Estimation of Geophysical Properties of Sandstone Reservoir Based on Hybrid Dimensionality Reduction with Elman Neural Networks
暂无分享,去创建一个
Because of the complex processes and the high cost of rock geophysical properties tested in laboratory, an intelligent method based on hybrid dimensionality reduction with Elman neural networks was proposed to estimate the geophysical parameters of sandstone. Firstly, the grey correlation analysis is used to calculate the correlation between rock slice feature parameters and geophysical properties to select some parameters with high correlation; secondly, the principal component analysis is used for once more dimension reduction based on the selected feature parameters; finally, the Elman neural networks is applied to find the mapping relationship between rock slice feature parameters and geophysical properties within it. The result showed that the average relative errors of porosity and permeability were 7.28% and 6.25% respectively.
[1] Yike Guo,et al. A rule based fuzzy model for the prediction of petrophysical rock parameters , 2001 .
[2] Weimin Ge. Mechanical components and control engineering III : selected, peer reviewed papers from the 3rd Asian Pacific Conference on Mechanical Components and Control Engineering (ICMCCE 2014), September 20-21, 2014, Tianjin, China , 2014 .
[3] Wang Junjie,et al. Prediction of internet traffic based on Elman neural network , 2009, 2009 Chinese Control and Decision Conference.