Title of article :
Neuro-optimal operation of a variable air volume HVAC&R system
Author/Authors :
MIN NING، نويسنده , , M. Zaheeruddin، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
15
From page :
385
To page :
399
Abstract :
Low operational efficiency especially under partial load conditions and poor control are some reasons for high energy consumption of heating, ventilation, air conditioning and refrigeration (HVAC&R) systems. To improve energy efficiency, HVAC&R systems should be efficiently operated to maintain a desired indoor environment under dynamic ambient and indoor conditions. This study proposes a neural network based optimal supervisory operation strategy to find the optimal set points for chilled water supply temperature, discharge air temperature and VAV system fan static pressure such that the indoor environment is maintained with the least chiller and fan energy consumption. To achieve this objective, a dynamic system model is developed first to simulate the system behavior under different control schemes and operating conditions. A multi-layer feed forward neural network is constructed and trained in unsupervised mode to minimize the cost function which is comprised of overall energy cost and penalty cost when one or more constraints are violated. After training, the network is implemented as a supervisory controller to compute the optimal settings for the system. Simulation results show that compared to the conventional night reset operation scheme, the optimal operation scheme saves around 10% energy under full load condition and 19% energy under partial load conditions.
Keywords :
Optimal control , HVAC&R systems , VAV system , Vapor compression refrigeration chiller , Energy efficiency , Optimal set points , Neural network
Journal title :
Applied Thermal Engineering
Serial Year :
2010
Journal title :
Applied Thermal Engineering
Record number :
1044980
Link To Document :
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