Design of Experiments for Vibration Monitoring of Rotating Machinery

Volume: 11 | Issue: 01 | Year 2025 | Subscription

Received Date: 02/04/2025
Acceptance Date: 02/15/2025
Published On: 2025-02-22
First Page: 27
Last Page: 41

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By: Ganesha B, Raju Jadar, and Shivakumar S. Y

1,2. Associate Professor, Department of Mechanical Engineering, Ballari Institute of Technology and Management, Bellary, Karnataka, India.
3. Assistant Professor, Department of Mechanical Engineering, Ballari Institute of Technology and Management, Bellary, Karnataka, India.

Abstract

The valuable resources are rotating technology. In industrial applications, several machines are essential to the effective operation of any system. This article describes the engineering process for developing designs for analyzing variation and the optimization of condition monitoring by the impacts of vibration parameters using Taguchi processes to improve the quality of manufactured items. Crucial spinning equipment is included in the experiment to maximize the vibration frequency reactivity. Using Minitab 16 software, a Taguchi orthogonal array with three vibration parameter levels is built. The Taguchi approach minimizes quality characteristic changes caused by uncontrolled parameters by emphasizing the significance of examining response variation using the signal-to-noise (S/N) ratio. “The larger-the-better” was the principle that guided when it came to vibration frequency as a qualitative attribute. In order to investigate the performance characteristics, the impact of process factors on the condition monitoring process is examined using an examination of variance (ANOVA). Because it minimizes the number of tests and identifies the important parameter, it is also anticipated that the Taguchi technique will be an effective means to optimize different vibration parameters.

Keywords: Taguchi method, orthogonal array, vibration parameters, rotating machinery, ANOVA, Signal to noise ratio

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Citation:

How to cite this article: Ganesha B, Raju Jadar, and Shivakumar S. Y, Design of Experiments for Vibration Monitoring of Rotating Machinery. . 2025; 11(01): 27-41p.

How to cite this URL: Ganesha B, Raju Jadar, and Shivakumar S. Y, Design of Experiments for Vibration Monitoring of Rotating Machinery. . 2025; 11(01): 27-41p. Available from:https://journalspub.com/publication/ijmd/article=21028

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