基于谱相关函数辅助卷积神经网络的电网事件类型识别

IF 3.3 Q3 ENERGY & FUELS IEEE Open Access Journal of Power and Energy Pub Date : 2024-12-11 DOI:10.1109/OAJPE.2024.3513776
Ozgur Alaca;Ali Riza Ekti;Jhi-Young Joo;Nils Stenvig
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引用次数: 0

摘要

快速、准确地识别电网事件是保证系统可靠性和安全性的关键。本文介绍了一种新的事件类型识别方法,利用谱相关函数(SCF)辅助卷积神经网络(CNN)。该方法采用六阶段级联结构,包括:(1)数据收集,(2)裁剪,(3)增强,(4)特征提取(FE),(5)训练和(6)测试。来自网格事件签名库的真实电网信号用于训练和测试。为了提高鲁棒性,在不同信噪比(SNR)水平上引入加性高斯白噪声(AWGN)来增强数据集。基于scf的FE方法通过利用信号的频谱相关性捕获独特的事件类型特征,使CNN架构能够有效地学习和概括事件模式。所提出的方法与七种传统技术进行了基准测试,使用代表四种不同事件类型的真实电网信号:熔断保险丝、线路开关、低幅度电弧和变压器通电。关键性能指标——预测精度、平均绝对误差(MAE)、精度、召回率、f1分数和混淆矩阵——被用来评估性能。结果表明,SCF-CNN方法在所有指标和信噪比水平上都优于传统方法,在6 dB以上的信噪比值上实现了超过99%的预测精度和接近零的误差。这表明了该方法在电网应用中可靠的事件类型识别方面的有效性。
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Event-Type Identification in Power Grids Using a Spectral Correlation Function-Aided Convolutional Neural Network
Rapid and accurate identification of events in power grids is critical to ensuring system reliability and security. This study introduces a novel event-type identification method, utilizing a Spectral Correlation Function (SCF)-aided Convolutional Neural Network (CNN). The proposed method employs a six-stage cascaded structure consisting of: (1) data collection, (2) clipping, (3) augmentation, (4) feature extraction (FE), (5) training, and (6) testing. Real-world power grid signals sourced from the Grid Event Signature Library are used for both training and testing. To improve robustness, additive white Gaussian noise (AWGN) is introduced at various signal-to-noise ratio (SNR) levels to augment the dataset. The SCF-based FE method captures distinctive event-type characteristics by exploiting the spectral correlation of signals, allowing the CNN architecture to effectively learn and generalize event patterns. The proposed method is benchmarked against seven conventional techniques, using real-world power grid signals representing four distinct event types: blown fuse, line switching, low amplitude arcing, and transformer energization. Key performance metrics-prediction accuracy, mean absolute error (MAE), precision, recall, F1-score, and confusion matrix—are employed to evaluate the performance. Results demonstrate that the SCF-CNN method outperforms traditional approaches across all metrics and SNR levels, achieving over 99% prediction accuracy and nearly zero error for SNR values above 6 dB. This signifies its efficacy in reliable event-type identification for power grid applications.
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
期刊最新文献
Coherency-Constrained Spectral Clustering for Power Network Reduction Advancing Coherent Power Grid Partitioning: A Review Embracing Machine and Deep Learning Information for authors Synergistic Meta-Heuristic Adaptive Real-Time Power System Stabilizer (SMART-PSS) IEEE Open Access Journal of Power and Energy Publication Information
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