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A Hybrid Algorithm Based on Social Engineering and Artificial Neural Network for Fault Warning Detection in Hydraulic Turbines

Yun Tan, Changshu Zhan, Youchun Pi, Chunhui Zhang, Jinghui Song, Yan Chen, Amir-Mohammad Golmohammadi

2023Mathematics12 citationsDOIOpen Access PDF

Abstract

Hydraulic turbines constitute an essential component within the hydroelectric power generation industry, contributing to renewable energy production with minimal environmental pollution. Maintaining stable turbine operation presents a considerable challenge, which necessitates effective fault diagnosis and warning systems. Timely and efficient fault w arnings are particularly vital, as they enable personnel to address emerging issues promptly. Although backpropagation (BP) networks are frequently employed in fault warning systems, they exhibit several limitations, such as susceptibility to local optima. To mitigate this issue, this paper introduces an improved social engineering optimizer (ISEO) method aimed at optimizing BP networks for developing a hydraulic turbine warning system. Experimental results reveal that the ISEO-BP-based approach offers a highly effective fault warning system, as evidenced by superior performance metrics when compared to alternative methods.

Topics & Concepts

Artificial neural networkHydroelectricityWarning systemHydraulic turbinesFault (geology)Renewable energyComponent (thermodynamics)BackpropagationTurbineFault detection and isolationComputer scienceHydraulic machineryWind powerEarly warning systemReliability engineeringEngineeringRisk analysis (engineering)Control engineeringArtificial intelligenceBusinessTelecommunicationsGeologyMechanical engineeringActuatorSeismologyPhysicsElectrical engineeringThermodynamicsMachine Fault Diagnosis TechniquesNeural Networks and ApplicationsFault Detection and Control Systems
A Hybrid Algorithm Based on Social Engineering and Artificial Neural Network for Fault Warning Detection in Hydraulic Turbines | Litcius