Abstract

A deep learning model trained under a specific operating condition of the gearbox often experiences an overfitting problem, which makes it impossible to diagnose faults under different operating conditions. To solve this problem, this paper proposes an ensemble of deep domain adaptation approaches with a health data map. As a fundamental approach to alleviate the domain shift problem due to inhomogeneous operating conditions, the vibration signal is transformed into an image-like simplified health data map that visualizes a tooth-wise fault of the gearbox. The simplified health data map enables the use of a conventional convolutional neural network (CNN) model. To solve the remaining domain shift problem even with the simplified health data map, this study employs a maximum classifier discrepancy (MCD), which is a typical domain adaptation method. To further enhance its performance, a discrepancy-scale factor-based MCD and its ensemble approach are proposed. The proposed method is demonstrated with a 2 kW planetary gearbox testbed operated under stationary and non-stationary speed conditions. The results present that the proposed method outperforms conventional CNN and MCD even under the inhomogeneous operating condition of the gearbox.

Highlights

  • A planetary gearbox is a key component in mechanical or electrical facilities, such as power plants and various motordriven engineering systems

  • In this paper, a weighted ensemble of the maximum classifier discrepancy (MCD) with the discrepancy scale factor used with a simplified health data map is presented

  • The conventional deep learning model is inapplicable to the actual field where operating conditions are typically inhomogeneous

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Summary

INTRODUCTION

A planetary gearbox is a key component in mechanical or electrical facilities, such as power plants and various motordriven engineering systems. Youn: HD Map-Based Ensemble of Deep Domain Adaptation a time–frequency analysis with a wavelet transform can be employed [12]–[15] This approach enables the extraction of images that contain the time-varying property of the vibration signal from which fault features can be trained with the CNN. PROPOSED METHOD In this paper, an ensemble of deep domain adaptation methods with a health data map is proposed for the fault diagnosis of a planetary gearbox For this purpose, three main processes are presented.

ENSEMBLE OF THE REVISED MCD WITH THE DISCREPANCY SCALE FACTOR
CASE STUDY WITH THE GEARBOX TESTBED
Findings
CONCLUSION
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