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review paper

An investigation on gearbox fault detection using vibration analysis techniques: A review

Pages 169-183 | Received 13 Nov 2011, Accepted 05 Sep 2012, Published online: 16 Nov 2015
 

Abstract

Gears are critical element in a variety of industrial applications such as machine tool and gearboxes. An unexpected failure of the gear may cause significant economic losses. For that reason, fault diagnosis in gears has been the subject of intensive research. Vibration analysis has been used as a predictive maintenance procedure and as a support for machinery maintenance decisions. As a general rule, machines do not breakdown or fail without some form of warning, which is indicated by an increased vibration level. By measuring and analysing the machine’s vibration, it is possible to determine both the nature and severity of the defect, and hence predict the machine’s failure. The vibration signal of a gearbox carries the signature of the fault in the gears, and early fault detection of the gearbox is possible by analysing the vibration signal using different signal processing techniques. This paper presents a review of a variety of diagnosis techniques that have had demonstrated success when applied to rotating machinery, and highlights fault detection and identification techniques based mainly on vibration analysis approaches. The paper concludes with a brief description of a new approach to diagnosis using neural networks, fuzzy sets, expert system and fault diagnosis based on hybrid artificial intelligence techniques.

Additional information

Notes on contributors

A Aherwar

Amit Aherwar received his BE degree in Mechanical Engineering and M-Tech degree in Production Engineering from the Rajiv Gandhi Technical University, Bhopal, Madhya Pradesh, India, in 2006 and 2010, respectively. He is currently an Assistant Professor in the Department of Mechanical Engineering, Anand Engineering College (SGI) Agra (UP), India. His current research interests are condition monitoring, machine fault signature analysis, and application of AI and fuzzy techniques in mechanical systems.

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