LGDATA-ANJan 25, 2021

Damage detection in operational wind turbine blades using a new approach based on machine learning

arXiv:2101.11711v166 citations
Originality Incremental advance
AI Analysis

This addresses the problem of reliable structural health monitoring for wind turbine operators, offering an incremental improvement by leveraging blade similarity and environmental variables.

The paper tackled damage detection in operational wind turbine blades by proposing a novel structural health monitoring methodology using Gaussian Processes to predict blade frequencies, successfully identifying early damage onset up to six months before remediation in real data.

The application of reliable structural health monitoring (SHM) technologies to operational wind turbine blades is a challenging task, due to the uncertain nature of the environments they operate in. In this paper, a novel SHM methodology, which uses Gaussian Processes (GPs) is proposed. The methodology takes advantage of the fact that the blades on a turbine are nominally identical in structural properties and encounter the same environmental and operational variables (EOVs). The properties of interest are the first edgewise frequencies of the blades. The GPs are used to predict the edge frequencies of one blade given that of another, after these relationships between the pairs of blades have been learned when the blades are in a healthy state. In using this approach, the proposed SHM methodology is able to identify when the blades start behaving differently from one another over time. To validate the concept, the proposed SHM system is applied to real onshore wind turbine blade data, where some form of damage was known to have taken place. X-bar control chart analysis of the residual errors between the GP predictions and actual frequencies show that the system successfully identified early onset of damage as early as six months before it was identified and remedied.

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