Productivity and stability of forest ecosystems strongly depend on the functional diversity of plant communities. UZH researchers have developed a new method to measure and map functional diversity of forests at different scales – from individual trees to whole communities – using remote sensing by aircraft. Their work paves the way for future airborne and satellite missions to monitor global plant functional diversity.
Ecological studies have demonstrated positive relationships between plant diversity and ecosystem functioning. Forests with higher functional diversity are generally more productive and stable over long timescales than less diverse forests. Diverse plant communities show increased resource use efficiency and utilization, enhanced ecosystem productivity and stability and can better cope with changing environmental conditions - an insurance effect of biodiversity. They are also less vulnerable to diseases, insect attacks, fire and storms.
New method to study whole forest ecosystems from above
Plant functional diversity can directly be measured by mapping selected morphological and physiological traits of a forest from above. In the past, functional traits of plants had to be measured by very labor-intensive fieldwork on the ground. This fieldwork was either limited to very few measurable traits on larger plots or many traits on very small plots or single trees. Researchers from the UZH and the California Institute of Technology / NASA Jet Propulsion Laboratory have now developed a new remote-sensing method to map functional diversity of forests from small to large scales, independent of any predefined vegetation units or species information and without the need for ground-based calibration.
The research team applied their methods on the Laegern mountain, a temperate mixed forest ecosystem located near Zurich, Switzerland. "With remote sensing, we have the unique opportunity to study whole forest ecosystems by continuously mapping their functional traits looking from above on the leaves of the forest canopy over very large areas," says Michael Schaepman from the Remote Sensing Laboratories of the Department of Geography.
Spatial composition of the physiological traits leaf chlorophyll, carotenoids and water content. The color composite shows the relative abundance of the three traits at each pixel of 6x6 m. Credit: UZH
Spatial composition of the morphological traits canopy height, density and layering. The colour composite shows the relative abundance of the three traits at each pixel of 6x6m. Credit: UZH
Functional traits indicate activity and health status of trees
With airborne laser scanning, the scientists measured morphological characteristics of the forest canopy such as canopy height, foliage and branch densities. These measurements indicate how the sunlight is taken up by the canopy to assimilate carbon dioxide from the air and use the carbon to grow. In a canopy with a more diverse structure, light can better spread between different vertical canopy layers and among individual tree crowns, allowing for a more efficient capture of light. The researchers also characterized the forest with regards to its biochemical properties using airborne imaging spectroscopy. By measuring how leaves reflect the light in many spectral bands, they were able to derive physiological traits such as the content of leaf pigments (chlorophylls, carotenoids) and leaf water content. "These physiological traits provide information about the activity and health status of the trees. We can see, for example, if a tree is suffering water stress, and what resource allocation strategy a tree is following or how it adapts to the environment," Schaepman adds.
Observed diversity patterns consistent with topography and soil
The researchers validated their method by comparing the results with leaf-level field measurements, species-level plot inventory data and databases providing functional trait values. Using computer modeling, they were able to assess diversity patterns of morphological and physiological traits at a whole range of scales, from local diversity between individual trees to large-scale patterns of plant communities following environmental gradients. The team found a strong relationship between the observed functional diversity patterns and environmental factors such as soil and topography, with lower diversity on the mountain ridge under harsher environmental conditions, where the trees adapted to the dry, steep, shallow and rocky soils.
Diversity in physiological traits (leaf chlorophyll, carotenoids, and water content) of the forest as functional richness at a radial neighborhood of 90 m. Credit: UZH
Diversity in morphological traits (canopy height, density and layering) of the forest as functional richness at a radial neighborhood of 90 m. Credit: UZH
Potential to assess functional diversity from space
"With remote sensing, we are now able to measure and monitor the diversity of forests, allowing us to observe changes at large scales and providing spatial information for nature conservation and climate change mitigation strategies," Michael Schaepman emphasizes. Since the methodology is only limited by the availability of advanced technological sensors, this work paves the way for future airborne and satellite missions aiming at monitoring global plant functional diversity from space.
Provided by University of Zurich
Featured image: Due to the harsher environmental conditions, plant diversity is lower (blue/purple) on top of the mountain ridge and higher (yellow/orange) at lower altitudes. Credit: UZH
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