Abstract:
The paper is concerned with an artificial neural network (ANN) based coarse-grain method (CGM) for rapid
simulation of physical processes in buildings, such transient heat-flow, fire propagation, and the circulation/dispersal
of fumes or pathogens in a building. A primary objective of the approach is to facilitate real-time
and accelerated-time visualization of such processes. Specifically, this paper reports on recent developments to
the CGM approach for modeling transient heat-flow in buildings. CGM was originally developed as an alternative
to conventional fine-grain modeling techniques (such as the Finite Difference Method (FDM) and Finite
Element Method (FEM)) to radically increase simulation speed and to ease the tasks of model development and
experimentation. An earlier study has shown that CGM can provide reasonably accurate simulations at a processing
speed several orders of magnitude faster than FDM or FEM. This paper describes and demonstrates two
refinements to the CGM approach: (i) the use of a hybrid linear regression model with an ANN to represent
each coarse-grain modeling element (the hybridization of the ANN halved its complexity and doubled its processing
speed); and (ii) a linear calibration of the ANN-based coarse-grain modeling elements to account for an
observed positive bias in their predictions (the calibration improved the accuracy of the CGM model to a level
comparable with FEM. The improved approach is demonstrated in a study of a two-dimensional model of a bay
in a research building located at the University of Florida.
Citation:
Flood, I., Issa, R. R., Abi-Shdid, C., & Dawood, N. (2005, September). Rapid Simulation of Building Physical Processes Using the Coarse-Grain Method: A Transient Heat Flow Case Study. In Proceedings of the 5th International Conference on Construction Applications of Virtual Reality (pp. 8-13).