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Davide Consoli
PeerJ Author
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Davide Consoli

PeerJ Author

Summary

Davide Consoli received the Ph.D. degree from Politecnico di Torino, Turin, Italy, in 2023, thesis on fast methods for computational electromagnetics with biomedical applications.

He is currently working as a Post-Doctoral Researcher at the OpenGeoHub Foundation, The Netherlands. At OpenGeoHub, Davide supports the foundation’s work at international projects developing solutions for high performance computing and modeling on large scale spatiotemporal earth-observation data.

Data Mining & Machine Learning Data Science Ecosystem Science Environmental Impacts Spatial & Geographic Information Science

Work details

Postdoctoral researcher

OpenGeoHub Foundation

PeerJ Contributions

  • Articles 4
August 12, 2025
Light use efficiency (LUE) based bimonthly gross primary productivity (GPP) for global grasslands at 30 m spatial resolution (2000–2022)
Mustafa Serkan Isik, Leandro Parente, Davide Consoli, Lindsey Sloat, Vinicius Vieira Mesquita, Laerte Guimaraes Ferreira, Simone Sabbatini, Radost Stanimirova, Nathalia Monteiro Teles, Nathaniel Robinson, Ciniro Costa Junior, Tomislav Hengl
https://doi.org/10.7717/peerj.19774 PubMed 40821997
July 14, 2025
Spatiotemporal prediction of soil organic carbon density in Europe (2000–2022) using earth observation and machine learning
Xuemeng Tian, Sytze de Bruin, Rolf Simoes, Mustafa Serkan Isik, Robert Minarik, Yu-Feng Ho, Murat Şahin, Martin Herold, Davide Consoli, Tomislav Hengl
https://doi.org/10.7717/peerj.19605 PubMed 40677752
December 4, 2024
A computational framework for processing time-series of earth observation data based on discrete convolution: global-scale historical Landsat cloud-free aggregates at 30 m spatial resolution
Davide Consoli, Leandro Parente, Rolf Simoes, Murat Şahin, Xuemeng Tian, Martijn Witjes, Lindsey Sloat, Tomislav Hengl
https://doi.org/10.7717/peerj.18585 PubMed 39650555
March 13, 2024
Land potential assessment and trend-analysis using 2000–2021 FAPAR monthly time-series at 250 m spatial resolution
Julia Hackländer, Leandro Parente, Yu-Feng Ho, Tomislav Hengl, Rolf Simoes, Davide Consoli, Murat Şahin, Xuemeng Tian, Martin Jung, Martin Herold, Gregory Duveiller, Melanie Weynants, Ichsani Wheeler
https://doi.org/10.7717/peerj.16972 PubMed 38495753