| Literature DB >> 35042854 |
Peter Tyrrell1,2,3, Irene Amoke4, Koen Betjes5, Femke Broekhuis6, Robert Buitenwerf7,8, Sarah Carroll9, Nathan Hahn9,10, Daniel Haywood11, Britt Klaassen12, Mette Løvschal13, David Macdonald14, Karen Maiyo11, Hellen Mbithi11, Nelson Mwangi15, Churchil Ochola11, Erick Odire11, Victoria Ondrusek5, Junior Ratemo11, Frank Pope15, Samantha Russell5, Wilson Sairowua16, Kiptoo Sigilai11, Jared A Stabach17, Jens-Christian Svenning7,8, Elizabeth Stone5, Johan T du Toit18,19, Guy Western5, George Wittemyer9,15,10, Jake Wall16.
Abstract
The savannas of the Kenya-Tanzania borderland cover >100,000 km2 and is one of the most important regions globally for biodiversity conservation, particularly large mammals. The region also supports >1 million pastoralists and their livestock. In these systems, resources for both large mammals and pastoralists are highly variable in space and time and thus require connected landscapes. However, ongoing fragmentation of (semi-)natural vegetation by smallholder fencing and expansion of agriculture threatens this social-ecological system. Spatial data on fences and agricultural expansion are localized and dispersed among data owners and databases. Here, we synthesized data from several research groups and conservation NGOs and present the first release of the Landscape Dynamics (landDX) spatial-temporal database, covering ~30,000 km2 of southern Kenya. The data includes 31,000 livestock enclosures, nearly 40,000 kilometres of fencing, and 1,500 km2 of agricultural land. We provide caveats and interpretation of the different methodologies used. These data are useful to answer fundamental ecological questions, to quantify the rate of change of ecosystem function and wildlife populations, for conservation and livestock management, and for local and governmental spatial planning.Entities:
Mesh:
Year: 2022 PMID: 35042854 PMCID: PMC8766582 DOI: 10.1038/s41597-021-01100-9
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444
Fig. 1The Kenyan-Tanzania borderland area (roughly 100,000 km2), is the focus of this data release. Our initial data-set covers most of Kajiado and Narok counties in Kenya. This region is one of the most important areas globally for conservation. The area consists of 16 national parks and reserves (light green), protected forests, including forest reserves and community protected forests (dark green) and many conservancies, wildlife management areas, game management areas, and conservation areas (orange).
Fig. 2A map of the dataset presented in the first release of this database. Including the rough area covered by each data-collection method (no area is given for MEP as data collection is ad-hoc), and the three datasets released livestock enclosures (bomas), agricultural land use, and fencing.
Metadata for the data currently publicly available from the data portal.
| Data Type | Data Geometry Type | Data Contributor | Total Area covered | Number of objects/size | Methods | Projection |
|---|---|---|---|---|---|---|
| Livestock Enclosures (Boma) | Point | SORALO | 25,041 km2 | 26,309 | Google Earth Digitisation | WGS84 |
| KWT | 6,373 km2 | 4,714 | Google Earth and Bing maps Digitization | |||
| Polygon | SORALO | 25,041 km2 | 32,592 | Google Earth Digitisation | WGS84 | |
| KWT | 6,373 km2 | 5,118 | Google Earth and Bing maps Digitization | |||
| Fences | Polylines | SORALO | 25,041 km2 | 37,847.5 km | Google Earth Digitisation | WGS84 |
| Aarhus University | 5,771 km2 | 2,104.7 km (2016 data) | Digitisation of Landsat Imagery | |||
| Mara Elephant Project | 1,787 km | Ground collection | ||||
| 41,739.2 km | ||||||
| Agriculture | Polygon | SORALO | 25,379 km2 | 785.9 km2 | Google Earth Digitisation | WGS84 |
| KWT | 6,373 km2 | 676.6 km | Google Earth and Bing maps Digitization | |||
Fig. 3Example of the fence lines that are visible with Google Maps imagery and which were digitized by SORALO.
Fig. 4Example of the different livestock enclosure types (bomas) that are visible with Google Earth and Bing maps imagery and which were digitized by SORALO and KWT. Note the visible change in terrain colour and texture where livestock is held and the surrounding brush fences.
Fig. 5The date of acquisition of satellite imagery from Google Earth used in the SORALO mapping process. Black polygons have no date attribute.
| Measurement(s) | livestock enclosures • agriculture • fence |
| Technology Type(s) | digital curation |
| Sample Characteristic - Environment | savanna |
| Sample Characteristic - Location | East Africa |