Title of article :
State transition probability for the Markov Model dealing with on/off cooling schedule in dwellings
Author/Authors :
Jun Tanimoto، نويسنده , , Aya Hagishima، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
7
From page :
181
To page :
187
Abstract :
We gathered field measurement data on five familial and three single dwellings during summer 2000 by deploying numerous handy type hygrothermal meters with self-recording functions to measure room air, globe and outdoor air temperatures. These measurements led to conclusions on the probability of turning on an air conditioning system versus indoor globe temperature and the ongoing probability of air conditioning versus outdoor temperature. This analysis was transformed into state transition probability functions, i.e. shifting from the off to on state and from the on to off state. Identifying these state transition probability functions is an important first step in applying the Markov Model to on/off state analysis for air conditioning systems, which is one of the significant approaches for dealing with the stochastic thermal load for HVAC system. The obtained state transition probability functions should help immeasurably in determining effective schedules for air conditioning operation from inhabitant occupancy schedules.
Keywords :
On/off control for air conditioning system , State transition probability , Field measurement , Markov model
Journal title :
Energy and Buildings
Serial Year :
2005
Journal title :
Energy and Buildings
Record number :
419576
Link To Document :
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