Efficiency-Centered Fault Diagnosis of In-Service Induction Motors for Digital Twin Applications: A Case Study on Broken Rotor Bars

Author:

Adamou Adamou Amadou1ORCID,Alaoui Chakib1

Affiliation:

1. Departement of Electrical Engineering, Euromed Polytechnique School, Euromed University of Fez, Fez BP 51, Morocco

Abstract

The uninterrupted operation of induction motors is crucial for industries, ensuring reliability and continuous functionality. To achieve this, we propose an innovative approach that utilizes an efficiency model-based digital shadow system for in situ failure detection and diagnosis (FDD) in induction motors (IMs). The shadow model accurately estimates IM losses and efficiency across various operational conditions. Our proposed method utilizes efficiency as the primary indicator for fault detection, while losses serve as condition indicators for fault diagnosis based on real-time motor parameters and loss sources. We introduce a bond graph as a fault diagnosis network, linking loss sources, motor parameters, and faults. This interconnected approach is the key aspect of our proposed diagnostic method and aims to be used in fault diagnosis as a general method. A case study of a broken rotor bar is used to validate the proposed method using a dataset of five motors. Among these, one motor operates without failure, while the remaining four exhibit broken rotor faults categorized as 1, 2, 3, and 4. The proposed method achieves 99.99% precision in identifying one to four defective rotor bars in IMs. Comparative analysis demonstrates good performance compared to vibration-based FDD approaches. Moreover, our methodology is computationally efficient and aligned with Industry 4.0 requirements.

Publisher

MDPI AG

Reference44 articles.

1. (2024, May 06). Final Consumption—Key World Energy Statistics 2021—Analysis. Available online: https://www.iea.org/reports/key-world-energy-statistics-2021/final-consumption.

2. Maintenance for Energy efficiency: A Review;Firdaus;IOP Conf. Ser. Mater. Sci. Eng.,2019

3. Linking energy and maintenance management for sustainability through three American case studies;Lewis;Facilities,2011

4. Efficiency monitoring as a strategy for cost effective maintenance of induction motors for minimizing carbon emission and energy consumption;Singh;Reliab. Eng. Syst. Saf.,2019

5. Digital Twin for maintenance: A literature review;Errandonea;Comput. Ind.,2020

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