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Self-tuning dynamic models of HVAC system components
Authors:Nabil Nassif  Samir Moujaes  Mohammed Zaheeruddin
Affiliation:1. Department of Mechanical Engineering, University of Nevada Las Vegas UNLV, USA;2. Department of Building, Civil & Environmental Engineering, Concordia University, Canada
Abstract:A great majority of modern buildings are equipped with Energy Management and Control Systems (EMCS) which monitor and collect operating data from different components of heating ventilating and air conditioning (HVAC) systems. Models derived and tuned by using the collected data can be incorporated into the EMCS for online prediction of the system performance. To that end, HVAC component models with self-tuning parameters were developed and validated in this paper. The model parameters were tuned online by using a genetic algorithm which minimizes the error between measured and estimated performance data. The developed models included: a zone temperature model, return air enthalpy/humidity and CO2 concentration models, a cooling and heating coil model, and a fan model. The study also includes tools for estimating the thermal and ventilation loads. The models were validated against real data gathered from an existing HVAC system. The validation results show that the component models augmented with an online parameter tuner, significantly improved the accuracy of predicted outputs. The use of such models offers several advantages such as designing better real-time control, optimization of overall system performance, and online fault detection.
Keywords:HVAC systems   VAV systems   Component models   Energy management control systems   Self-tuning models   Optimization
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