2016_EJRNL_PP_YING_XIE_1.pdf
Terbatas  Suharsiyah
» Gedung UPT Perpustakaan
Terbatas  Suharsiyah
» Gedung UPT Perpustakaan
The radial basis function neural network is a popular supervised learning tool based on machinery
learning technology. Its high precision having been proven, the radial basis function neural network
has been applied in many areas. The accumulation of deposited materials in the pipeline may lead
to the need for increased pumping power, a decreased flow rate or even to the total blockage of the
line, with losses of production and capital investment, so research on predicting the wax deposition
rate is significant for the safe and economical operation of an oil pipeline. This paper adopts the
radial basis function neural network to predict the wax deposition rate by considering four main
influencing factors, the pipe wall temperature gradient, pipe wall wax crystal solubility coefficient,
pipe wall shear stress and crude oil viscosity, by the gray correlational analysis method. MATLAB
software is employed to establish the RBF neural network. Compared with the previous literature,
favorable consistency exists between the predicted outcomes and the experimental results, with a
relative error of 1.5%. It can be concluded that the prediction method of wax deposition rate based
on the RBF neural network is feasible.
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