Analyzing the Effects of COVID-19 Pandemic on the Energy Demand: the Case of Northern Italy

Paolo Scarabaggio, M. L. Scala, Raffaele Carli, M. Dotoli
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引用次数: 6

Abstract

The COVID-19 crisis is profoundly influencing the global economic framework due to restrictive measures adopted by governments worldwide. Finding real-time data to correctly quantify this impact is very significant but not as straightforward. Nevertheless, an analysis of the power demand profiles provides insight into the overall economic trends. To accurately assess the change in energy consumption patterns, in this work we employ a multi-layer feed-forward neural network that calculates an estimation of the aggregated power demand in the north of Italy, (i.e, in one of the European areas that were most affected by the pandemics) in the absence of the COVID-19 emergency. After assessing the forecasting model reliability, we compare the estimation with the ground truth data to quantify the variation in power consumption. Moreover, we correlate this variation with the change in mobility behaviors during the lockdown period by employing the Google mobility report data. From this unexpected and unprecedented situation, we obtain some intuition regarding the power system macro-structure and its relation with the overall people’s mobility.
分析COVID-19大流行对能源需求的影响:以意大利北部为例
由于各国政府采取的限制性措施,新冠肺炎危机正在深刻影响全球经济框架。找到实时数据来正确量化这种影响是非常重要的,但并不那么简单。然而,对电力需求概况的分析提供了对整体经济趋势的洞察。为了准确评估能源消耗模式的变化,在这项工作中,我们采用多层前馈神经网络,在没有COVID-19紧急情况的情况下,计算意大利北部(即受大流行影响最严重的欧洲地区之一)的总电力需求估计。在评估预测模型的可靠性后,我们将估计结果与地面真实数据进行比较,以量化功耗的变化。此外,我们通过使用谷歌移动报告数据,将这种变化与封锁期间移动行为的变化联系起来。从这一意想不到的、前所未有的情况中,我们对电力系统的宏观结构及其与整体人口流动的关系有了一些直观的认识。
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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