Cheng-Chun Lin and L. Wang. 2015.Real-time forecasting of building fire growth and smoke transport. Submitted to Fire Safety Journal.
Cheng-Chun Lin and L. Wang. 2014. Forecasting smoke transport in a compartment fire using Ensemble Kalman Filter. Journal of Fire Sciences. DOI: 10.1177/0734904114548837 (IF: 1.26)
Cheng-Chun Lin and L. Wang. 2013. Forecasting simulations of indoor environment using data assimilation via an Ensemble Kalman filter. Building and Environment, Vol. 64: 169–176. (IF: 2.43)
Motivation:
Data assimilation is a technique to combine numerical simulations with measured data from sensors to forecast future events, or reconstruct past events.
In building simulations, measured data are often used to validate/calibrate a building model. If the comparison is good, the model is believed to be ok; If it is not good, reasons have to be provided.
Data assimilation can make more use of measured data by combining them with numerical model, allowing one to "make sense" of the observations.
Research Highlights:
1. Indoor Contaminant Transport Prediction
2. Forecasting Building Smoke Transport During Fires
Real-time Forecasting of Building Fire and Smoke Spread for a 3-zone Case
At 180 seconds, heat release rate increased from 1.5 kW to 2.8 kW. The system was able to respond dynamically: the forecasted parameters (lines) updated dynamically according to the measured data (dots).