2016_EJRNL_PP_MAHDI_ZEINALI_HASANVAND_1.pdf
Terbatas  Suharsiyah
» Gedung UPT Perpustakaan
Terbatas  Suharsiyah
» Gedung UPT Perpustakaan
Asphaltene precipitation can cause serious problems in petroleum industry while diagnosing the
asphaltene stability conditions in crude oil system is still a challenge and has been subject of many
investigations. To monitor and diagnose asphaltene stability, high performance intelligent approaches based bio-inspired science like artificial neural network which have been optimized by
various optimization techniques have been carried out. The main purpose of the implemented
optimization algorithms is to decide high accurate interconnected weights of proposed neural
network model. The proposed intelligent approaches are examined by using extensive experimental data reported in open literature. Moreover, to highlight robustness and precision of the
addressed approaches, two different regression models have been developed and results obtained
from the aforementioned intelligent models and regression approaches are compared with the
corresponding refractive index data measured in laboratory. Based on the results, hybrid of genetic
algorithm and particle swarm optimization have high performance and average relative absolute
deviation between the model outputs and the relevant experimental data was found to be less than
0.2%. Routs from this work indicate that implication of HGAPSO-ANN in monitoring refractive index
can lead to more reliable estimation of addressed issue which can lead to design of more reliable
phase behavior simulation and further plans of oil production
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