614 research outputs found

    Application of Machine Learning Methods for Asset Management on Power Distribution Networks

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    This study aims to study the different kinds of Machine Learning (ML) models and their working principles for asset management in power networks. Also, it investigates the challenges behind asset management and its maintenance activities. In this review article, Machine Learning (ML) models are analyzed to improve the lifespan of the electrical components based on the maintenance management and assessment planning policies. The articles are categorized according to their purpose: 1) classification, 2) machine learning, and 3) artificial intelligence mechanisms. Moreover, the importance of using ML models for proper decision making based on the asset management plan is illustrated in a detailed manner. In addition to this, a comparative analysis between the ML models is performed, identifying the advantages and disadvantages of these techniques. Then, the challenges and managing operations of the asset management strategies are discussed based on the technical and economic factors. The proper functioning, maintenance and controlling operations of the electric components are key challenging and demanding tasks in the power distribution systems. Typically, asset management plays an essential role in determining the quality and profitability of the elements in the power network. Based on this investigation, the most suitable and optimal machine learning technique can be identified and used for future work.ย Doi: 10.28991/ESJ-2022-06-04-017 Full Text: PD

    Robust-MBFD: A Robust Deep Learning System for Motor Bearing Faults Detection Using Multiple Deep Learning Training Strategies and A Novel Double Loss Function

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    This paper presents a comprehensive analysis of motor bearing fault detection (MBFD), which involves the task of identifying faults in a motor bearing based on its vibration. To this end, we first propose and evaluate various machine learning based systems for the MBFD task. Furthermore, we propose three deep learning based systems for the MBFD task, each of which explores one of the following training strategies: supervised learning, semi-supervised learning, and unsupervised learning. The proposed machine learning based systems and deep learning based systems are evaluated, compared, and then they are used to identify the best model for the MBFD task. We conducted extensive experiments on various benchmark datasets of motor bearing faults, including those from the American Society for Mechanical Failure Prevention Technology (MFPT), Case Western Reserve University Bearing Center (CWRU), and the Condition Monitoring of Bearing Damage in Electromechanical Drive Systems from Paderborn University (PU). The experimental results on different datasets highlight two main contributions of this study. First, we prove that deep learning based systems are more effective than machine learning based systems for the MBFD task. Second, we achieve a robust and general deep learning based system with a novel loss function for the MBFD task on several benchmark datasets, demonstrating its potential for real-life MBFD applications

    Representation Learning based and Interpretable Reactor System Diagnosis Using Denoising Padded Autoencoder

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    With the mass construction of Gen III nuclear reactors, it is a popular trend to use deep learning (DL) techniques for fast and effective diagnosis of possible accidents. To overcome the common problems of previous work in diagnosing reactor accidents using deep learning theory, this paper proposes a diagnostic process that ensures robustness to noisy and crippled data and is interpretable. First, a novel Denoising Padded Autoencoder (DPAE) is proposed for representation extraction of monitoring data, with representation extractor still effective on disturbed data with signal-to-noise ratios up to 25.0 and monitoring data missing up to 40.0%. Secondly, a diagnostic framework using DPAE encoder for extraction of representations followed by shallow statistical learning algorithms is proposed, and such stepwise diagnostic approach is tested on disturbed datasets with 41.8% and 80.8% higher classification and regression task evaluation metrics, in comparison with the end-to-end diagnostic approaches. Finally, a hierarchical interpretation algorithm using SHAP and feature ablation is presented to analyze the importance of the input monitoring parameters and validate the effectiveness of the high importance parameters. The outcomes of this study provide a referential method for building robust and interpretable intelligent reactor anomaly diagnosis systems in scenarios with high safety requirements

    A Smart Algorithm for the Diagnosis of Short-Circuit Faults in a Photovoltaic Generator

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    International audienceThis paper deals with a smart algorithm allowing short-circuit faults detection and diagnosis of PV generators. The proposed algorithm is based on the hybridization of a support vector machines (SVM) technique optimized by a k-NN tool for the classification of observations on the classifier itself or located in its margin. To test the proposed algorithm performance, a PV generator database containing observations distributed over classes is used for simulation purposes

