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Use of Learning Mechanisms to Improve the Condition Monitoring of Wind Turbine Generators: A Review

Authors: Ana Rita Nunes; Hugo Morais; Alberto Sardinha;

Use of Learning Mechanisms to Improve the Condition Monitoring of Wind Turbine Generators: A Review

Abstract

The main goal of this paper is to review and evaluate how we can take advantage of state-of-the-art machine learning techniques and apply them in wind energy operation conditions monitoring and fault diagnosis, boosting wind turbines’ availability. To accomplish this, we focus our work on analysing the current techniques in predictive maintenance, which are aimed at acting before a major failure occurs using condition monitoring. In particular, we start framing the predictive maintenance problem as an ML problem to detect patterns that indicate a fault on turbine generators. Then, we extend the problem to detect future faults. Therefore, this review will consist of analysing techniques to tackle the challenges of each machine learning stage, such as data pre-processing, feature engineering, and the selection of the best-suited model. By using specific evaluation metrics, the expected final result of using these techniques will be an improvement in the early prediction of a future fault. This improvement will have an increase in the availability of the turbine, and therefore in energy production.

Related Organizations
Keywords

Technology, machine learning, condition monitoring, T, wind farm, fault detection

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