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Data-mining based fault detection

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Journal of Electronics (China)

Abstract

This paper presents a fault-detection method based on the phase space reconstruction and data mining approaches for the complex electronic system. The approach for the phase space reconstruction of chaotic time series is a combination algorithm of multiple autocorrelation and Γ-test, by which the quasi-optimal embedding dimension and time delay can be obtained. The data mining algorithm, which calculates the radius of gyration of unit-mass point around the centre of mass in the phase space, can distinguish the fault parameter from the chaotic time series output by the tested system. The experimental results depict that this fault detection method can correctly detect the fault phenomena of electronic system.

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Communication author: Ma Hongguang, born in 1959, male, professor. Xi’an Xingqing Road, Middle Section No.31, Xi’an 710048, China.

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Ma, H., Han, C., Wang, G. et al. Data-mining based fault detection. J. of Electron.(China) 22, 605–611 (2005). https://doi.org/10.1007/BF02687841

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  • DOI: https://doi.org/10.1007/BF02687841

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