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A Data Storage, Analysis, and Project Administration Engine (TMFdw) for Small- to Medium-Size Interdisciplinary Ecological Research Programs with Full Raster Data Capabilities.

Authors :
Grigusova, Paulina
Beilschmidt, Christian
Dobbermann, Maik
Drönner, Johannes
Mattig, Michael
Sanchez, Pablo
Farwig, Nina
Bendix, Jörg
Source :
Data (2306-5729); Dec2024, Vol. 9 Issue 12, p143, 19p
Publication Year :
2024

Abstract

Over almost 20 years, a data storage, analysis, and project administration engine (TMFdw) has been continuously developed in a series of several consecutive interdisciplinary research projects on functional biodiversity of the southern Andes of Ecuador. Starting as a "working database", the system now includes program management modules and literature databases, which are all accessible via a web interface. Originally designed to manage data in the ecological Research Unit 816 (SE Ecuador), the open software is now being used in several other environmental research programs, demonstrating its broad applicability. While the system was mainly developed for abiotic and biotic tabular data in the beginning, the new research program demands full capabilities to work with area-wide and high-resolution big models and remote sensing raster data. Thus, a raster engine was recently implemented based on the Geo Engine technology. The great variety of pre-implemented desktop GIS-like analysis options for raster point and vector data is an important incentive for researchers to use the system. A second incentive is to implement use cases prioritized by the researchers. As an example, we present machine learning models to generate high-resolution (30 m) microclimate raster layers for the study area in different temporal aggregation levels for the most important variables of air temperature, humidity, precipitation, and solar radiation. The models implemented as use cases outperform similar models developed in other research programs. Dataset: The link to the datasets is as follows: https://respect.app.geoengine.io (accessed on 29 November 2024). [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
23065729
Volume :
9
Issue :
12
Database :
Complementary Index
Journal :
Data (2306-5729)
Publication Type :
Academic Journal
Accession number :
181942299
Full Text :
https://doi.org/10.3390/data9120143