Automatic detection method of abnormal vibration of engineering electric drive construction machinery
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Published:2023
Issue:10
Volume:31
Page:6327-6346
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ISSN:2688-1594
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Container-title:Electronic Research Archive
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language:
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Short-container-title:era
Author:
Yuan Jian1, Liu Hao2, Zhang Yang32
Affiliation:
1. China Road & Bridge Corporation, Beijing 100011, China 2. School of Transportation, Southeast University, Nanjing 211189, China 3. Key Laboratory for Special Area Highway Engineering of Ministry of Education, Xi'an 710018, China
Abstract
<abstract>
<p>Aiming at the problem that the extraction effect of abnormal vibration characteristics of current engineering electric drive construction machinery is poor, an automatic detection method of abnormal vibration of engineering electric drive construction machinery is proposed. Firstly, the abnormal data of mechanical abnormal vibration are collected and identified, and based on the identification results, the dynamic characteristic model of engineering electric drive construction machinery is constructed. The empirical mode decomposition and Hilbert spectrum are used to decompose the abnormal vibration of machinery, calculate the response amplitude and time lag value generated by the operation of the engineering electric drive construction machinery to simplify the diagnosis steps of the abnormal vibration of the engineering electric drive construction machinery and realize the positioning and detection of the transverse and torsional vibration characteristics. Finally, through experiments, it was confirmed that the automatic detection method of the abnormal vibration of the engineering electric drive construction machinery has high accuracy, which can better ensure the healthy operation of mechanical equipment. This endeavor aims to establish scientific methodologies and standards for fault detection techniques in construction machinery, ultimately forging a versatile solution better suited for detecting and resolving issues across various categories of construction equipment.</p>
</abstract>
Publisher
American Institute of Mathematical Sciences (AIMS)
Subject
General Mathematics
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