4.7 Article

Applications of Discrete Wavelet Transform for Feature Extraction to Increase the Accuracy of Monitoring Systems of Liquid Petroleum Products

期刊

MATHEMATICS
卷 9, 期 24, 页码 -

出版社

MDPI
DOI: 10.3390/math9243215

关键词

wavelet transform; feature extracting; monitoring system; petroleum products

资金

  1. Deputyship for Research & Innovation, Ministry of Education in Saudi Arabia [IFPHI-325-135-2020]
  2. King Abdulaziz University, DSR, Jeddah, Saudi Arabia

向作者/读者索取更多资源

This paper introduces a methodology utilizing X-ray tube and detector to monitor liquid petroleum products and achieving more accurate volume ratio prediction results through feature extraction with DWT and neural network training.
This paper presents a methodology to monitor the liquid petroleum products which pass through transmission pipes. A simulation setup consisting of an X-ray tube, a detector, and a pipe was established using a Monte Carlo n-particle X-version transport code to investigate a two-by-two mixture of four different petroleum products, namely, ethylene glycol, crude oil, gasoline, and gasoil, in deferent volumetric ratios. After collecting the signals of each simulation, discrete wavelet transform (DWT) was applied as the feature extraction system. Then, the statistical feature, named the standard deviation, was calculated from the approximation of the fifth level, and the details of the second to fifth level provide appropriate inputs for neural network training. Three multilayer perceptron neural networks were utilized to predict the volume ratio of three types of petroleum products, and the volume ratio of the fourth product could easily be obtained from the results of the three presented networks. Finally, a root mean square error of less than 1.77 was obtained in predicting the volume ratio, which was much more accurate than in previous research. This high accuracy was due to the use of DWT for feature extraction.

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