• Chinese Journal of Lasers
  • Vol. 39, Issue s1, 108007 (2012)
Wang Yongqing*, Chen Yanru, Shao Yanming, Chen Jingjing, and Chen Feinan
Author Affiliations
  • [in Chinese]
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    DOI: 10.3788/cjl201239.s108007 Cite this Article Set citation alerts
    Wang Yongqing, Chen Yanru, Shao Yanming, Chen Jingjing, Chen Feinan. Multi-Spectral Measurement of Basic Oxyogen Furnace Flame Temperature Using Wavelet-Networks[J]. Chinese Journal of Lasers, 2012, 39(s1): 108007 Copy Citation Text show less

    Abstract

    Distribution of basic oxygen furnace (BOF) flame is an important basis for determining the content of molten steel temperature and composition. Analyzing 350~1100 nm spectral data from the furnace mouth, furnace flame atomic emission spectra overlap in a continuous or "black body" radiation, which are in a clear visible radiation. Data collected from nanjing iron and steel company′s steel-making furnace as sample data are used to implement the algorithms. The sample contains 400 data pairs. A model is applied based on the theory of wavelet analysis and neural networks to predict the temperature of the furnace flame and the results are analyzed in detail. It is shown that the method of neural networks with compact structure can give better hit rates of prediction; the temperature predicted by the model is inosculated to the temperature obtained by converter sub-lance comparatively.
    Wang Yongqing, Chen Yanru, Shao Yanming, Chen Jingjing, Chen Feinan. Multi-Spectral Measurement of Basic Oxyogen Furnace Flame Temperature Using Wavelet-Networks[J]. Chinese Journal of Lasers, 2012, 39(s1): 108007
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