首页> 外文期刊>Quality Control, Transactions >An Adaptive Matrix Pencil Algorithm Based-Wavelet Soft-Threshold Denoising for Analysis of Low Frequency Oscillation in Power Systems
【24h】

An Adaptive Matrix Pencil Algorithm Based-Wavelet Soft-Threshold Denoising for Analysis of Low Frequency Oscillation in Power Systems

机译:基于自适应矩阵铅笔算法基于小波软阈值去噪,用于分析电力系统低频振荡

获取原文
获取原文并翻译 | 示例
           

摘要

One of the main reasons that affecting the stability of power systems is low frequency oscillation (LFO). The existence of noise influences the accuracy of LFO mode identification extracted from wide-area measurement system (WAMS). The wavelet threshold de-noising is widely used in signal processing. In this paper, wavelet soft threshold is illustrated to attenuate the noise of LFO signal, the optimal wavelet basis and decomposition level for de-noising LFO signal with noise are obtained and verified by experiments. Following the signal de-noising, an improved Matrix Pencil (MP) algorithm is used for mode identification of LFO. This improvement particularly lies in the ratio of adjacent singular entropy increment difference (RASEID) designed as an adaptive order determination method in the MP algorithm proposed in the paper. RASEID not only makes the MP algorithm adaptive, but also enhances the stability of the order determination in the mode identification process. The proposed method ensures the accuracy of mode identification with lower sensitivity to noise interference. Finally, the validity of the proposed method is verified by three cases studies. The first study is on the analysis of synthetic signal typically performed in many literatures. The second study is to identify the mode of active power LFO signal which is generated by IEEE four-generator and two-area system given with disturbance on RT-LAB experimental platform. The third study is the oscillation analysis of the actual LFO data in the North American power grid. The results validate the feasibility of the proposed method for mode identification of noisy LFO.
机译:影响电力系统稳定性的主要原因之一是低频振荡(LFO)。噪声的存在影响从广域测量系统(WAMS)中提取的LFO模式识别的准确性。小波阈值去噪广泛用于信号处理。在本文中,通过实验获得并验证了小波软阈值以衰减LFO信号的噪声,最佳小波基和分解水平,通过实验获得噪音的噪声的噪声信号。在信号去噪之后,改进的矩阵铅笔(MP)算法用于LFO的模式识别。这种改进特别是在纸张中提出的MP算法中被设计为自适应订单确定方法的相邻奇异熵增量差(RASEID)的比率。 RaseID不仅使MP算法自适应,而且还提高了模式识别过程中订单确定的稳定性。所提出的方法确保了模式识别的准确性,对噪声干扰的敏感性较低。最后,通过三种案例研究验证了所提出的方法的有效性。第一研究是在许多文献中进行的合成信号的分析。第二研究是识别由RT-Lab实验平台上干扰的IEEE四发电机和两个区域系统产生的有功功率LFO信号模式。第三研究是北美电网实际LFO数据的振荡分析。结果验证了噪声LFO模式识别方法的可行性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号