Study on the SVM Processing Model of the GPS Monitoring Data of Coal Mine Subsidence

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Abstract:

In order to make the GPS monitoring data of coal mine subsidence useful and effective in engineering practice, this paper tries to analyze the exceptional handling processing model of the GPS monitoring data of coal mine subsidence under the guidance of the principle of support vector machine (SVM) regression, its calculating method and the application of regression program produced by MATLAB. By comparing the result of the exceptional handling processing model established on practical measured data with the one of the polynomial function fitting, this thesis proves that the application of vector regression algorithm in studies on the exceptional handling processing model of the GPS monitoring data is highly effective.

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436-441

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July 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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