利用深度 CNN 和改进的 PSO 调优极端梯度提升技术进行风能系统故障分类

IF 2.6 4区 工程技术 Q3 ENERGY & FUELS
Chun-Yao Lee, Edu Daryl C. Maceren
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引用次数: 0

摘要

风能系统的智能故障诊断需要识别独特的特征,以有效区分各种故障类型,即使由于其环境的不可预测性和动态性而出现数据差异。本文提出了一种将深度学习特征与重新采样的监控和数据采集(SCADA)数据集相结合的综合方法,以应对风能系统故障分类所面临的一些挑战。该方法包括使用合成少数过采样技术(SMOTE)和近失误欠采样技术对不平衡的 SCADA 数据集进行重新采样,使用深度卷积神经网络提取深度学习特征,并将其输入使用自适应精英粒子群优化(AEPSO)调整参数的 XGBoost(极端梯度提升)分类器。通过在不同的不平衡数据集上进行验证,证明了所提方法的有效性,并显示出卓越的准确率性能指标。此外,该研究还为故障分类提供了一个严格的框架,从而推动了风力涡轮机故障诊断方法的进步。研究证实,在重采样数据中利用提取的深度学习特征会显著影响分类性能指标。此外,所提出的综合方法对风能系统的故障诊断增强以及推动该领域实现更高效、更可靠的运行具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Wind energy system fault classification using deep CNN and improved PSO-tuned extreme gradient boosting

Wind energy system fault classification using deep CNN and improved PSO-tuned extreme gradient boosting

Intelligent fault diagnosis for wind energy systems requires identifying unique characteristics to differentiate various fault types effectively, even when data discrepancy occurs due to the unpredictable and dynamic nature of its environment. This article addresses some of the challenges of fault classification in wind energy systems by proposing an integrated approach that combines deep learning features with a resampled supervisory control and data acquisition (SCADA) dataset. The methodology involves resampling the imbalanced SCADA dataset using synthetic minority oversampling technique (SMOTE) and near-miss undersampling techniques, extracting deep learning features using deep convolutional neural network, and feeding them into an XGBoost (extreme gradient boosting) classifier with tuned parameters using adaptive elite-particle swarm optimization (AEPSO). The effectiveness of the proposed method is demonstrated through validation conducted on a different imbalanced dataset showing superior performance metrics in terms of accuracy. Additionally, the study contributes to methodological advancements in wind turbine fault diagnosis by providing a rigorous framework for fault classification. It is confirmed that utilizing the extracted deep learning features into the resampled data can significantly affect the classification performance metrics. Furthermore, the proposed integrated approach shows significance for fault diagnosis enhancement in wind energy systems and advancing the field towards more efficient and reliable operation.

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来源期刊
IET Renewable Power Generation
IET Renewable Power Generation 工程技术-工程:电子与电气
CiteScore
6.80
自引率
11.50%
发文量
268
审稿时长
6.6 months
期刊介绍: IET Renewable Power Generation (RPG) brings together the topics of renewable energy technology, power generation and systems integration, with techno-economic issues. All renewable energy generation technologies are within the scope of the journal. Specific technology areas covered by the journal include: Wind power technology and systems Photovoltaics Solar thermal power generation Geothermal energy Fuel cells Wave power Marine current energy Biomass conversion and power generation What differentiates RPG from technology specific journals is a concern with power generation and how the characteristics of the different renewable sources affect electrical power conversion, including power electronic design, integration in to power systems, and techno-economic issues. Other technologies that have a direct role in sustainable power generation such as fuel cells and energy storage are also covered, as are system control approaches such as demand side management, which facilitate the integration of renewable sources into power systems, both large and small. The journal provides a forum for the presentation of new research, development and applications of renewable power generation. Demonstrations and experimentally based research are particularly valued, and modelling studies should as far as possible be validated so as to give confidence that the models are representative of real-world behavior. Research that explores issues where the characteristics of the renewable energy source and their control impact on the power conversion is welcome. Papers covering the wider areas of power system control and operation, including scheduling and protection that are central to the challenge of renewable power integration are particularly encouraged. The journal is technology focused covering design, demonstration, modelling and analysis, but papers covering techno-economic issues are also of interest. Papers presenting new modelling and theory are welcome but this must be relevant to real power systems and power generation. Most papers are expected to include significant novelty of approach or application that has general applicability, and where appropriate include experimental results. Critical reviews of relevant topics are also invited and these would be expected to be comprehensive and fully referenced. Current Special Issue. Call for papers: Power Quality and Protection in Renewable Energy Systems and Microgrids - https://digital-library.theiet.org/files/IET_RPG_CFP_PQPRESM.pdf Energy and Rail/Road Transportation Integrated Development - https://digital-library.theiet.org/files/IET_RPG_CFP_ERTID.pdf
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