Prediction of Electromagnetic Properties Using Artificial Neural Networks for Oil Recovery Factors

Sikiru, Surajudeen and Soleimani, H. and Shafie, A. and Olayemi, R.I. and Hassan, Y.M. (2023) Prediction of Electromagnetic Properties Using Artificial Neural Networks for Oil Recovery Factors. Colloid Journal, 85 (1). pp. 151-165.

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Abstract

Abstract: The most important parameter in the oil and gas industry is the recovery factor (RF). Higher oil consumption has resulted in a rise in global oil prices. Several research have been carried out in order to create, analyze, and optimize operational conditions. However, several reservoir factors such as viscosity, porosity, permeability, water saturation, original oil-in-place, and API gravity have been employed in the development of RF to boost oil recovery techniques without taking electromagnetic properties into account. The recovery factor was predicted using core flooding tests and a deep neural network using electromagnetic parameters. We offer a deep neural network (DNN) method with 256 nodes, seven hidden layers, and a single output. According to the acquired results, the DNN algorithms' coefficient correlation is R2 = 0.98478 for training and R2 = 0.91679 for testing, which was subsequently evaluated and confirmed for RF prediction. In terms of cost and production effectiveness, the results of this study reveal a good forecast of RF with reservoir rock and fluid parameters. © 2023, Pleiades Publishing, Ltd.

Item Type: Article
Additional Information: cited By 0
Uncontrolled Keywords: Computer system recovery; Enhanced recovery; Forecasting; Gas industry; Multilayer neural networks; Petroleum reservoir engineering; Recovery; Secondary recovery, Electromagnetic properties; Enhanced-oil recoveries; Oil and Gas Industry; Oil consumption; Oil Prices; Oil recoveries; Operational conditions; Original oil in places; Recovery factors; Water saturations, Deep neural networks
Depositing User: Mr Ahmad Suhairi UTP
Date Deposited: 04 Jun 2024 14:11
Last Modified: 04 Jun 2024 14:11
URI: https://khub.utp.edu.my/scholars/id/eprint/18822

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