Abstract

Multiple premature failures of a gearbox in a wind turbine pose a high risk of increasing the operational and maintenance costs and decreasing the profit margins. Prognostics and health management (PHM) techniques are widely used to assess the current health condition of the gearbox and project it in future to predict premature failures. This paper proposes such techniques for predicting gearbox health condition index extracted from the vibration signals. The progression of the monitoring index is predicted using two different prediction techniques, adaptive neuro-fuzzy inference system (ANFIS) and nonlinear autoregressive model with exogenous inputs (NARX). The proposed prediction techniques are evaluated through sun-spot data-set and applied on vibration based health related monitoring index calculated through psychoacoustic phenomenon. A comparison is given for their prediction accuracy. The results are helpful in understanding the relationship of machine conditions, the corresponding indicating features, the level of damage/degradation, and their progression.

Highlights

  • There is a growing interest in renewable energy systems with increased concerns over climate change

  • This study presents fault detection, features extraction, and prognostics for wind turbine gearbox based on vibration analysis

  • Vibration signals emanating from sensitive components inside the gearbox are recorded, health related features are extracted, and time series prediction techniques are applied to the features trends for prognostics

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Summary

INTRODUCTION

There is a growing interest in renewable energy systems with increased concerns over climate change. Wind energy has an attractive share in renewable energy because it diversifies a resource portfolio and improves overall security of the power system. The engineering challenge for the wind industry is to design a reliable wind turbine to harness wind energy and turn it into electricity. Despite all technological advancements in wind turbine design and installation, there is a price to pay in maintaining.

Classification of Vibration Signals
Features Extraction
Prognostics
Transient Based Features Extraction
Wavelet Denoising
Time Series Prediction
The NARX
The adaptive neuro-fuzzy inference system
SIMULATIONS AND DISCUSSIONS
CONCLUSION
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