, ModelAuxIncrement &) const

, Configuration & config(

, ostream & operator<< (std::ostream &

, ModelAuxIncrement Incrément associé au modèle auxiliaire

, ModelAuxIncrement(const Geometry &, const eckit::Configuration &

, ModelAuxIncrement(const ModelAuxIncrement &, const bool copy

, ModelAuxIncrement(const ModelAuxIncrement &, const eckit::Configuration &

, diff(const ModelAuxControl &, const ModelAuxControl &

, ModelAuxIncrement & operator=(const ModelAuxIncrement &

, ModelAuxIncrement & operator+=(const ModelAuxIncrement &

, ModelAuxIncrement & operator-=(const ModelAuxIncrement &

, ModelAuxIncrement & operator*=(const double &

, axpy(const double &, const ModelAuxIncrement &

, dot_product_with(const ModelAuxIncrement &) const

, ostream & operator<< (std::ostream &

, ObsAuxControl Classe pour gérer les observation du modèle auxiliaire

, ObsAuxControl(const eckit::Configuration &

, ObsAuxControl(const ObsAuxControl &, const bool copy

, ObsAuxControl & operator+=(const ObsAuxIncrement &

, ostream & operator<< (std::ostream &

, ObsAuxCovariance Gère la matrice de covariance d'erreur d'observation du modèle auxiliaire

, ObsAuxCovariance(const eckit::Configuration &

, linearize(const ObsAuxControl_ &

, multiply(const ObsAuxIncrement &, ObsAuxIncrement &) const

, inverseMultiply(const ObsAuxIncrement &, ObsAuxIncrement &) const

, randomize(ObsAuxIncrement &) const

, Configuration & config(

, ostream & operator<< (std::ostream &

, ObsAuxIncrement Incrément d'observation pour le modèle auxiliaire

, ObsAuxCovariance(const eckit::Configuration &

, ObsAuxIncrement(const eckit::Configuration &

, ObsAuxIncrement(const ObsAuxIncrement &, const bool copy

A. Tableau, 1-suite Trait Description Méthodes ObsAuxIncrement

, diff(const ObsAuxControl &, const ObsAuxControl &

, ObsAuxIncrement & operator=(const ObsAuxIncrement &

, ObsAuxIncrement & operator+=(const ObsAuxIncrement &

, ObsAuxIncrement & operator-=(const ObsAuxIncrement &

, ObsAuxIncrement & operator*=(const double &

, axpy(const double &, const ObsAuxIncrement &

, double dot_product_with(const ObsAuxIncrement &) const

, ostream & operator<< (std::ostream &

, ObsSpace Gère les observations du modèle

. Observationspace, Configuration &, const util::DateTime &, const util::DateTime &)

, DateTime & windowStart(

, DateTime & windowEnd(

, ostream & operator<< (std::ostream &

, ObsOperator Opérateur d'observation du modèle (H)

, static ObsOperator * create, ObservationSpace &, const eckit::Configuration &

, obsEquiv(const ModelAtLocations &, ObsVector &, const ObsAuxControl &) const

, ObsVector Permet de définir le vecteur d'observation et ses opérations associées

, ObsVector(const ObservationSpace &

, ObsVector(const ObsVector &, const bool copy

, unsigned int size() const

, ObsVector & operator=(const ObsVector &

. Obsvector-&amp;-operator*=,

, ObsVector & operator+=(const ObsVector &

, ObsVector & operator-=(const ObsVector &

, ObsVector & operator*=(const ObsVector &

, ObsVector & operator/=(const ObsVector &

, axpy(const double &, const ObsVector &

, ANNEXE Tableau A.1-suite Trait Description Méthodes void random

, double dot_product_with(const ObsVector &) const

, ostream & operator<< (std::ostream &

, State Définit le vecteur d'état du modèle

, State(const Geometry &, const Variables &, const util::DateTime &

, State(const Geometry &, const eckit::Configuration &

, State(const Geometry &, const State &

, State(const State &

, State & operator=(const State &

, ModelAtLocations &

, ostream & operator<< (std::ostream &, const State &)

, Variables Définit des variables supplémentaires du modèle Variables

, ostream & operator<< (std::ostream &, const Variables &)

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