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Monitoring and Detection of Wind Turbine Vibration with KNN-Algorithm 被引量:1

Monitoring and Detection of Wind Turbine Vibration with KNN-Algorithm
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摘要 Maintenance for wind turbines has been transformed using supervised machine learning techniques. This method of automatic and autonomous learning can identify, monitor, and detect electrical and mechanical components of wind turbines and predict, detect, and anticipate their degeneration. Using a machine learning classifier and frequency analysis, we simulate two failure states caused by bearing vibrations. Implementing KNN facilitates efficient monitoring, monitoring, and fault-finding for wind turbines. It is possible to reduce downtime, anticipate breakdowns, and import offshore aspects through these technologies. Maintenance for wind turbines has been transformed using supervised machine learning techniques. This method of automatic and autonomous learning can identify, monitor, and detect electrical and mechanical components of wind turbines and predict, detect, and anticipate their degeneration. Using a machine learning classifier and frequency analysis, we simulate two failure states caused by bearing vibrations. Implementing KNN facilitates efficient monitoring, monitoring, and fault-finding for wind turbines. It is possible to reduce downtime, anticipate breakdowns, and import offshore aspects through these technologies.
作者 Javier Vives Javier Vives(Institute of Automatic and Industrial Informatics, Universitat Politècnica de València, Valencia, Spain)
出处 《Journal of Computer and Communications》 2022年第7期1-12,共12页 电脑和通信(英文)
关键词 Wind Turbines Vibrations Fault Diagnosis Machine Learning Condition Monitoring Internet of Things Wind Turbines Vibrations Fault Diagnosis Machine Learning Condition Monitoring Internet of Things
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