基于多分辨率分析和负选择算法的电力系统电压干扰检测与分类

Energies Pub Date : 2024-07-11 DOI:10.3390/en17143403
Haislan Bernardes, C. R. Minussi
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引用次数: 0

摘要

及早发现对配电系统的威胁有助于专业人员做出决策,减少供电中断和保护系统的不当启动。受生物学启发的方法,如人工神经网络、遗传算法和蚁群,可以解决优化问题,促进模式识别和决策。负小波选择算法可识别和消除自反应细胞,并与多分辨率分析相结合,在不同的细节尺度上分析信号,从而更全面地了解和详细描述有关现象。负小波选择算法显示了检测和分类干扰的鲁棒性。
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Detection and Classification of Voltage Disturbances in Electrical Power Systems Based on Multiresolution Analysis and Negative Selection Algorithm
Early detection of threats to electrical energy distribution systems helps professionals make decisions and mitigate interruptions in supply and improper activation of the protection system. Biologically inspired methods, e.g., artificial neural networks, genetic algorithms, and ant colonies, solve optimization problems and facilitate pattern recognition and decision-making. The present work presents a tool for detecting and classifying voltage disturbances based on the negative selection algorithm, which identifies and eliminates self-reactive cells, associated with multiresolution analysis, which analyzes the signal at different scales of detail, allowing a more complete understanding and detailed description of the phenomenon in question. The negative wavelet selection algorithm demonstrates robustness to detect and classify disturbances.
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