Title of article :
A Novel Approach to Estimate Reservoir Permeability Using Machine Learning Method
Author/Authors :
Nasimi, Reza Electrical and Computer Engineering Faculty - Semnan University - Semnan, Iran , Azadi, Sassan Electrical and Computer Engineering Faculty - Semnan University - Semnan, Iran , Farzinfar, Mehdi School of Engineering - Damghan University - Damghan, Iran , Jazaeri, Mostafa Electrical and Computer Engineering Faculty - Semnan University - Semnan, Iran
Abstract :
Reservoir permeability in upstream of petroleum engineering plays an essential role in crude oil
production. Due to the high cost and difficulty in direct measurement of the permeability, having
a robust model of this parameter based on the openhole logs and data is preferred. The sonic,
volumetric density, gamma ray, total porosity, neutron porosity logs are available in the time of
logging and have the highest correlation with reservoir permeability characteristics. To estimate
the permeability of the reservoir based on these available data, a new intelligent method of Genetic
Algorithm (GA) and Wavelet Neural Network (WNN) is derived. In the developed model, a new
objective function has been introduced. For avoiding more complexity of the objective function, the
initializing weights of neural network has been done by GA. Then, the training levenberg marquardt
algorithm is utilized to update the optimal weighting. In other words, wavelet as activation function of
neural network enhances exploitation search abilities of the algorithm and leads to a robust model. In
the following, a sample reservoir as a source of data in this field is selected to evaluate the effectiveness
of the proposed algorithm in the permeability estimation. For the sake of comparison, two algorithms
of BP-ANN and GA-BP, which have been already presented in the literature, are applied for the
same data sets and the superiority of developed model in estimation has been illustrated.
Keywords :
Permeability Estimation , Wavelet Neural Network , Genetic Algorithm , Logging Data , Reservoir Rock
Journal title :
International Journal of Nonlinear Analysis and Applications