Session | ||
Ecosystem Traits and their use in biodiversity applications
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Presentations | ||
10:00am - 10:10am
ID: 130 / 2.02.2b: 1 Biodiversity from Space: Understanding Large-Scale Patterns of Ecosystem Structure and Diversity with Remote Sensing 1Aarhus University, Denmark; 2Jet Propulsion Laboratory / California Institute of Technology, USA; 3NASA Headquarters, USA; 4University of Wisconsin-Madison, USA; 5University of Montana, USA; 6University of California Los Angeles, USA; 7University of Milano-Bicocca, USA Biodiversity is under pressure by anthropogenic and climate change, but it is difficult to measure, monitor and predict changes across the globe. We face large knowledge gaps in terms of the spatial distribution and temporal dynamics of biodiversity and related ecosystem functions. A new suite of current and upcoming remote sensing instruments is providing large-scale measurements of plant canopy structure, plant functional traits and diversity, and ecosystem functioning from space. For example, spaceborne lidar, such as from the GEDI instrument, can provide us with a new view on the three-dimensional plant canopy structure and its diversity at the landscape scale. I will present new results and challenges for mapping forest structural diversity in California and Central Africa using GEDI at scales from 1 to 25 km, which provides insights on a range of complex and diverse Mediterranean and tropical forest ecosystems. We found that GEDI’s RH98, Cover and FHD metrics were most effective to capture variation in forest canopy height, density and layering, and that GEDI captured the variation of canopy structure generally well in closed forests in flat terrain, while challenges emerged in open forests and in complex terrain. We found high structural diversity in mid-elevation and coastal forests in the US and in volcanic ranges and forest-savanna transitions in Africa. GEDI revealed spatial patterns of structural diversity that aligned with known ecological processes, including the influence of wildfire in the western US and topographic variation in central Africa. Besides ecosystem structure, we developed new methods using imaging spectroscopy to map the distribution of leaf biochemical and biophysical traits and derived patterns of plant functional diversity at the landscape scale. We developed and tested the methods using large-scale airborne imaging spectroscopy data acquired using AVIRIS Classic across a diverse elevation gradient in the California Sierra Nevada mountains to test the application to spaceborne instruments such as EnMAP, PRISMA or the future NASA SBG and ESA CHIME missions at 30 m spatial resolution. I will present results that give insights into mapping foliar traits at large spatial scale and the role of trait-trait relationships in mapping plant functional diversity. We found that there are at least three relevant functional axes of variation that should be represented in functional diversity analyses, and that the relationship among those axes and functional plant strategies is context dependent. We also found that patterns of functional diversity were related to elevation gradients and disturbance patterns, especially related to wildfire. Combining these new measurements with ground-based data will help to better understand biodiversity patterns and change over time. I will present examples of new analyses of remotely sensed patterns of plant functional and structural diversity, and their relationship to other dimensions of biodiversity and ecosystem functions, that demonstrate the value and potential of new remote sensing instruments and methods for biodiversity monitoring from space. 10:10am - 10:20am
ID: 371 / 2.02.2b: 2 Vegetation structure and plant functional traits predict pollination networks across the tropics 1University of Oxford, Environmental Change Institute, School of Geography and the Environment Oxford, UK; 2Universidade Federal de Goiás, Department of Ecology, Instituto de Ciências Biológicas, Goiânia, Brazil; 3Northumbria University, Department of Geography and Environmental Sciences, Newcastle upon Tyne, United Kingdom; 4Universidade de São Paulo (USP), Departamento de Biologia, Faculdade de Filosofia, Ciências e Letras de Ribeirão Preto (FFCLRP), São Paulo, Brazil; 5National Institute of Science and Technology in Interdisciplinary and Transdisciplinary Studies in Ecology and Evolution (INTREE), Brazil; 6University of Copenhagen, Center for Macroecology, Evolution and Climate, GLOBE Institute, Copenhagen, Denmark; 7University of Würzburg, Department of Animal Ecology and Tropical Biology, Wüzburg, Germany; 8Federal University of São Carlos, Department of Environmental Sciences, São