Smart Grids data characterization: a revision

Leonardo Minelli, Jonas Fernando Schreiber, P. Sausen, A. Sausen, M. De Campos
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Abstract

This research explores the characterization of data in time series in Smart Grids, considering the importance of data as a basis for information and knowledge. The analysis, based on real data from a Smart Grid, focused on quantities such as temperature, voltage and current. Characteristics such as stationarity, linearity, complexity, cyclicality, mutability and randomness were addressed. The application of these characteristics made it possible to identify specific patterns and behaviors in each piece of data. Stationarity, linearity, and randomness are properties that can vary over time, and it is crucial to analyze time series at different periods. In addition, additional Big Data characteristics, such as trueness, value, variability, and others, amplify the complexity of the analysis. The research provides relevant insights to understand and address the challenges in analyzing large volumes of smart power grid data.
智能电网数据特征描述:修订版
考虑到数据作为信息和知识基础的重要性,本研究探讨了智能电网中时间序列数据的特征。分析以智能电网的真实数据为基础,重点关注温度、电压和电流等量。分析涉及静态、线性、复杂性、周期性、易变性和随机性等特征。这些特征的应用使识别每项数据中的特定模式和行为成为可能。静态性、线性和随机性是随时间变化的属性,因此分析不同时期的时间序列至关重要。此外,大数据的其他特性,如真实性、价值、可变性等,也增加了分析的复杂性。该研究为理解和应对分析大量智能电网数据的挑战提供了相关见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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