    PMU measurements based short-term voltage stability assessment of power systems via deep transfer learning

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    Deep learning has emerged as an effective solution for addressing the challenges of short-term voltage stability assessment (STVSA) in power systems. However, existing deep learning-based STVSA approaches face limitations in adapting to topological changes, sample labeling, and handling small datasets. To overcome these challenges, this paper proposes a novel phasor measurement unit (PMU) measurements-based STVSA method by using deep transfer learning. The method leverages the real-time dynamic information captured by PMUs to create an initial dataset. It employs temporal ensembling for sample labeling and utilizes least squares generative adversarial networks (LSGAN) for data augmentation, enabling effective deep learning on small-scale datasets. Additionally, the method enhances adaptability to topological changes by exploring connections between different faults. Experimental results on the IEEE 39-bus test system demonstrate that the proposed method improves model evaluation accuracy by approximately 20% through transfer learning, exhibiting strong adaptability to topological changes. Leveraging the self-attention mechanism of the Transformer model, this approach offers significant advantages over shallow learning methods and other deep learning-based approaches.Comment: Accepted by IEEE Transactions on Instrumentation & Measuremen

    A Literature Review of Fault Diagnosis Based on Ensemble Learning

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    The accuracy of fault diagnosis is an important indicator to ensure the reliability of key equipment systems. Ensemble learning integrates different weak learning methods to obtain stronger learning and has achieved remarkable results in the field of fault diagnosis. This paper reviews the recent research on ensemble learning from both technical and field application perspectives. The paper summarizes 87 journals in recent web of science and other academic resources, with a total of 209 papers. It summarizes 78 different ensemble learning based fault diagnosis methods, involving 18 public datasets and more than 20 different equipment systems. In detail, the paper summarizes the accuracy rates, fault classification types, fault datasets, used data signals, learners (traditional machine learning or deep learning-based learners), ensemble learning methods (bagging, boosting, stacking and other ensemble models) of these fault diagnosis models. The paper uses accuracy of fault diagnosis as the main evaluation metrics supplemented by generalization and imbalanced data processing ability to evaluate the performance of those ensemble learning methods. The discussion and evaluation of these methods lead to valuable research references in identifying and developing appropriate intelligent fault diagnosis models for various equipment. This paper also discusses and explores the technical challenges, lessons learned from the review and future development directions in the field of ensemble learning based fault diagnosis and intelligent maintenance

    A Review of Fault Diagnosing Methods in Power Transmission Systems

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    Transient stability is important in power systems. Disturbances like faults need to be segregated to restore transient stability. A comprehensive review of fault diagnosing methods in the power transmission system is presented in this paper. Typically, voltage and current samples are deployed for analysis. Three tasks/topics; fault detection, classification, and location are presented separately to convey a more logical and comprehensive understanding of the concepts. Feature extractions, transformations with dimensionality reduction methods are discussed. Fault classification and location techniques largely use artificial intelligence (AI) and signal processing methods. After the discussion of overall methods and concepts, advancements and future aspects are discussed. Generalized strengths and weaknesses of different AI and machine learning-based algorithms are assessed. A comparison of different fault detection, classification, and location methods is also presented considering features, inputs, complexity, system used and results. This paper may serve as a guideline for the researchers to understand different methods and techniques in this field

    ๋น„ํ‘œ์ง€ ๊ณ ์žฅ ๋ฐ์ดํ„ฐ์™€ ์œ ์ค‘๊ฐ€์Šค๋ถ„์„๋ฐ์ดํ„ฐ๋ฅผ ์ด์šฉํ•œ ๋”ฅ๋Ÿฌ๋‹๊ธฐ๋ฐ˜ ์ฃผ๋ณ€์••๊ธฐ ๊ณ ์žฅ์ง„๋‹จ ์—ฐ๊ตฌ

