Testing Topological Data Analysis for Condition Monitoring of Wind Turbines
Simone Casolo, Alexander Stasik, Zhenyou Zhang, Signe, Riemer-Sorensen

TL;DR
This paper explores the application of topological data analysis (TDA) to condition monitoring of wind turbines, demonstrating its potential to detect faults through topological features derived from vibration data.
Contribution
It introduces a TDA-based pipeline for analyzing wind turbine vibration data, providing a novel approach for fault detection and classification in condition monitoring.
Findings
Topological indicators effectively identify gear-tooth and ball-bearing failures.
TDA-derived features outperform traditional methods in fault detection accuracy.
Persistent homology captures meaningful structural information related to turbine health.
Abstract
We present an investigation of how topological data analysis (TDA) can be applied to condition-based monitoring (CBM) of wind turbines for energy generation. TDA is a branch of data analysis focusing on extracting meaningful information from complex datasets by analyzing their structure in state space and computing their underlying topological features. By representing data in a high-dimensional state space, TDA enables the identification of patterns, anomalies, and trends in the data that may not be apparent through traditional signal processing methods. For this study, wind turbine data was acquired from a wind park in Norway via standard vibration sensors at different locations of the turbine's gearbox. Both the vibration acceleration data and its frequency spectra were recorded at infrequent intervals for a few seconds at high frequency and failure events were labelled as either…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Optical measurement and interference techniques
