C. , .. , and M. Validation,

, Du fait de l'interpolation multilinéaire, l'erreur maximum pour chaque modèle réduit RS-HDMR et RN est atteinte aux points des tables numériques. Les caractéristiques des huit sous-modèles et de leurs modèles réduits associés (RS-HDMR 0 ème , 1 er et 2 nd-ordre et RN), Les modèles réduits RS-HDMR et RN sont construits en utilisant les valeurs tabulées du sous-modèle original et sont eux-mêmes tabulés

, temps de calcul d'un point arbitraire en ms sur un ordinateur portable

, Quand il n'y a pas de valeurs dans cette table, cela signifie que le modèle réduit associé n

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