[Research on the application of principal component analysis and improved BP neural network to the determination of Fe and Ti contents in geological samples]

Guang Pu Xue Yu Guang Pu Fen Xi. 2013 May;33(5):1392-6.
[Article in Chinese]

Abstract

Aiming at forecasting elemental contents in geological samples accurately, a principal component analysis and improved BP (PCA-BP) neural network theory is proposed in the present work. The samples from west Tianshan were measured through X-ray fluorescence measurement method, and the X-Ray fluorescence counts of each element such as Fe, Ti, V, Pb, Zn, etc. were input to the PCA-BP neural network as input variables to forecast Fe and Ti contents in uncertified geological samples quantitatively. The results show that the PCA-BP neural network can give an ideal result, and the relative error between the forecast data and chemical analysis data is less than 3%. This method provides a new and effective approach to forecasting elemental contents in geological samples.

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  • English Abstract