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. , Représentation des prix sur une journée selon le système de tarification CPP

. , Représentation des prix sur une journée selon le système de tarification RTP

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. , qsp (resp. qsm) correspondant à la quantité d'énergie qui remplit (resp. quitte) les batteries pendant l'intervalle courant et efp (resp. efm) correspondant à une énergie excédentaire (resp. déficitaire) due aux effacements, Les variables du modèle d'optimisation avec

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.. .. La-topologie-du-réseau,

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. , Topologie des réseaux testés avec 6, 12 et 24 prosumers (on ne montre pas, ici, la topologie pour 100 prosumers pour des raisons évidentes de taille, mais elle suit la même logique que celles présentées)

. , sur 50 essais pour les différentes valeurs de ?. Les barres grises représentent la moyenne des pertes d'énergie sur les 50 essais, pour la négociation décentralisée, suivant notre protocole. Les barres blanches représentent la moyenne des pertes d'énergie pour la résolution centralisée en utilisant le système d'équations (6.8), Les barres noires représentent le niveau d'énergie moyen échangé dans la simulation

. , en pourcentage d'énergie échangée, en utilisant les négociations décentralisées. Les barres blanches représentent le niveau d'énergie perdue lors des échanges entre prosumers, sous la forme de chaleur, en pourcentage d'énergie échangée, en utilisant le système d'équations (6.8), Les barres noires représentent le niveau d'énergie perdue lors des échanges entre prosumers, sous la forme de chaleur (effet Joule)

. , Vecteur représentant les besoins, les capacités d'effacement et la production des trois prosumers pour quatre intervalles

. , Prix pour chacun des 24 intervalles sur le marché EPEXSPOT du, pp.29-40

. , Encore une fois, en raison de la taille du tableau, il serait inutile d'exposer les capacités des liens pour la topologie à 100 prosumers, Capacité des lignes en fonction du réseau de prosumer pour les expériences avec 6, 12 et 24 prosumers (voir Figure 6.7)