Title of article :
Comparing Two Methods of Neural Networks to Evaluate Dead Oil Viscosity
Author/Authors :
Koulivand, Mohsen Department of Engineering - Borujerd Branch - Islamic Azad University - Borujerd, Iran , Dabiri-Atashbeyk, Meysam National Iranian South Oil Field Company - Ahvaz, Iran , Koolivand-Salooki, Mehdi Gas Research Division - Research Institute of Petroleum Industry (RIPI) - Tehran, Iran , Esfandyari, Morteza Department of Chemical Engineering - University of Bojnord, Iran
Pages :
10
From page :
60
To page :
69
Abstract :
Reservoir characterization and asset management require comprehensive information about formation fluids. In fact, it is not possible to find accurate solutions to many petroleum engineering problems without having accurate pressure-volume-temperature (PVT) data. Traditionally, fluid information has been obtained by capturing samples and then by measuring the PVT properties in a laboratory. In recent years, neural network has been applied to a large number of petroleum engineering problems. In this paper, a multi-layer perception neural network and radial basis function network (both optimized by a genetic algorithm) were used to evaluate the dead oil viscosity of crude oil, and it was found out that the estimated dead oil viscosity by the multi-layer perception neural network was more accurate than the one obtained by radial basis function network.
Keywords :
Neural Network , Genetic Algorithm , Multi-layer Perceptron (MLP) , Radial Basis Function (RBF) , Dead Oil Viscosity
Journal title :
Astroparticle Physics
Serial Year :
2018
Record number :
2450757
Link To Document :
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