Fault Identification and Classification of Asynchronous Motor Drive Using Optimization Approach with Improved Reliability

Adhavan, B (2023) Fault Identification and Classification of Asynchronous Motor Drive Using Optimization Approach with Improved Reliability. Energies, 16 (6). p. 2660. ISSN 1996-1073

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Abstract

This article aims to provide a technique for identifying and categorizing interturn insulation problems in variable-speed motor drives by combining Salp Swarm Optimization (SSO) with Recurrent Neural Network (RNN). The goal of the proposed technique is to detect and classify Asynchronous Motor faults at their early stages, under both normal and abnormal operating conditions. The proposed technique uses a recurrent neural network in two phases to identify and label interturn insulation concerns, with the first phase being utilised to establish whether or not the motors are healthy. In the second step, it discovers and categorises potentially dangerous interturn errors. The SSO approach is used in the second phase of the recurrent neural network learning procedure, with the goal function of minimizing error in mind. The proposed CSSRN technique simplifies the system for detecting and categorizing the interturn insulation issue, resulting in increased system precision. In addition, the proposed model is implemented in the MATLAB/Simulink, where metrics such as accuracy, precision, recall, and specificity may be analysed. Similarly, existing methods such as Adaptive Neuro-Fuzzy Inference System (ANFIS), Recurrent Neural Network (RNN), and Salp Swarm Algorithm Artificial Neural Network (SSAANN) are utilised to evaluate metrics such as Root mean squared error (RMSE), Mean bias error (MBE), Mean absolute percentage error (MAPE), consumption, and execution time for comparative analysis.

Item Type: Article
Uncontrolled Keywords: Inter-turn short circuit; Interturn short circuit; Motor drive; Recurrent neural network; Salp swarm algorithm artificial neural network; Salp swarm optimization; Salp swarms; Swarm algorithms; Swarm optimization
Subjects: C Computer Science and Engineering > Neural Networks
D Electrical and Electronics Engineering > Non Conventional Energy
D Electrical and Electronics Engineering > Power Electronics and Drives
E Electronics and Communication Engineering > Fuzzy Systems
Divisions: Electrical and Electronics Engineering
Depositing User: Users 5 not found.
Date Deposited: 18 Jul 2024 03:37
Last Modified: 17 Aug 2024 09:53
URI: https://ir.psgitech.ac.in/id/eprint/800

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