Energy and AI (Sep 2024)

Transfer learning applications for autoencoder-based anomaly detection in wind turbines

  • Cyriana M.A. Roelofs,
  • Christian Gück,
  • Stefan Faulstich

Journal volume & issue
Vol. 17
p. 100373

Abstract

Read online

Anomaly detection in wind turbines typically involves using normal behaviour models to detect faults early. Normal behaviour models are often implemented through the use of neural networks, of which autoencoders are particularly popular in this field. However, training autoencoder models for each turbine is time-consuming and resource intensive. Thus, transfer learning becomes essential for wind turbines with limited data or applications with limited computational resources. This study examines how cross-turbine transfer learning can be applied to autoencoder-based anomaly detection. Here, autoencoders are combined with constant thresholds for the reconstruction error to determine if input data contains an anomaly. The models are initially trained on one year’s worth of data from one or more source wind turbines. They are then fine-tuned using small amounts of data from the target wind turbine. Three methods for fine-tuning are investigated: adjusting the entire autoencoder, only the decoder, or only the threshold of the model. The performance of the transfer learning models is compared to baseline models that were trained on one year’s worth of data from the target wind turbine. The results of the tests conducted in this study indicate that models trained on data of multiple wind turbines do not improve the anomaly detection capability compared to models trained on data of one source wind turbine. In addition, modifying the model’s threshold can lead to comparable or even superior performance compared to the baseline, whereas fine-tuning the decoder or autoencoder further enhances the models’ performance.

Keywords