Figure 4 - uploaded by Dominik Hering
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Connectors of the HP model, where ˙ m fl,evap is the mass flow rate, that enters the evaporator with a temperature of T fl,evap , ˙ mre,evap leaves the evaporator with a temperature of Tre,evap, ˙ m fl,cond enters the condenser with a temperature of T fl,cond and ˙ m re,cond leaves the condenser with a temperature of T re,cond .

Connectors of the HP model, where ˙ m fl,evap is the mass flow rate, that enters the evaporator with a temperature of T fl,evap , ˙ mre,evap leaves the evaporator with a temperature of Tre,evap, ˙ m fl,cond enters the condenser with a temperature of T fl,cond and ˙ m re,cond leaves the condenser with a temperature of T re,cond .

Contexts in source publication

Context 1
... optimize the operation of each HP in the network. The HP model contains formulations for operational behavior of the HP and it is shown in Figure 4. The HP model has the connectors of Fig. 4. First, the incoming thermal power, ˙ Q evap,t , and outgoing thermal power, ˙ Q cond,t , are calculated according to ...
Context 2
... optimization model contains components of the pipe network and the consumers and is based on previous work [27]. We optimize the operation of each HP in the network. The HP model contains formulations for operational behavior of the HP and it is shown in Figure 4. The HP model has the connectors of Fig. 4. First, the incoming thermal power, ˙ Q evap,t , and outgoing thermal power, ˙ Q cond,t , are calculated according ...

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