2018_EJRNL_PP_MENAD_NAIT_AMAR_1.pdf
Terbatas  Suharsiyah
» Gedung UPT Perpustakaan
Terbatas  Suharsiyah
» Gedung UPT Perpustakaan
An effective design and optimum production strategies of a well depend on the accurate prediction of its
bottom hole pressure (BHP) which may be calculated or determined by several methods. However, it is not
practical technically or economically to apply for a well test or to deploy a permanent pressure gauge in the
bottom hole to predict the BHP. Consequently, several correlations and mechanistic models based on the
known surfacemeasurements have been developed. Unfortunately, all these tools (correlations& mechanistic
models) are limited to some conditions and intervals of application. Therefore, establish a global model that
ensures a large coverage of conditions with a reduced cost and high accuracy becomes a necessity.
In this study, we propose new models for estimating bottom hole pressure of vertical wells with
multiphase flow. First, Artificial Neural Network (ANN) based on back propagation training (BP-ANN)
with 12 neurons in its hidden layer is established using trial and error. The next methods correspond to
optimized or evolved neural networks (optimize the weights and thresholds of the neural networks)
with Grey Wolves Optimization (GWO), and then its accuracy to reach the global optima is compared
with 2 other naturally inspired algorithms which are the most used in the optimization field: Genetic
Algorithm (GA) and Particle Swarms Optimization (PSO). The models were developed and tested using
100 field data collected from Algerian fields and covering a wide range of variables.
The obtained results demonstrate the superiority of the hybridization ANN-GWO compared with the 2
other hybridizations or with the BP learning alone. Furthermore, the evolved neural networks with these
global optimization algorithms are strongly shown to be highly effective to improve the performance of
the neural networks to estimate flowing BHP over existing approaches and correlations