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2018 | OriginalPaper | Chapter

Research on Gearbox Fault Isolation Based on VPMCD

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Abstract

As a power transmission device, gearbox is an indispensable component of the urban rail vehicle, and it is significant to determine the fault type of the gearbox and to provide the basis for the maintenance and maintenance plan of gearbox. In this paper, traditional VPMCD method is improved in the selection of the prediction variables and the parameter estimation, and based on the error between the estimated value and the actual value, the fault type of the gearbox can be accurately judged. The applicability of VPMCD is analyzed by an example, and compared with other methods, the superiority of the optimized VPMCD is verified.

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Metadata
Title
Research on Gearbox Fault Isolation Based on VPMCD
Authors
Xiukun Wei
Dong Yan
Copyright Year
2018
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-10-7989-4_28

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