Sub-Synchronous Oscillation Recognition Based on Extreme Learning Machine

Weisong Min, Chaoqun Wang, Yang Wang, Xianyong Xiao
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Abstract

In recent years, sub-synchronous oscillation (SSO) occurs frequently in wind power systems in many countries, which seriously affects the safety and stability of power systems. In order to monitor and warn sub-synchronous oscillations when they occur and avoid further escalation of accidents, it is urgent to carry out wide-area monitoring for SSO. Therefore, a sub-synchronous oscillation identification method based on Extreme Learning Machine (ELM) is proposed in this paper. Through the analysis and observation of PMU signal waveform images, this paper found that SSO can be identified from three aspects: the trend of PMU signal waveform, the fluctuation of envelope and the length of stationary subsequence. Thus, the SSO identification problem can be transformed into a Classification problem. In this paper, the classical ELM algorithm is adopted to realize the fast and accurate recognition of SSO. The proposed method is verified in detail by the synthetic signal, and compared with the Support Vector Machines (SVM) algorithm. The results show that the proposed method can effectively identify SSO even in the case of large noise. Therefore, the theoretical results are expected to provide technical support for SSO real-time warning in the future.
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基于极限学习机的次同步振荡识别
近年来,许多国家的风电系统频繁发生次同步振荡,严重影响了电力系统的安全与稳定。为了在次同步振荡发生时进行监测和预警,避免事故进一步升级,迫切需要对次同步振荡进行广域监测。为此,本文提出了一种基于极限学习机(ELM)的次同步振动辨识方法。通过对PMU信号波形图像的分析和观察,发现单点登录可以从PMU信号波形的变化趋势、包络线的波动和平稳子序列的长度三个方面进行识别。因此,SSO识别问题可以转换为分类问题。本文采用经典的ELM算法实现单点登录的快速准确识别。通过合成信号对该方法进行了详细验证,并与支持向量机(SVM)算法进行了比较。结果表明,该方法在噪声较大的情况下也能有效地识别单点登录。因此,理论研究结果有望为今后SSO实时预警提供技术支持。
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