4.5 Article

Machine learning-based surrogate model for calibrating fire source properties in FDS models of fa?ade fire tests

Journal

FIRE SAFETY JOURNAL
Volume 130, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.firesaf.2022.103591

Keywords

Surrogate model; Numerical simulations; Model calibration; Artificial neural networks; Fa?ade test; Fire Dynamics Simulator; Machine learning

Funding

  1. Australian Research Council [DE190100217]
  2. Australian Research Council [DE190100217] Funding Source: Australian Research Council

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This paper proposes a machine-learning based surrogate modelling technique to assist in the calibration of fire sources in simulations of facade fire tests. Two case studies are conducted to evaluate the feasibility of the proposed method.
Calibration is an important step in the development of predictive numerical models that involves adjusting input parameters not easily measured in experiments to improve the predictive accuracy of the numerical model compared to the real system. For complex models of facade fires, model calibration can be difficult due to the large number of input parameters that need to be calibrated simultaneously. This paper proposes a machinelearning-based surrogate modelling technique to help with calibrating the fire source in simulations of facade fire tests. Two case studies are presented to assess the feasibility of the proposed method: a simple fire source with a single burner surface based on the JIS A 1310:2015 test, and a complex fire source of a wooden crib based on the BS 8414-2:2015 test. The properties of the fire sources are calibrated based on thermocouple temperatures measured near the cladding surface. In both case studies, the ML-based surrogate model successfully calibrated the fire source properties, resulting in a high level of agreement between the calibrated model and results for experiments (average error = 2.8% and 14.3% for case studies 1 and 2). The proposed method can be applied for various optimisation problems in fire engineering research and design.

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