ZHAO Jun, ZHANG Tao, HE Shenglin, et al. Prediction of reservoir permeability by deep belief network based on optimized parameters[J]. Petroleum Reservoir Evaluation and Development, 2021, 11(4): 577-585. DOI: 10.13809/j.cnki.cn32-1825/te.2021.04.014.
Prediction of reservoir permeability by deep belief network based on optimized parameters
Reservoir permeability is an important factor affecting reservoir productivity. In order to solve the problem of poor prediction accuracy of conventional permeability logging models in low-permeability sandstone reservoirs with poor pore connectivity
a scheme combined with deep belief network(DBN) algorithm is proposed. First
the gray correlation method is used for the correlation analysis of logging curve
and according to the correlation ranking
the characteristic sensitive curves is sorted. Then
the optimization by supervised learning is combined with the contrastive divergence for the data mining to establish the prediction model of permeability. Compared to the previous BP neural network
DBN model improves the local optimization
and enhances the training efficiency and prediction accuracy. The average relative error of the prediction model is 9.1 %
which is about 20 % lower than that of the conventional permeability model. Based on the actual data processing applications and the error analysis
it is found that this method can effectively improve the prediction accuracy of permeability for the low permeability reservoirs.