2022
DOI: 10.47836/pjst.31.1.04
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Blade Fault Localization with the Use of Vibration Signals Through Artificial Neural Network: A Data-Driven Approach

Abstract: Turbines are significant for extracting energy for petrochemical plants, power generation, and aerospace industries. However, it has been reported that turbine-blade failures are the most common causes of machinery breakdown. Therefore, numerous analyses have been performed to formulate techniques for detecting and classifying the fault of the turbine blade. Nevertheless, the blade fault localization method, performed to locate the faulty parts, is equally important for plant operation and maintenance. Therefo… Show more

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