Carlos, Brazil; 9Universidade Federal do Ceará, Bee Unit, Department of Animal Sciences, Fortaleza - CE, Brazil; 10University of Florida, Department of Biology, Gainesville, FL USA; 11University of Coimbra, Centre for Functional Ecology, Associate Laboratory TERRA, Department of Life Sciences, Coimbra, Portugal; 12University of Exeter, Centre for Ecology and Conservation, Penryn Campus, UK; 13Mediterranean Institute for Advanced Studies (CSIC-UIB), Global Change Research Group, C/Miquel Marques 21Esporles, Mallorca, Balearic Islands, Spain Plant-pollinator interactions are critical to terrestrial ecosystem functioning and global food production but are experiencing increasing pressures from land use and global environmental changes. Environmental conditions, such as climate and vegetation cover, influence both foraging resources and nesting habitat for pollinators. Yet, little is known about the role of vegetation structure and functional traits in determining the organisation of plant-pollinator networks, nor on methods to predict such networks at broad spatial scales. Here, we take a novel approach and evaluate how plant functional traits and vegetation structure influence plant-pollinator interaction patterns. Plant-pollinator network data analysed comprised a total of 209 networks from across the tropics, with vegetation structure and functional trait information extracted using spectral and LiDAR remote sensing datasets. We found that pollination network metrics responded to plant functional traits along a spectrum of plant resource use acquisition and conservation strategies, where networks were more modular with lower vegetation height and leaf nutrient content, while higher leaf photosynthetic capacity and nutrient contents were associated with higher levels of network connectance and complementary specialization. Additionally, networks were more nested with increasing trait variability. Our findings reveal that plant functional strategies, captured by remote sensing, play an important role in structuring biotic interactions such as those between plants and pollinators, paving the way to predict these interactions at scale. 10:20am - 10:30am
ID: 375 / 2.02.2b: 3 A Bayesian Framework for Sensor-Agnostic Plant Trait Prediction Using Imaging Spectroscopy 1NASA Goddard Space Flight Center; 2GESTAR II, Morgan State University; 3ESSIC, University of Maryland; 4Science Systems and Applications, Inc.; 5Jet Propulsion Laboratory; 6University of Wisconsin Imaging spectroscopy missions like Earth Surface Mineral Dust Source Investigation and Surface Biology and Geology (SBG) provide valuable opportunities for assessing plant traits. Current empirical approaches, such as Partial Least Squares Regression (PLSR) and various machine learning methods, often lack interpretability and rigorous uncertainty quantification, and typically cannot transfer models across different sensors. To address these limitations, we propose a Bayesian framework to estimate multiple plant traits directly from spectra without requiring transformations like those used in PLSR. Our Bayesian framework includes four models: a linear model (comparable to PLSR), a non-linear model (utilizing kernel transformation), a hierarchical model (accounting for trait variation across broadleaf and needleleaf trees), and a phenological model (allowing regression parameters to vary temporally). Additionally, we introduce a projection technique that reduces fitted trait models to submodels with fewer spectral bands while maintaining predictive accuracy. This technique identifies the optimal bands necessary for accurate trait estimation and enables flexible model adaptation across different spectral configurations. We apply these models to predict leaf-level traits using a global dataset and extend this to the airborne scale using AVIRIS-NG data and trait measurements from the 2022 SBG High-Frequency Timeseries campaign. At both scales, the linear Bayesian model performs comparably or slightly better than PLSR, while the other Bayesian models show varying degrees of improvement depending on the specific trait. The reduced models identify between 6 and 30 essential bands. To test the framework’s adaptability across sensor configurations, we resample AVIRIS-NG spectra to different resolutions and add synthetic errors. Our projection algorithm successfully adapts the AVIRIS-NG model to these simulated sensors without requiring spectral resampling. This approach demonstrates a robust, interpretable, and sensor-agnostic method for plant trait estimation, enabling consistent and reliable large-scale trait mapping across multiple missions. 10:30am - 10:40am
