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A Novel Feature Extraction and Fault Detection Technique for the Intelligent Fault Identification of Water Pump Bearings

Muhammad Irfan, Abdullah Alwadie, Adam Głowacz, Muhammad Awais, Saifur Rahman, Mohammad Kamal Asif Khan, Mohammed Jalalah, Omar AlShorman, Wahyu Caesarendra

2021Sensors24 citationsDOIOpen Access PDF

Abstract

The reliable and cost-effective condition monitoring of the bearings installed in water pumps is a real challenge in the industry. This paper presents a novel strong feature selection and extraction algorithm (SFSEA) to extract fault-related features from the instantaneous power spectrum (IPS). The three features extracted from the IPS using the SFSEA are fed to an extreme gradient boosting (XBG) classifier to reliably detect and classify the minor bearing faults. The experiments performed on a lab-scale test setup demonstrated classification accuracy up to 100%, which is better than the previously reported fault classification accuracies and indicates the effectiveness of the proposed method.

Topics & Concepts

Feature extractionClassifier (UML)Pattern recognition (psychology)Artificial intelligenceFeature selectionFault (geology)Computer scienceFault detection and isolationEngineeringBearing (navigation)Boosting (machine learning)Condition monitoringData miningActuatorSeismologyGeologyElectrical engineeringMachine Fault Diagnosis TechniquesHydraulic and Pneumatic SystemsFault Detection and Control Systems
A Novel Feature Extraction and Fault Detection Technique for the Intelligent Fault Identification of Water Pump Bearings | Litcius