Proposing a High-Precision Petroleum Pipeline Monitoring System for Identifying the Type and Amount of Oil Products Using Extraction of Frequency Characteristics and a MLP Neural Network

Setting up pipelines in the oil industry is very costly and time consuming. For this reason, a pipe is usually used to transport various petroleum products, so it is very important to use an accurate and reliable control system to determine the type and amount of oil product. In this research, using a system based on the gamma-ray attenuation technique and the feature extraction technique in the frequency domain combined with a Multilayer Perceptron (MLP) neural network, an attempt has been made to determine the type and amount of four petroleum products. The implemented system consists of a dual-energy gamma source, a test pipe to simulate petroleum products, and a sodium iodide detector. The signals received from the detector were transmitted to the frequency domain, and the amplitudes of the first to fourth dominant frequency were extracted from them. These characteristics were given to an MLP neural network as input. The designed neural network has four outputs, which is the percentage of the volume ratio of each product. The proposed system has the ability to predict the volume ratio of products with a maximum root mean square error (RMSE) of 0.69, which is a strong reason for the use of this system in the oil industry.

Authors
Mayet A.M.1 , Nurgalieva K.Sh.2 , Al-Qahtani A.A.1 , Narozhnyi I.M. 3 , Alhashim H.H.4 , Nazemi Ehsan5 , Indrupskiy I.M. 3
Journal
Publisher
MDPI AG
Number of issue
16
Language
English
Pages
2916
Status
Published
Volume
10
Year
2022
Organizations
  • 1 King Khalid University
  • 2 Saint-Petersburg Mining University
  • 3 RUDN University
  • 4 Imam Abdulrahman Bin Faisal University
  • 5 University of Antwerpen
Keywords
gamma-ray attenuation technique; Multilayer perceptron (MLP) neural network; feature extraction; frequency domain
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Other records

Шипилов А.Ю.
Vestnik RUDN. International Relations. Федеральное государственное автономное образовательное учреждение высшего образования Российский университет дружбы народов (РУДН). Vol. 22. 2022. P. 700-713