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A wavelet-based universal data compression method for different types of signals in power systems

机译:电力系统中不同类型信号的基于小波的通用数据压缩方法

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Wavelet-based data compression methods are widely used for the data compression in power systems. There are two major problems of wavelet-based data compression techniques: there is no standard for the selection of best wavelet functions and decomposition scales; most of the existing wavelet-based data compression methods are only suitable for disturbance signals with abrupt change. This paper proposed a wavelet-based universal data compression method for different types of signals in power systems, including oscillations, such as low-frequency oscillations (LFOs) and sub-synchronous oscillations (SSOs), and disturbances. Based on compression ratios (CRs) and distortion rates (DRs), this paper constructed a compression distortion composite index (CDCI) for the evaluation of compression methods, with a balanced consideration of compression and accuracy. Based on CDCI, the best wavelet functions and decomposition scales for different signals can be selected from the candidates. The universality of the proposed method was verified by analyzing the compression of different typical actual recorded signals. The results indicated that the proposed method can provide high compression ratios and low distortion rates.
机译:基于小波的数据压缩方法被广泛用于电力系统中的数据压缩。基于小波的数据压缩技术存在两个主要问题:最佳小波函数和分解尺度的选择没有标准。现有的大多数基于小波的数据压缩方法仅适用于突然变化的干扰信号。本文提出了一种基于小波的通用数据压缩方法,用于电力系统中不同类型的信号,包括诸如低频振荡(LFO)和次同步振荡(SSO)之类的振荡以及扰动。基于压缩率(CRs)和失真率(DRs),本文构造了压缩失真综合指数(CDCI)来评估压缩方法,同时兼顾了压缩率和准确性。基于CDCI,可以从候选对象中选择针对不同信号的最佳小波函数和分解尺度。通过分析不同典型实际记录信号的压缩,验证了该方法的通用性。结果表明,该方法可以提供较高的压缩率和较低的失真率。

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