Engine Fault Diagnostic System Based on Non-Linear Support Vector Machine

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The car engine failures in the course of time and place have many possibilities. The engine fault diagnosis system developed in .NET platform. The core of the system make use of noise wavelet energy features and non-linear support vector machine classification. After the experiment, the system has fairly good results.

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534-537

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November 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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