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    ํ•™์œ„๋…ผ๋ฌธ(๋ฐ•์‚ฌ) -- ์„œ์šธ๋Œ€ํ•™๊ต๋Œ€ํ•™์› : ๊ณต๊ณผ๋Œ€ํ•™ ๊ธฐ๊ณ„ํ•ญ๊ณต๊ณตํ•™๋ถ€, 2021.8. ์†Œ์žฌ์›….์˜ค๋Š˜๋‚  ์‚ฐ์—…์˜ ๊ธ‰์†ํ•œ ๋ฐœ์ „๊ณผ ๊ณ ๋„ํ™”๋กœ ์ธํ•ด ์•ˆ์ „ํ•˜๊ณ  ์‹ ๋ขฐํ•  ์ˆ˜ ์žˆ๋Š” ์ „๋ ฅ ๊ณ„ํ†ต์— ๋Œ€ํ•œ ์ˆ˜์š”๋Š” ๋”์šฑ ์ค‘์š”ํ•ด์ง€๊ณ  ์žˆ๋‹ค. ๋”ฐ๋ผ์„œ ์‹ค์ œ ์‚ฐ์—… ํ˜„์žฅ์—์„œ๋Š” ์ฃผ๋ณ€์••๊ธฐ์˜ ์•ˆ์ „ํ•œ ์ž‘๋™์„ ์œ„ํ•ด ์ƒํƒœ๋ฅผ ์ •ํ™•ํ•˜๊ฒŒ ์ง„๋‹จํ•  ์ˆ˜ ์žˆ๋Š” prognostics and health management (PHM)์™€ ๊ฐ™์€ ๊ธฐ์ˆ ์ด ํ•„์š”ํ•˜๋‹ค. ์ฃผ๋ณ€์••๊ธฐ ์ง„๋‹จ์„ ์œ„ํ•ด ๊ฐœ๋ฐœ๋œ ๋‹ค์–‘ํ•œ ๋ฐฉ๋ฒ• ์ค‘ ์ธ๊ณต์ง€๋Šฅ(AI) ๊ธฐ๋ฐ˜ ์ ‘๊ทผ๋ฒ•์€ ์‚ฐ์—…๊ณผ ํ•™๊ณ„์—์„œ ๋งŽ์€ ๊ด€์‹ฌ์„ ๋ฐ›๊ณ  ์žˆ๋‹ค. ๋”์šฑ์ด ๋ฐฉ๋Œ€ํ•œ ๋ฐ์ดํ„ฐ์™€ ํ•จ๊ป˜ ๋†’์€ ์„ฑ๋Šฅ์„ ๋‹ฌ์„ฑํ•˜๋Š” ๋”ฅ ๋Ÿฌ๋‹ ๊ธฐ์ˆ ์€ ์ฃผ๋ณ€์••๊ธฐ ๊ณ ์žฅ ์ง„๋‹จ์˜ ํ•™์ž๋“ค์—๊ฒŒ ๋†’์€ ๊ด€์‹ฌ์„ ๊ฐ–๊ฒŒ ํ•ด์คฌ๋‹ค. ๊ทธ ์ด์œ ๋Š” ๋”ฅ ๋Ÿฌ๋‹ ๊ธฐ์ˆ ์ด ์‹œ์Šคํ…œ์˜ ๋„๋ฉ”์ธ ์ง€์‹์„ ๊นŠ์ด ์ดํ•ดํ•  ํ•„์š” ์—†์ด ๋Œ€๋Ÿ‰์˜ ๋ฐ์ดํ„ฐ๋งŒ ์ฃผ์–ด์ง„๋‹ค๋ฉด ๋ณต์žกํ•œ ์‹œ์Šคํ…œ์ด๋ผ๋„ ์‚ฌ์šฉ์ž์˜ ๋ชฉ์ ์— ๋งž๊ฒŒ ๊ทธ ํ•ด๋‹ต์„ ์ฐพ์„ ์ˆ˜ ์žˆ๊ธฐ ๋•Œ๋ฌธ์— ๋”ฅ ๋Ÿฌ๋‹์— ๋Œ€ํ•œ ๊ด€์‹ฌ์€ ์ฃผ๋ณ€์••๊ธฐ ๊ณ ์žฅ ์ง„๋‹จ ๋ถ„์•ผ์—์„œ ํŠนํžˆ ๋‘๋“œ๋Ÿฌ์กŒ๋‹ค. ๊ทธ๋Ÿฌ๋‚˜, ์ด๋Ÿฌํ•œ ๋›ฐ์–ด๋‚œ ์ง„๋‹จ ์„ฑ๋Šฅ์€ ์•„์ง ์‹ค์ œ ์ฃผ๋ณ€์••๊ธฐ ์‚ฐ์—…์—์„œ๋Š” ๋งŽ์€ ๊ด€์‹ฌ์„ ์–ป๊ณ  ์žˆ์ง€๋Š” ๋ชปํ•œ ๊ฒƒ์œผ๋กœ ์•Œ๋ ค์กŒ๋‹ค. ๊ทธ ์ด์œ ๋Š” ์‚ฐ์—…ํ˜„์žฅ์˜ ๋น„ํ‘œ์ง€๋ฐ์ดํ„ฐ์™€ ์†Œ๋Ÿ‰์˜ ๊ณ ์žฅ๋ฐ์ดํ„ฐ ๋•Œ๋ฌธ์— ์šฐ์ˆ˜ํ•œ ๋”ฅ๋Ÿฌ๋‹๊ธฐ๋ฐ˜์˜ ๊ณ ์žฅ ์ง„๋‹จ ๋ชจ๋ธ๋“ค์„ ๊ฐœ๋ฐœํ•˜๊ธฐ ์–ด๋ ต๋‹ค. ๋”ฐ๋ผ์„œ ๋ณธ ํ•™์œ„๋…ผ๋ฌธ์—์„œ๋Š” ์ฃผ๋ณ€์••๊ธฐ ์‚ฐ์—…์—์„œ ํ˜„์žฌ ๋Œ€๋‘๋˜๊ณ  ์žˆ๋Š” ์„ธ๊ฐ€์ง€ ์ด์Šˆ๋ฅผ ์—ฐ๊ตฌํ•˜์˜€๋‹ค. 1) ๊ฑด์ „์„ฑ ํ‰๋ฉด ์‹œ๊ฐํ™” ์ด์Šˆ, 2) ๋ฐ์ดํ„ฐ ๋ถ€์กฑ ์ด์Šˆ, 3) ์‹ฌ๊ฐ๋„ ์ด์Šˆ ๋“ค์„ ๊ทน๋ณตํ•˜๊ธฐ ์œ„ํ•œ ๋”ฅ ๋Ÿฌ๋‹ ๊ธฐ๋ฐ˜ ๊ณ ์žฅ ์ง„๋‹จ ์—ฐ๊ตฌ๋ฅผ ์ง„ํ–‰ํ•˜์˜€๋‹ค. ์†Œ๊ฐœ๋œ ์„ธ๊ฐ€์ง€ ์ด์Šˆ๋“ค์„ ๊ฐœ์„ ํ•˜๊ธฐ ์œ„ํ•ด ๋ณธ ํ•™์œ„๋…ผ๋ฌธ์€ ์„ธ ๊ฐ€์ง€ ์—ฐ๊ตฌ๋ฅผ ์ œ์•ˆํ•˜์˜€๋‹ค. ์ฒซ ๋ฒˆ์งธ ์—ฐ๊ตฌ๋Š” ๋ณด์กฐ ๊ฐ์ง€ ์ž‘์—…์ด ์žˆ๋Š” ์ค€์ง€๋„ ์ž๋™ ์ธ์ฝ”๋”๋ฅผ ํ†ตํ•ด ๊ฑด์ „์„ฑ ํ‰๋ฉด์„ ์ œ์•ˆํ•˜์˜€๋‹ค. ์ œ์•ˆ๋œ ๋ฐฉ๋ฒ•์€ ๋ณ€์••๊ธฐ ์—ดํ•˜ ํŠน์„ฑ์„ ์‹œ๊ฐํ™” ํ•  ์ˆ˜ ์žˆ๋‹ค. ๋˜ํ•œ, ์ค€์ง€๋„ ์ ‘๊ทผ๋ฒ•์„ ํ™œ์šฉํ•˜๊ธฐ ๋•Œ๋ฌธ์— ๋ฐฉ๋Œ€ํ•œ ๋น„ํ‘œ์ง€๋ฐ์ดํ„ฐ ๊ทธ๋ฆฌ๊ณ  ์†Œ์ˆ˜์˜ ํ‘œ์ง€๋ฐ์ดํ„ฐ๋งŒ์œผ๋กœ ๊ตฌํ˜„๋  ์ˆ˜ ์žˆ๋‹ค. ์ œ์•ˆ๋ฐฉ๋ฒ•์€ ์ฃผ๋ณ€์••๊ธฐ ๊ฑด์ „์„ฑ์„ ๊ฑด์ „์„ฑ ํ‰๋ฉด๊ณผ ํ•จ๊ป˜ ์‹œ๊ฐํ™”ํ•˜๊ณ , ๋งค์šฐ ์ ์€ ์†Œ์ˆ˜์˜ ๋ ˆ์ด๋ธ” ๋ฐ์ดํ„ฐ๋งŒ์œผ๋กœ ์ฃผ๋ณ€์••๊ธฐ ๊ณ ์žฅ์„ ์ง„๋‹จํ•œ๋‹ค. ๋‘ ๋ฒˆ์งธ ์—ฐ๊ตฌ๋Š” ๊ทœ์น™ ๊ธฐ๋ฐ˜ Duval ๋ฐฉ๋ฒ•์„ AI ๊ธฐ๋ฐ˜ deep neural network (DNN)๊ณผ ์œตํ•ฉ(bridge)ํ•˜๋Š” ์ƒˆ๋กœ์šด ํ”„๋ ˆ์ž„์›Œํฌ๋ฅผ ์ œ์•ˆํ•˜์˜€๋‹ค. ์ด ๋ฐฉ๋ฒ•์€ ๋ฃฐ๊ธฐ๋ฐ˜์˜ Duval์„ ์‚ฌ์šฉํ•˜์—ฌ ๋น„ํ‘œ์ง€๋ฐ์ดํ„ฐ๋ฅผ ์ˆ˜๋„ ๋ ˆ์ด๋ธ”๋งํ•œ๋‹ค (pseudo-labeling). ๋˜ํ•œ, AI ๊ธฐ๋ฐ˜ DNN์€ ์ •๊ทœํ™” ๊ธฐ์ˆ ๊ณผ ๋งค๊ฐœ ๋ณ€์ˆ˜ ์ „์ด ํ•™์Šต์„ ์ ์šฉํ•˜์—ฌ ๋…ธ์ด์ฆˆ๊ฐ€ ์žˆ๋Š” pseudo-label ๋ฐ์ดํ„ฐ๋ฅผ ํ•™์Šตํ•˜๋Š”๋ฐ ์‚ฌ์šฉ๋œ๋‹ค. ๊ฐœ๋ฐœ๋œ ๊ธฐ์ˆ ์€ ๋ฐฉ๋Œ€ํ•œ์–‘์˜ ๋น„ํ‘œ์ง€๋ฐ์ดํ„ฐ๋ฅผ ๋ฃฐ๊ธฐ๋ฐ˜์œผ๋กœ ์ผ์ฐจ์ ์œผ๋กœ ์ง„๋‹จํ•œ ๊ฒฐ๊ณผ์™€ ์†Œ์ˆ˜์˜ ์‹ค์ œ ๊ณ ์žฅ๋ฐ์ดํ„ฐ์™€ ํ•จ๊ป˜ ํ•™์Šต๋ฐ์ดํ„ฐ๋กœ ํ›ˆ๋ จํ•˜์˜€์„ ๋•Œ ๊ธฐ์กด์˜ ์ง„๋‹จ ๋ฐฉ๋ฒ•๋ณด๋‹ค ํš๊ธฐ์ ์ธ ํ–ฅ์ƒ์„ ๊ฐ€๋Šฅ์ผ€ ํ•œ๋‹ค. ๋์œผ๋กœ, ์„ธ ๋ฒˆ์งธ ์—ฐ๊ตฌ๋Š” ๊ณ ์žฅ ํƒ€์ž…์„ ์ง„๋‹จํ•  ๋ฟ๋งŒ ์•„๋‹ˆ๋ผ ์‹ฌ๊ฐ๋„ ๋˜ํ•œ ์ง„๋‹จํ•˜๋Š” ๊ธฐ์ˆ ์„ ์ œ์•ˆํ•˜์˜€๋‹ค. ์ด๋•Œ ๋‘ ์ƒํƒœ์˜ ๋ ˆ์ด๋ธ”๋ง๋œ ๊ณ ์žฅ ํƒ€์ž…๊ณผ ์‹ฌ๊ฐ๋„ ์‚ฌ์ด์—๋Š” ๋ถˆ๊ท ์ผํ•œ ๋ฐ์ดํ„ฐ ๋ถ„ํฌ๋กœ ์ด๋ฃจ์–ด์ ธ ์žˆ๋‹ค. ๊ทธ ์ด์œ ๋Š” ์‹ฌ๊ฐ๋„์˜ ๊ฒฝ์šฐ ๋ ˆ์ด๋ธ”๋ง์ด ํ•ญ์ƒ ๋˜์–ด ์žˆ์ง€๋งŒ ๊ณ ์žฅ ํƒ€์ž…์˜ ๊ฒฝ์šฐ๋Š” ์‹ค์ œ ์ฃผ๋ณ€์••๊ธฐ๋กœ๋ถ€ํ„ฐ ๊ณ ์žฅ ํƒ€์ž… ๋ฐ์ดํ„ฐ๋ฅผ ์–ป๊ธฐ๊ฐ€ ๋งค์šฐ ์–ด๋ ต๊ธฐ ๋•Œ๋ฌธ์ด๋‹ค. ๋”ฐ๋ผ์„œ, ๋ณธ ์—ฐ๊ตฌ์—์„œ ์„ธ๋ฒˆ์งธ๋กœ ๊ฐœ๋ฐœํ•œ ๊ธฐ์ˆ ์€ ์˜ค๋Š˜๋‚  ๋ฐ์ดํ„ฐ ์ƒ์„ฑ์— ๋งค์šฐ ์šฐ์ˆ˜ํ•œ ์„ฑ๋Šฅ์„ ๋‹ฌ์„ฑํ•˜๊ณ  ์žˆ๋Š” generative adversarial network (GAN)๋ฅผ ํ†ตํ•ด ๋ถˆ๊ท ํ˜•ํ•œ ๋‘ ์ƒํƒœ๋ฅผ ๊ท ์ผํ™” ์ž‘์—…์„ ์ˆ˜ํ–‰ํ•˜๋Š” ๋™์‹œ์— ๊ณ ์žฅ ๋ชจ๋“œ์™€ ์‹ฌ๊ฐ๋„๋ฅผ ์ง„๋‹จํ•˜๋Š” ๋ชจ๋ธ์„ ๊ฐœ๋ฐœํ•˜์˜€๋‹ค.Due to the rapid development and advancement of todayโ€™s industry, the demand for safe