Abstract
For the analysis of the magnetic flux leakage detection data in pipelines, a single information source data analysis method is used to determine the pipeline characteristics with uncertainty. Amulti-source information fusion data analysis technology is proposed. This paper makes full use of the information collected by the multi-source sensors of the magnetic leakage internal detector, and adopts distributed and centralized multi-source information fusion analysis technology. First, pre-analyze and judge the information data of the auxiliary sensors (speed, pressure, temperature) ofthe internal magnetic flux leakage detector. Then, the data of the main sensor, ID / OD sensor, axial mileage sensor, and circumferential clock sensor of the magnetic flux leakage detector are analyzed separately. Finally, the RBF neural network + least squares support vector machine (LSSVM)fusion analysis technology is adopted to realize the fusion analysis of multi-source information. The results show that this method can effectively improve the quality and reliability of data analysis compared with traditional single information source data analysis.
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CITATION STYLE
Shao, W., Sun, M., Ma, Y., Chen, J., Kang, X., Meng, T., & He, R. (2020). Data Analysis of Magnetic Flux Leakage Detection Based on Multi-Source Information Fusion. In Studies in Applied Electromagnetics and Mechanics (Vol. 45, pp. 195–203). IOS Press BV. https://doi.org/10.3233/SAEM200033
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