EGU2020-22058
https://doi.org/10.5194/egusphere-egu2020-22058
EGU General Assembly 2020
© Author(s) 2022. This work is distributed under
the Creative Commons Attribution 4.0 License.

Nature 4.0 – Intelligent networked systems for ecosystem monitoring

Nicolas Friess1, Marvin Ludwig1, Christoph Reudenbach1, Thomas Nauss1, and the Nature 4.0-Team*
Nicolas Friess et al.
  • 1Philipps-University Marburg, Faculty of Geography, Environmental Informatics, Germany (nature40@staff.uni-marburg.de)
  • *A full list of authors appears at the end of the abstract

Successful conservation strategies and adaptive management require frequent observations and assessments of ecosystems. Depending on the conservation target this is commonly achieved by monitoring schemes carried out locally by experts. In general, these expert surveys provide a high level of detail which however is traded-off against the limited spatial coverage and repetition with which they are commonly executed. Thus, it is common practice to spatially expand these observations by remote sensing techniques. For a resilient monitoring both the expert observations and the spatio-temporal upscaling have to be extended by automated measurements and reproducible modelling.  Therefore, Nature 4.0 is developing a prototype of a modular environmental monitoring system for spatially and temporally high-resolution observations of species, habitats and key processes.  This prototype system is being developed in the Marburg Open Forest, an open research, education and development platform for environmental observation methods. Here, we present the experiences and challenges of the first year with a focus on the conceptual design and the first implementation of the core observation subsystems and their comparison with the data collected by classical field surveys and remote sensing. The spatially distributed acquisition of abiotic and biotic environmental parameters is based on self-developed as well as third party sensor technology.  This includes an automated area-wide radiotracking system of bats and birds and sensor units for measurements of microclimatic conditions and tree sap flow as well as spectral imaging and soundscape recording. The backbone of the automated data collection and transmission is an autonomous LoRa and WiFi mesh network, which is connected to the internet via radio relay. By utilizing powerful data integration and analysis methods, the system will enable researchers, conservationists and the public to effectively observe landscapes through a set of diverse lenses. Here, we present first results as well as an outlook for future developments of intelligent networked systems for ecosystem monitoring.

Nature 4.0-Team:

Jörg Bendix, Alexey Noskov, Martin Brändle, Roland Brandl, Jonas Mielke Möglich, Stephan Dahlke, Sven Heuer, Nina Farwig, Kim Lindner, Sascha Rösner, Bernd Freisleben, Jonas Höchst, Patrick Lampe, Jannis Gottwald, Hajo Holzmann, Pavel Tafo, Thomas Müller, Lars Opgenoorth, Martin Leberecht, Carina Peter, Phillip Bengel, Petra Quillfeldt, Juan Masello, Bernhard Seeger, Johannes Drönner, Christian Beilschmidt, Ralf Steinmetz, Patrick Lieser, Julian Zobel

How to cite: Friess, N., Ludwig, M., Reudenbach, C., and Nauss, T. and the Nature 4.0-Team: Nature 4.0 – Intelligent networked systems for ecosystem monitoring, EGU General Assembly 2020, Online, 4–8 May 2020, EGU2020-22058, https://doi.org/10.5194/egusphere-egu2020-22058, 2020.

This abstract will not be presented.