf traits
Understanding the causes of variation in functional plant traits is a central issue in ecology, particularly in the context of global change. Spectroscopy is increasingly used for rapid and non-destructive estimation of foliar traits, but few studies have evaluated its accuracy when assessing phe...
Main Authors: | , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2017-07-01
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Series: | Biogeosciences |
Online Access: | https://www.biogeosciences.net/14/3371/2017/bg-14-3371-2017.pdf |
Summary: | Understanding the causes of variation in functional plant traits is a central
issue in ecology, particularly in the context of global change. Spectroscopy
is increasingly used for rapid and non-destructive estimation of foliar
traits, but few studies have evaluated its accuracy when assessing phenotypic
variation in multiple traits. Working with 24 chemical and physical leaf
traits of six European tree species growing on strongly contrasting soil
types (i.e. deep alluvium versus nearby shallow chalk), we asked (i) whether
variability in leaf traits is greater between tree species or soil type, and
(ii) whether field spectroscopy is effective at predicting intraspecific
variation in leaf traits as well as interspecific differences. Analysis of
variance showed that interspecific differences in traits were generally much
stronger than intraspecific differences related to soil type, accounting for
25 % versus 5 % of total trait variation, respectively. Structural
traits, phenolic defences and pigments were barely affected by soil type. In
contrast, foliar concentrations of rock-derived nutrients did vary: P and K
concentrations were lower on chalk than alluvial soils, while Ca, Mg, B, Mn
and Zn concentrations were all higher, consistent with the findings of
previous ecological studies. Foliar traits were predicted from 400 to
2500 nm reflectance spectra collected by field spectroscopy using partial
least square regression, a method that is commonly employed in chemometrics.
Pigments were best modelled using reflectance data from the visible region
(400–700 nm), while all other traits were best modelled using reflectance
data from the shortwave infrared region (1100–2500 nm). Spectroscopy
delivered accurate predictions of species-level variation in traits. However,
it was ineffective at detecting intraspecific variation in rock-derived
nutrients (with the notable exception of P). The explanation for this failure
is that rock-derived elements do not have absorption features in the
400–2500 nm region, and their estimation is indirect, relying on elemental
concentrations covarying with structural traits that do have absorption
features in that spectral region (<q>constellation effects</q>). Since the
structural traits did not vary with soil type, it was impossible for our
regression models to predict intraspecific variation in rock-derived
nutrients via constellation effects. This study demonstrates the value of
spectroscopy for rapid, non-destructive estimation of foliar traits across
species, but highlights problems with predicting intraspecific variation
indirectly. We discuss the implications of these findings for mapping
functional traits by airborne imaging spectroscopy. |
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ISSN: | 1726-4170 1726-4189 |