Optimization of Rheological Models for Invert Emulsion Drilling Fluids using Novel Algorithms

Articles & Papers - February 2023

Abstract

Invert emulsion drilling fluids (IEDF) are recognized as the highest-performing fluid systems available,providing invaluable benefits in drilling operations. This study uses conventional and novel algorithmsto improve the fitting ability of three and four-parameter rheological models for IEDF. Linear regression(LR), quasi-linear regression (QLR), Gold Search Section (GSS), Generalized Reduced Gradient (GRG),Trust Region (TR), and Gauss-Newton (GN) methods are employed to determine optimal rheological modelparameters. The analysis utilizes an extensive field database from five different sources. In optimizing themodel parameters, a symmetric mean absolute percentage error-based objective function is used, eliminatingthe statistical problems experienced in conventional objective functions. Average symmetric mean absolutepercentage error (SMAPE) and the number of best fits (NBF) is used for selecting the most appropriaterheological model. In the performance comparison of the models, the ranking index, which is defined as thesymmetric mean absolute error percentage and the arithmetic mean of the best fit number, is also used. Thesymmetry of the error distribution giving the balance between the overestimated and underestimated errorsis predicted by the average overestimated and underestimated symmetric percentage errors.

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