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High-rise building fire pre-warning model based on the support vector regression 被引量:1

High-rise building fire pre-warning model based on the support vector regression
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摘要 Aiming at reducing the deficiency of the traditional fire pre-warning algorithms and the intelligent fire pre-warning algorithms such as artificial neural network,and then to improve the accuracy of fire prewarning for high-rise buildings,a composite fire pre-warning controller is designed according to the characteristic( nonlinear,less historical data,many influence factors),also a high-rise building fire pre-warning model is set up based on the support vector regression( SV R). Then the wood fire standard history data is applied to make empirical analysis. The research results can provide a reliable decision support framework for high-rise building fire pre-warning. Aiming at reducing the deficiency of the traditional fire pre-warning algorithms and the intelligent fire pre-warning algorithms such as artificial neural network,and then to improve the accuracy of fire prewarning for high-rise buildings,a composite fire pre-warning controller is designed according to the characteristic( nonlinear,less historical data,many influence factors),also a high-rise building fire pre-warning model is set up based on the support vector regression( SV R). Then the wood fire standard history data is applied to make empirical analysis. The research results can provide a reliable decision support framework for high-rise building fire pre-warning.
出处 《Journal of Beijing Institute of Technology》 EI CAS 2015年第3期285-290,共6页 北京理工大学学报(英文版)
基金 Supported by the National Natural Science Foundation of China(11072035)
关键词 high-rise buildings fire composite fire pre-warning systemdesign the support vector regression pre-warning model high-rise buildings fire composite fire pre-warning systemdesign the support vector regression pre-warning model
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