TY - JOUR
PY - 2021//
TI - P-Flash - a machine learning-based model for flashover prediction using recovered temperature data
JO - Fire safety journal
A1 - Wang, Jun
A1 - Tam, Wai Cheong
A1 - Jia, Youwei
A1 - Peacock, Richard
A1 - Reneke, Paul
A1 - Fu, Eugene Yujun
A1 - Cleary, Thomas
SP - e103341
EP - e103341
VL - 122
IS -
N2 - Research was conducted to examine the use of Support Vector Regression (SVR) to build a model to forecast the potential occurrence of flashover in a single-floor, multi-room compartment fire. Synthetic temperature data for heat detectors in different rooms were generated, 1000 simulation cases are considered, and a total of 8 million data points are utilized for model development. An operating temperature limitation is placed on heat detectors where they fail at a fixed exposure temperature of 150 ̊C and no longer provide data to more closely follow actual performance. The forecast model P-Flash (Prediction model for Flashover occurrence) is developed to use an array of heat detector temperature data, including in adjacent spaces, to recover temperature data from the room of fire origin and predict potential for flashover. Two special treatments, sequence segmentation and learning from fitting, are proposed to overcome the temperature limitation of heat detectors in real-life fire scenarios and to enhance prediction capabilities to determine if the flashover condition is met even with situations where there is no temperature data from all detectors. Experimental evaluation shows that P-Flash offers reliable prediction. The model performance is approximately 83% and 81%, respectively, for current and future flashover occurrence, considering heat detector failure at 150 ̊C.
RESULTS demonstrate that P-Flash, a new data-driven model, has potential to provide fire fighters real-time, trustworthy, and actionable information to enhance situational awareness, operational effectiveness, and safety for firefighting.
Language: en
LA - en SN - 0379-7112 UR - http://dx.doi.org/10.1016/j.firesaf.2021.103341 ID - ref1 ER -