DC-Link Electrolytic Capacitors Monitoring Techniques Based on Advanced Learning Intelligence Techniques for Three-Phase Inverters

Author:

Dang HoanglongORCID,Park Hyejin,Kwak SangshinORCID,Choi Seungdeog

Abstract

The reliability of the electronic converter is a vital concern in an industrialized area. Capacitors are critical in electronic converters and are more likely to fail than other electronic gears. Due to aging, the capacitor progressively loses its original quality and capacitance, and the equivalent series resistance escalates. Hence, condition monitoring is a fundamental procedure for evaluating capacitor health that affords prognostic repairs to guarantee stability in power networks. The ESR and capacitance of the capacitor are commonly employed to estimate the condition grade. This study proposes an estimation scheme that utilizes the source current to assess the health condition of an aluminum capacitor. Several advanced intelligence techniques are adopted to estimate the parameters of an AEC in a three-phase inverter system. First, different signals used as inputs, such as input power, capacitor current, voltage, and power, output current, voltage, and power, are analyzed using fast Fourier transform and discrete wavelet transform analysis. Then, various indexes of the analyzed signals, such as RMS, average, median, and variance, are used as the inputs in learning models to monitor the AEC’s parameters. In addition, various input signals are combined to obtain the best combinations for capacitor monitoring. The estimated results prove that utilizing the source current combined with selected indexes improves the monitoring accuracy of the AEC’s health status.

Funder

Korea government

Korea Electric Power Corporation

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Industrial and Manufacturing Engineering,Control and Optimization,Mechanical Engineering,Computer Science (miscellaneous),Control and Systems Engineering

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Construction and Application of Digital Twin in Aluminum Electrolysis;The Minerals, Metals & Materials Series;2024

2. A Transient-Modeling-Based Grey-Box Method for Online Monitoring of DC-Link Capacitors;IEEE Transactions on Power Electronics;2023-11

3. Bilateral Four-Segment-Mode Model Predictive Control for Open-Winding PMSM Drives;IEEE Transactions on Power Electronics;2023-11

4. Variant of determining the technical condition of an electrolytic capacitor by contactless method;Communication, informatization and cybersecurity systems and technologies;2023-06-20

5. Metalized Polymer-Film Capacitors Health Estimation for Three-Phase DC to AC Converters with Artificial Intelligences;2023 8th International Conference on Business and Industrial Research (ICBIR);2023-05-18

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