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Spectral Analysis of Electricity Demand Using Hilbert–Huang Transform

机译:用希尔伯特-黄变换对电力需求进行频谱分析

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摘要

The large amount of sensors in modern electrical networks poses a serious challenge in the data processing side. For many years, spectral analysis has been one of the most used approaches to extract physically meaningful information from a sea of data. Fourier Transform (FT) and Wavelet Transform (WT) are by far the most employed tools in this analysis. In this paper we explore the alternative use of Hilbert–Huang Transform (HHT) for electricity demand spectral representation. A sequence of hourly consumptions, spanning 40 months of electrical demand in Spain, has been used as dataset. First, by Empirical Mode Decomposition (EMD), the sequence has been time-represented as an ensemble of 13 Intrinsic Mode Functions (IMFs). Later on, by applying Hilbert Transform (HT) to every IMF, an HHT spectrum has been obtained. Results show smoother spectra with more defined shapes and an excellent frequency resolution. EMD also fosters a deeper analysis of abnormal electricity demand at different timescales. Additionally, EMD permits information compression, which becomes very significant for lossless sequence representation. A 35% reduction has been obtained for the electricity demand sequence. On the negative side, HHT demands more computer resources than conventional spectral analysis techniques.
机译:现代电气网络中的大量传感器在数据处理方面提出了严峻的挑战。多年来,频谱分析一直是从大量数据中提取具有物理意义的信息的最常用方法之一。迄今为止,傅立叶变换(FT)和小波变换(WT)是此分析中使用最多的工具。在本文中,我们探索了希尔伯特-黄变换(HHT)用于电力需求频谱表示的替代用法。西班牙使用了40个月电力需求的一系列小时消耗数据作为数据集。首先,通过经验模式分解(EMD),该序列已在时间上表示为13个本征模式函数(IMF)的集合。稍后,通过对每个IMF应用希尔伯特变换(HT),可以获得HHT频谱。结果显示频谱更平滑,形状更清晰,频率分辨率也极佳。 EMD还促进在不同时间范围内对异常电力需求进行更深入的分析。另外,EMD允许信息压缩,这对于无损序列表示非常重要。电力需求序列已减少了35%。不利的一面是,HHT比传统的频谱分析技术需要更多的计算机资源。

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