and reliable power distribution and transmission lines is becoming more critical; thus, prognostics and health management (hereafter, PHM) is becoming more important in the power transformer industry. Among various methods developed for power transformer diagnosis, the artificial intelligence (AI) based approach has received considerable interest from academics. Specifically, deep learning technology, which offers excellent performance when used with vast amounts of data, is also rapidly gaining the spotlight in the academic field of transformer fault diagnosis. The interest in deep learning has been especially noticed in the field of fault diagnosis, because deep learning algorithms can be applied to complex systems that have large amounts of data, without the need for a deep understanding of the domain knowledge of the system. However, the outstanding performance of these diagnosis methods has not yet gained much attention in the power transformer PHM industry. The reason is that a large amount of unlabeled and a small amount of fault data always restrict their deep-learning-based diagnosis methods in the power transformer PHM industry. Therefore, in this dissertation research, deep-learning-based fault diagnosis methods are developed to overcome three issues that currently prevent this type of diagnosis in industrial power transformers: 1) the visualization of health feature space issue, 2) the insufficient data issue, and 3) the severity issue. To cope with these challenges, this thesis is composed of three research thrusts. The first research thrust develops a health feature space via a semi-supervised autoencoder with an auxiliary detection task. The proposed method can visualize a monotonic health trendability of the transformerโ€™s degradation properties. Further, thanks to the use of a semi-supervised approach, the method is applicable to situations