ID: 290 / 2.02.2b: 4 Towards estimating vegetation structure from orbit: a case study for tropical forest and TanDEM-X 1Helmholtz Centre for Environmental Research UFZ, Leipzig Germany; 2German Aerospace Center (DLR), Oberpfaffenhofen Germany Understanding the dynamics of forests is crucial for ecology and climate change research. 10:40am - 10:50am
ID: 145 / 2.02.2b: 5 Exploring the role of vegetation height heterogeneity through LiDAR information for biodiversity estimation 1Free University of Bolzano-Bozen, Italy; 2Czech University of Life Sciences Prague; 3University of Bologna; 4Czech University of Life Sciences Prague; 5Free University of Bolzano-Bozen, Italy Estimating forest biodiversity is essential for effective conservation and ecosystem management. Traditional field surveys, while valuable, are often time-consuming and labor-intensive, challenging the collection of comprehensive and accurate biodiversity data. Over recent decades, various methods have emerged to assess forest structure and tree species diversity using remote sensing technologies. One notable indirect approach is the "Height Variation Hypothesis" (HVH). This hypothesis states that greater heterogeneity in tree height, as measured by LiDAR data, indicates higher complexity in forest structure and greater tree species diversity. The HVH is based on the relationship between variations in canopy height and tree species diversity, using the forest's vertical structure as a biodiversity indicator. This hypothesis has garnered significant attention in recent literature, with numerous studies exploring its applications. Researchers have tested the HVH using airborne laser scanning LiDAR data and, more recently, GEDI LiDAR data, demonstrating how space-borne LiDAR can identify biodiversity patterns through variations in tree canopy height. The approach has also been applied to forests affected by extreme wind events, which cleared entire areas, to investigate the role of tree height heterogeneity in forest stability and biodiversity. Beyond forest ecosystems, the HVH has been extended to agricultural landscapes, integrating LiDAR and photogrammetric data with ecological modelling to assess vertical heterogeneity at the landscape level. This integration has provided valuable insights into conserving avian and bee diversity in human-dominated landscapes. In summary, the HVH presents a promising method for estimating biodiversity in different natural ecosystems, using LiDAR data. By synthesizing findings from recent studies, we highlight the potential of LiDAR technology to enhance our understanding of biodiversity patterns and support effective conservation and management strategies. 10:50am - 11:00am
ID: 339 / 2.02.2b: 6 Soil carbon predictions across the landscape using remotely- sensed canopy structure measurements in southern Amazonia 1University of Exeter, United Kingdom; 2Permian Global, United Kingdom.; 3University of São Paulo, Center for Nuclear Energy in Agriculture, Brazil Soil accounts for up to a third of the total Amazonian forest carbon stocks ; however, uncertainties in soil organic carbon (SOC) stocks are very large compared to above-ground stocks. It is important that we learn more about SOC stocks and their management to learn about the functioning of the land carbon sink under continued climate and land use change. This study investigates the relationship between canopy structure and SOC in tropical forests, with the goal of improving SOC predictions across the landscape using satellite remote sensing. We took soil samples in 142 locations up to a depth of 30 cm, with corresponding measurements of canopy structure using field hemispherical photography, airborne lidar and spaceborne lidar (within footprints of the Global Ecosystem Dynamics Investigation). These were analysed using open source software to ensure the methods are readily accessible. SOC in our study sites ranged from 0.34% to 9.04% and Plant Area Index between 2.28 and 9.59. We use statistical inference from Generalised Linear Models (GLMs) to develop understanding of mechanistic relationships between soil carbon concentrations and indicators of forest canopy structure (e.g. Plant Area Index, rumple index, vertical complexity index). These results inform modelling strategies for predicting soil carbon on landscape scales using spaceborne sensors such as GEDI and Landsat. Our research offers a novel approach to refining landscape scale predictions of SOC in tropical ecosystems, providing further insights into the variation in carbon storage. This ultimately contributes to global efforts to understand terrestrial carbon dynamics and the land carbon sink under climate change conditions . Furthermore, our work demonstrates the value of openly available global data products, and methods that use this appropriately. |