Abstract

A wind turbine works under variable load and environmental conditions because of which failure rate has been on the rise. Failure of a gearbox, an integral part of producing wind energy, contributes to 80 % of the total downtime for the wind turbine. For ensuring better utilization of the wind turbines, Fault prognosis and condition monitoring of bearings are of utmost importance as it helps to reduce the downtime by early detection of faults which further increases the power output. In this paper, vibration signals produced and machine learning approach to determine the Remaining Useful Life (RUL) for a degraded bearing is studied. The methodology includes statistical feature extraction analysis with regression models. Further the feature selection is done using Principal Component Analysis (PCA) technique which produces training and testing sets which acts as an input parameter for regression models such as Support Vector Regressor (SVR) and Random Forest (RF). Weibull Hazard Rate Function is used for calculating the RUL of the bearing. Results This study shows the potential application of regression model as an effective tool for degradation performance prediction of bearing.

Highlights

  • With the growing impact of climate change Renewable energy remains the only viable option to save the motherland

  • Power output can be increased by early detection of faults by fault prognosis and condition monitoring

  • The predicted time is known as the Remaining Useful Life (RUL), with accurate RUL reduction in the inspection as well as maintenance cost is observed, which further contributes in expanding the general proficiency of the plant

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Summary

Introduction

With the growing impact of climate change Renewable energy remains the only viable option to save the motherland. This paper exhibits a hybrid method for prognosis of bearing which makes used of regression primarily based adaptive predictive models to gain proficiency with the advancing pattern tendency in a bearing’s health indicator. These models are used to project forward in time and estimate the RUL of a bearing [1]. REMAINING USEFUL LIFE (RUL) PREDICTION OF BEARING BY USING REGRESSION MODEL AND PRINCIPAL COMPONENT ANALYSIS (PCA) TECHNIQUE. Developing interest for artificial intelligence and outstanding advancements in its improvement has encouraged plenty of researchers to use this approach in the prediction of bearing RUL. The appropriate scoring function is taken to figure the score of models using error between actual RULs and values predicted for test bearings

Support vector regression
Random forest
Experimentation
Methodology
Feature ranking and feature set formation
Result
Conclusions
Full Text
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