with a large amount of unlabeled and a small amount labeled data (a situation common in industrial datasets). Next, the second research thrust proposes a new framework, that bridges the rule-based Duval method with an AI-based deep neural network (BDD). In this method, the rule-based Duval method is utilized to pseudo-label a large amount of unlabeled data. Furthermore, the AI-based DNN is used to apply regularization techniques and parameter transfer learning to learn the noisy pseudo-labelled data. Finally, the third thrust not only identifies fault types but also indicates a severity level. However, the balance between labeled fault types and the severity level is imbalanced in real-world data. Therefore, in the proposed method, diagnosis of fault types โ€“ with severity levels โ€“ under imbalanced conditions is addressed by utilizing a generative adversarial network with an auxiliary classifier. The validity of the proposed methods is demonstrated by studying massive unlabeled dissolved gas analysis (DGA) data, provided by the Korea Electric Power Company (KEPCO), and sparse labeled data, provided by the IEC TC 10 database. Each developed method could be used in industrial fields that use power transformers to monitor the health feature space, consider severity level, and diagnose transformer faults under extremely insufficient labeled fault data.Chapter 1 Introduction 1 1.1 Motivation 1 1.2 Research Scope and Overview 4 1.3 Dissertation Layout 7 Chapter 2 Literature Review 9 2.1 A Brief Overview of Rule-Based Fault Diagnosis 9 2.2 A Brief Overview of Conventional AI-Based Fault Diagnosis 11 Chapter 3 Extracting Health Feature Space via Semi-Supervised Autoencoder with an Auxiliary Task (SAAT) 13 3.1 Backgrounds of Semi-supervised autoencoder (SSAE) 15 3.1.1 Autoencoder: Unsupervised Feature Extraction 15 3.1.2 Softmax Classifier: Supervised Classification 