Generating Synthetic Sensor Data to Facilitate Machine Learning Paradigm for Prediction of Building Fire Hazard

被引:19
作者
Tam, Wai Cheong [1 ]
Fu, Eugene Yujun [2 ]
Peacock, Richard [1 ]
Reneke, Paul [1 ]
Wang, Jun [2 ]
Li, Jiajia [3 ]
Cleary, Thomas [1 ]
机构
[1] NIST, Gaithersburg, MD 20899 USA
[2] Hong Kong Polytech Univ, Dept Comp, Hung Hom, Hong Kong, Peoples R China
[3] Guangdong Univ Technol, Dept Ind Design, Guangzhou, Peoples R China
关键词
Machine learning; Classification; Synthetic data; Fire location detection; Fire fighting; NEURAL-NETWORK;
D O I
10.1007/s10694-020-01022-9
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Using the zone fire model CFAST as the simulation engine, time series data for building sensors, such as heat detectors, smoke detectors, and other targets at any arbitrary locations in multi-room compartments with different geometric configurations, can be obtained. An automated process for creating inputs files and summarizing model results, CData, is being developed as a companion to CFAST. An example case is presented to demonstrate the use of CData where synthetic data is generated for a wide range of fire scenarios. Three machine learning algorithms: support vector machine (SVM), decision tree (DT), and random forest (RF), are used to develop classification models that can predict the location of a fire based on temperature data within a compartment. Results show that DT and RF have excellent performance on the prediction of fire location and achieve model accuracy in between 93% and 96%. For SVM, model performance is sensitive to the size of training data. Additional study shows that results obtained from DT and RT can be used to examine the importance of each input feature. This paper contributes a learning-by-synthesis approach to facilitate the utilization of a machine learning paradigm to enhance situational awareness for fire fighting in buildings.
引用
收藏
页码:3027 / 3048
页数:22
相关论文
共 32 条
[11]   Compartment fire predictions using transpose convolutional neural networks [J].
Hodges, Jonathan L. ;
Lattimer, Brian Y. ;
Luxbacher, Kray D. .
FIRE SAFETY JOURNAL, 2019, 108
[12]  
Jebara T, 2004, P 21 INT C MACH LEAR, P55
[13]  
Jones E, 2001, SCIPY OPEN SOURCE SC
[14]  
Kazem H. A., 2016, INT J APPL ENG RES, V11, P10166
[15]   Using machine learning in physics-based simulation of fire [J].
Lattimer, B. Y. ;
Hodges, J. L. ;
Lattimer, A. M. .
FIRE SAFETY JOURNAL, 2020, 114
[16]  
Lichman M, 2013, UCI MACHINE LEARNING
[17]   Real-Time Forecasting of Building Fire Growth and Smoke Transport via Ensemble Kalman Filter [J].
Lin, Cheng-Chun ;
Wang, Liangzhu .
FIRE TECHNOLOGY, 2017, 53 (03) :1101-1121
[18]   Machine learning for internet of things data analysis: a survey [J].
Mahdavinejad, Mohammad Saeid ;
Rezvan, Mohammadreza ;
Barekatain, Mohammadamin ;
Adibi, Peyman ;
Barnaghi, Payam ;
Sheth, Amit P. .
DIGITAL COMMUNICATIONS AND NETWORKS, 2018, 4 (03) :161-175
[19]  
McGrattan K., 2020, NIST Special Publication, DOI [10.6028/NIST.SP.1019, DOI 10.6028/NIST.SP.1019]
[20]   Detection and classification of micro-grid faults based on HHT and machine learning techniques [J].
Mishra, Manohar ;
Rout, Pravat Kumar .
IET GENERATION TRANSMISSION & DISTRIBUTION, 2018, 12 (02) :388-397