Zoeken
Zoeken kan via de modus 'eenvoudig zoeken' (één veld) of uitgebreid via 'geavanceerd zoeken' (meerdere velden). Zo kan je bv. zoeken op een combinatie van een auteursnaam (auteur), een jaartal (jaar) en een documenttype.
Boekenmand
Nuttige resultaten kan je aanvinken en toevoegen aan een mandje. De inhoud hiervan kan je exporteren of afdrukken (naar bv. PDF).
RSS
Op de hoogte blijven van nieuw toegevoegde publicaties binnen uw interessegebied? Dit kan door een RSS-feed (?) te maken van jouw zoekopdracht.
nieuwe zoekopdracht
Species distribution modeling in the cloud
Candela, L.; Castelli, D.; Coro, G.; Pagano, P.; Sinibaldi, F. (2016). Species distribution modeling in the cloud. Concurr. Comput. Practice Experience 28(4): 1056-1079. https://dx.doi.org/10.1002/cpe.3030
In: Concurrency and Computation: Practice and Experience. Wiley: Chichester, UK. ISSN 1532-0634; e-ISSN 1532-0626
| |
| Author keywords |
species distribution modeling; Hybrid Data Infrastructure; cloud computing |
| Auteurs | | Top |
- Candela, L.
- Castelli, D.
- Coro, G.
|
|
|
| Abstract |
Species distribution modeling is a process aiming at computationally predicting the distribution of species in geographic areas on the basis of environmental parameters including climate data. Such a quantitative approach has a lot of potentialities in many areas that include setting up conservation priorities, testing biogeographic hypotheses, and assessing the impact of accelerated land use. To further promote the diffusion of such an approach, it is fundamental to develop a flexible, comprehensive, and robust environment capable of enabling practitioners and communities of practice to produce species distribution models more efficiently. A promising way to build such an environment is offered by modern infrastructures promoting the sharing of resources, including hardware, software, data, and services. This paper describes an approach to species distribution modeling based on a Hybrid Data Infrastructure that can offer a rich array of data and data management services by leveraging other infrastructures (including Cloud). It discusses the whole set of services needed to support the phases of such a complex process including access to occurrence records and environmental parameters and the processing of such information to predict the probability of a species’ occurrence in given areas. |
IMIS is ontwikkeld en wordt gehost door het VLIZ.