DocumentCode
1321634
Title
A novel competitive learning neural network based acoustic transmission system for oil-well monitoring
Author
Simões, Marcelo Godoy ; Furukawa, Celso Massatoshi ; Mafra, Alexander T. ; Adamowski, Julio Cezar
Author_Institution
Sao Paulo Univ., Brazil
Volume
36
Issue
2
fYear
2000
Firstpage
484
Lastpage
491
Abstract
The optimal operation of an oil well requires the periodic measurement of temperature and pressure at the downhole. In this paper, acoustic waves are used to transmit data to the surface through the pipeline column of the well, making up a wireless transmission system. Binary data is transmitted in two frequencies, using frequency-shift keying modulation. Such transmission faces problems with noise, attenuation, and, at pipeline joints, multiple reflections and nonlinear distortion. Hence, conventional demodulation techniques do not work well in this case. The neural network presented here classifies signals received by the receiver to estimate transmitted data, using a linear-vector-quantization-based network, with the help of a preprocessing procedure that transforms time-domain incoming signals in three-dimensional images. The results have been successfully verified. The neural network estimation principles presented in this paper can be easily applied to other patterns and time-domain recognition applications
Keywords
computerised monitoring; frequency shift keying; neural nets; oil technology; pressure measurement; temperature measurement; unsupervised learning; acoustic transmission system; competitive learning neural network; downhole pressure measurement; downhole temperature measurement; frequency-shift keying modulation; linear-vector-quantization-based network; neural network estimation principles; oil-well monitoring; preprocessing procedure; signal classification; time-domain incoming signals; time-domain recognition applications; Acoustic measurements; Acoustic waves; Frequency; Neural networks; Petroleum; Pipelines; Pressure measurement; Surface acoustic waves; Temperature measurement; Time domain analysis;
fLanguage
English
Journal_Title
Industry Applications, IEEE Transactions on
Publisher
ieee
ISSN
0093-9994
Type
jour
DOI
10.1109/28.833765
Filename
833765
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