17 3.1.3 Semi-supervised Autoencoder 18 3.2 Input DGA Data Preprocessing 20 3.3 SAAT-Based Fault Diagnosis Method 21 3.3.1 Roles of the Auxiliary Detection Task 23 3.3.2 Architecture of the Proposed SAAT 27 3.3.3 Health Feature Space Visualization 29 3.3.4 Overall Procedure of the Proposed SAAT-based Fault Diagnosis 30 3.4 Performance Evaluation of SAAT 31 3.4.1 Data Description and Implementation 31 3.4.2 An Outline of Four Comparative Studies and Quantitative Evaluation Metrics 33 3.4.3 Experimental Results and Discussion 36 3.5 Summary and Discussion 49 Chapter 4 Learning from Even a Weak Teacher: Bridging Rule-based Duval Weak Supervision and a Deep Neural Network (BDD) for Diagnosing Transformer 51 4.1 Backgrounds of BDD 53 4.1.1 Rule-based method: Duval Method 53 4.1.2 Deep learning Based Method: Deep Neural Network 54 4.1.3 Parameter Transfer 55 4.2 BDD Based Fault Diagnosis 56 4.2.1 Problem Statement 56 4.2.2 Framework of the Proposed BDD 57 4.2.3 Overall Procedure of BDD-based Fault Diagnosis 63 4.3 Performance Evaluation of the BDD 64 4.3.1 Description of Data and the DNN Architecture 64 4.3.2 Experimental Results and Discussion 66 4.4 Summary and Discussion 76 Chapter 5 Generative Adversarial Network with Embedding Severity DGA Level 79 5.1 Backgrounds of Generative Adversarial Network 81 5.2 GANES based Fault Diagnosis 82 5.2.1 Training Strategy of GANES 82 5.2.2 Overall procedure of GANES 87 5.3 Performance Evaluation of GANES 91 5.3.1 Description of Data 91 5.3.2 Outlines of Experiments 91 5.3.3 Preliminary Experimental Results of Various GANs 95 5.3.4 Experiments for the Effectiveness of Embedding Severity DGA Level 99 5.4 Summary and Discussion 105 Chapter 6 Conclusion 106 6.1 Contributions and Significance 106 6.2 Suggestions for Future Research 108 References 110 ๊ตญ๋ฌธ ์ดˆ๋ก 127๋ฐ•
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