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Sensitivity analysis of Repast computational ecology models with R/Repast 원문보기

Ecology and evolution, v.6 no.24, 2016년, pp.8811 - 8831  

Prestes García, Antonio (Departamento de Inteligencia Artificial Universidad Polité) ,  Rodríguez‐Patón, Alfonso (cnica de Madrid Boadilla del Monte Madrid Spain)

Abstract AI-Helper 아이콘AI-Helper

AbstractComputational ecology is an emerging interdisciplinary discipline founded mainly on modeling and simulation methods for studying ecological systems. Among the existing modeling formalisms, the individual‐based modeling is particularly well suited for capturing the complex temporal and...

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