Research on Power Grid Disturbance Signal Identification Method Based on Energy Difference

P. Ji, Quan Zhu
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Abstract

With the rapid development of clean energy generation technology, a large number of distributed power sources are integrated into the local power grid, resulting in the intensification of disturbance signals in the power grid. It is particularly important to effectively classify and identify the disturbance signals in the power grid. This paper presents a recognition method based on energy difference and support vector machine. The method extracts signal feature vectors by calculating the energy difference of power grid signals and sends them to support vector machine for classification. Experiments were carried out on the power grid signals with and without noise. Experiments show that this method can effectively classify and recognize the disturbance signals, and the recognition rate is greatly improved. The effectiveness of the method is proved. This paper provides a theoretical basis for the improvement of power grid quality and intelligent monitoring management in the future.
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基于能量差的电网扰动信号识别方法研究
随着清洁能源发电技术的快速发展,大量分布式电源接入局部电网,导致电网扰动信号加剧。对电网中的干扰信号进行有效的分类和识别显得尤为重要。提出了一种基于能量差和支持向量机的图像识别方法。该方法通过计算电网信号的能量差提取信号特征向量,并将其发送给支持向量机进行分类。分别对带噪声和不带噪声的电网信号进行了实验。实验表明,该方法能有效地对干扰信号进行分类识别,识别率大大提高。验证了该方法的有效性。本文为今后提高电网质量和智能化监控管理提供了理论依据。
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