Rolling Element Bearing Fault Diagnostics using the Blind Deconvolution Technique
نویسنده
چکیده
................................................................................................. i ... TABLE OF CONTENTS ................................................................................. 111 LIST OF TABLES ........................................................................................ vi . . LIST OF FIGURES ...................................................................................... vii . . ACKNOWLEDGMENTS ............................................................................... xi1 ... STATEMENT OF ORIGINAL AUTHORSHIP ................................................. xiii
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