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利用人工神经网络改进对Max-Bridge油基泥浆流变特性的跟踪

Improved Tracking of the Rheological Properties of Max-Bridge Oil-Based Mud Using Artificial Neural Networks.

作者信息

Alsabaa Ahmed, Elkatatny Salaheldin

机构信息

College of Petroleum Engineering & Geosciences, King Fahd University of Petroleum & Minerals, Dhahran 31261, Saudi Arabia.

出版信息

ACS Omega. 2021 Jun 11;6(24):15816-15826. doi: 10.1021/acsomega.1c01230. eCollection 2021 Jun 22.

Abstract

Lab measurements for the rheological properties of mud are critical for monitoring the drilling fluid functions during the drilling operations. However, these measurements take a long time and might need more than one person to be completed. The main objectives of this research are to implement artificial intelligence for predicting the mud rheology from only Marsh funnel (μ) and measuring mud density (ρ) easily and quickly on the rig site. For the first time, an artificial neural network (ANN) was used to build different models for predicting the rheological properties of Max-bridge oil-based mud. The properties included the plastic viscosity (μ), yield point (γ), flow behavior index (η), and apparent viscosity (μ). Field measurements of 383 samples were used to build and optimize the ANN models. The obtained results showed that 32 neurons in the hidden layer and tan sigmoid function transfer function were the best parameters for all ANN models. The training and testing processes of models showed a strong prediction performance with a correlation coefficient () greater than 0.91 and an average absolute percentage error (AAPE) less than 5.31%. New empirical correlations were developed based on the optimized weights and biases of the ANN models. The developed empirical correlations were compared with the published correlations, and the comparison results confirmed that the ANN-developed correlations outperformed all previous work.

摘要

泥浆流变特性的实验室测量对于监测钻井作业期间的钻井液功能至关重要。然而,这些测量耗时较长,可能需要不止一人才能完成。本研究的主要目标是利用人工智能,仅通过马氏漏斗(μ)并在钻机现场轻松快速地测量泥浆密度(ρ)来预测泥浆流变学。首次使用人工神经网络(ANN)建立不同模型来预测Max-bridge油基泥浆的流变特性。这些特性包括塑性粘度(μ)、屈服点(γ)、流动行为指数(η)和表观粘度(μ)。利用383个样品的现场测量数据来建立和优化ANN模型。所得结果表明,隐藏层中的32个神经元和正切Sigmoid函数传递函数是所有ANN模型的最佳参数。模型的训练和测试过程显示出强大的预测性能,相关系数()大于0.91,平均绝对百分比误差(AAPE)小于5.31%。基于ANN模型的优化权重和偏差建立了新的经验关联式。将所建立的经验关联式与已发表的关联式进行比较,比较结果证实ANN建立的关联式优于所有先前的工作。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cf9d/8223408/8f877f5e0828/ao1c01230_0002.jpg

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