Developing a machine learning-based methodology for optimal hyperparameter determination—A mathematical modeling of high-pressure and high-temperature drilling fluid behavior

IF 5.5 Q1 ENGINEERING, CHEMICAL
Luis H. Quitian-Ardila , Yamid J. Garcia-Blanco , Angel De J. Rivera , Raquel S. Schimicoscki , Muhammad Nadeem , Oriana Palma Calabokis , Vladimir Ballesteros-Ballesteros , Admilson T. Franco
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Abstract

Drilling fluids exhibit complex rheological behavior due to a non-linear response to shear rate variations and high sensitivity to changes in temperature, time, and pressure conditions. The prediction of drilling fluid rheological behavior is crucial for the success of oil well drilling, and it directly impacts the fluid's performance. The dataset used in this study was obtained from extensive rheometric tests of water-based and olefin-based drilling fluids in steady-state flow curves. The optimal hyperparameters were guided by performance metrics and compared with alternative models such as Power-law and Herschel-Bulkley rheological models. Different configurations with different hidden layers, using neuron sequences of 16, 32, and 64, learning rates of 0.001 and 0.01, and the ReLU activation function were used to improve the model's performance. Additionally, the paper delved into the impact of the number of training epochs on the accuracy of shear stress predictions. Finding this equilibrium was identified as a crucial factor in achieving precise results. The neural network model demonstrated remarkable accuracy when using the ML-C3 configuration, with MAE values of 0.535 and R2 of 0.987 in predicting the steady-state flow curves of drilling fluids, establishing itself as a powerful tool for forecasting the rheological behavior of these fluids under diverse operational conditions. The present research significantly contributes to the field of drilling fluid rheology and provides valuable insights for optimizing drilling operations in HPHT environments.
开发基于机器学习的最优超参数确定方法--高压高温钻井液行为数学建模
钻井液由于对剪切速率变化的非线性响应以及对温度、时间和压力条件变化的高度敏感性而表现出复杂的流变行为。钻井液流变行为的预测对于油井钻探的成功至关重要,它直接影响到钻井液的性能。本研究使用的数据集来自对水基和烯烃基钻井液稳态流动曲线的大量流变测试。最佳超参数以性能指标为指导,并与 Power-law 和 Herschel-Bulkley 等流变模型进行比较。为了提高模型的性能,采用了不同的隐层配置,神经元序列分别为 16、32 和 64,学习率分别为 0.001 和 0.01,以及 ReLU 激活函数。此外,论文还深入研究了训练历元数对剪切应力预测准确性的影响。找到这一平衡点被认为是获得精确结果的关键因素。在使用 ML-C3 配置预测钻井液稳态流动曲线时,神经网络模型的 MAE 值为 0.535,R2 为 0.987,表现出了非凡的准确性,成为预测钻井液在不同作业条件下流变行为的有力工具。本研究为钻井液流变学领域做出了重大贡献,并为优化高温高压环境下的钻井作业提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chemical Engineering Journal Advances
Chemical Engineering Journal Advances Engineering-Industrial and Manufacturing Engineering
CiteScore
8.30
自引率
0.00%
发文量
213
审稿时长
26 days
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