KWR Watercycle Research Institute Nieuwegein, The Netherlands.
Department of Ecological science, Subdepartment Systems Ecology, VU University Amsterdam, The Netherlands.
Ecol Evol. 2014 Mar;4(6):706-19. doi: 10.1002/ece3.932. Epub 2014 Feb 14.
Trait predictions from leaf spectral properties are mainly applied to tree species, while herbaceous systems received little attention in this topic. Whether similar trait-spectrum relations can be derived for herbaceous plants that differ strongly in growing strategy and environmental constraints is therefore unknown. We used partial least squares regression to relate key traits to leaf spectra (reflectance, transmittance, and absorbance) for 35 herbaceous species, sampled from a wide range of environmental conditions. Specific Leaf Area and nutrient-related traits (N and P content) were poorly predicted from any spectrum, although N prediction improved when expressed on a per area basis (mg/m(2) leaf surface) instead of mass basis (mg/g dry matter). Leaf dry matter content was moderately to good correlated with spectra. We explain our results by the range of environmental constraints encountered by herbaceous species; both N and P limitations as well as a range of light and water availabilities occurred. This weakened the relation between the measured response traits and the leaf constituents that are truly responsible for leaf spectral behavior. Indeed, N predictions improve considering solely upper or under canopy species. Therefore, trait predictions in herbaceous systems should focus on traits relating to dry matter content and the true, underlying drivers of spectral properties.
从叶片光谱特性预测特征主要应用于树种,而草本系统在这一领域受到的关注较少。因此,我们不知道对于生长策略和环境限制差异很大的草本植物,是否可以得出类似的特征-光谱关系。我们使用偏最小二乘回归将 35 种草本物种的关键特征与叶片光谱(反射率、透射率和吸收率)相关联,这些物种是从广泛的环境条件下采集的。虽然将 N 含量表示为每单位面积(mg/m^2 叶面积)而不是质量基础(mg/g 干物质)时,N 的预测有所改善,但任何光谱都无法很好地预测比叶面积和与营养有关的特征(N 和 P 含量)。叶片干物质含量与光谱呈中度至良好相关。我们通过草本物种遇到的环境限制范围来解释我们的结果;既存在 N 和 P 限制,也存在一系列光照和水分可利用性。这削弱了所测量的响应特征与真正负责叶片光谱行为的叶片成分之间的关系。事实上,仅考虑上层或下层冠层物种,N 的预测就会有所改善。因此,草本系统中的特征预测应侧重于与干物质含量和光谱特性的真正潜在驱动因素相关的特征。