Propagating aleatory and epistemic uncertainty in land cover change prediction process

Ecological Informatics - Tập 37 - Trang 24-37 - 2017
Ahlem Ferchichi1, Wadii Boulila1,2, Imed Riadh Farah1,2
1RIADI Laboratory, National School of Computer Sciences, University of Manouba, Tunisia
2ITI Department, Telecom-Bretagne, Brest, France

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