SPAILGSYDec 9, 2024

RUL forecasting for wind turbine predictive maintenance based on deep learning

arXiv:2412.17823v120 citationsh-index: 4Heliyon
Originality Highly original
AI Analysis

This addresses the challenge of providing reliable advance maintenance windows for remote wind farms, enabling practical predictive maintenance.

The study tackled the problem of predicting remaining useful life (RUL) for wind turbine predictive maintenance by introducing a deep learning methodology, achieving forecasts with deviations as low as 10 minutes and up to 1.8 days over a 2-week window.

Predictive maintenance (PdM) is increasingly pursued to reduce wind farm operation and maintenance costs by accurately predicting the remaining useful life (RUL) and strategically scheduling maintenance. However, the remoteness of wind farms often renders current methodologies ineffective, as they fail to provide a sufficiently reliable advance time window for maintenance planning, limiting PdM's practicality. This study introduces a novel deep learning (DL) methodology for future RUL forecasting. By employing a multi-parametric attention-based DL approach that bypasses feature engineering, thereby minimizing the risk of human error, two models: ForeNet-2d and ForeNet-3d are proposed. These models successfully forecast the RUL for seven multifaceted wind turbine (WT) failures with a 2-week forecast window. The most precise forecast deviated by only 10 minutes from the actual RUL, while the least accurate prediction deviated by 1.8 days, with most predictions being off by only a few hours. This methodology offers a substantial time frame to access remote WTs and perform necessary maintenance, thereby enabling the practical implementation of PdM.

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