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ASHRAE - IIVC2022-C027

CFD-Trained ANN Model for Approximating Near-occupant Condition in Real-time Simulations

active, Most Current
Organization: ASHRAE
Publication Date: 1 January 2022
Status: active
Page Count: 8
scope:

ABSTRACT

The main drawback of Computational Fluid Dynamics (CFD) simulations has been the time and resource consuming nature which is not suitable for real-time applications. In this work, we first generated numerous CFD models of a given indoor space to obtain airspeed, temperature, and mean radiant temperature near an occupant as training data. Several artificial neural networks (ANN) models were trained using this CFD simulated data to approximate near real-time environmental conditions for a given occupant. This trained ANN model approach is a part of a real-time simulation of building operations using a combination of software and real hardware (HVAC equipment) approaches. The preliminary results suggest that the CFD- generated training data and the trained ANN model can accurately approximate such conditions in a real-time application, a method that has great potential in building simulation and building digital twin areas of research.

Document History

IIVC2022-C027
January 1, 2022
CFD-Trained ANN Model for Approximating Near-occupant Condition in Real-time Simulations
ABSTRACT The main drawback of Computational Fluid Dynamics (CFD) simulations has been the time and resource consuming nature which is not suitable for real-time applications. In this work, we first...
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