García Sebastián, Parejo Antonio, Personal Enrique, Ignacio Guerrero Juan, Biscarri Félix, León Carlos
Department of Electronic Technology, Escuela Politécnica Superior, University of Seville, Spain.
Appl Energy. 2021 Apr 1;287:116547. doi: 10.1016/j.apenergy.2021.116547. Epub 2021 Jan 28.
Since the emergence of the virus that causes COVID-19 (the SARS-CoV-2) in Wuhan in December 2019, societies all around the world have had to change their normal life patterns due to the restrictions and lockdowns imposed by governments. These changes in life patterns have a direct reflection on energy consumption. Thanks to Smart Grid technologies, specifically to the Advance Metering Infrastructure at secondary distribution network, this impact can be evaluated even at the customer level. Thus, this paper analyzes the consumption behavior and the impact that this crisis has had using Smart Meter data. The proposed approach includes the selection and normalization of features, automatic clustering, the obtaining of the estimated consumption without considering the crisis (at short and mid-terms) and the impact evaluation. The proposed approach has been tested on a case with a real Smart Meter infrastructure from Manzanilla (Huelva, Spain). The results of this use case showed that residential customers have increased their consumption around 15% during full lockdown and 7.5% during the reopening period. In contrast, globally, non-residential customers have decreased their consumption 38% during full lockdown and 14.5% during the reopening period. However, referring to non-residential customers, five different consumption profiles were found with different short-term and mid-term behaviors during the COVID crisis. The different behavior found shows customers who have maintained their normal consumption during the lockdown, others who have reduced it (to a greater or lesser extent) and have not recovered it after the removal of the restrictions, and others who have reduced the consumption but then they recovered it when the restrictions were removed. The metadata of the customers in each behavior cluster found are highly correlated to the restrictions imposed to control the spread of the virus. This study shows evidence about the proposed approach usefulness to analyze the behavior and the impact at customer level during the COVID-19 crisis.
自2019年12月在武汉出现导致新冠肺炎的病毒(严重急性呼吸综合征冠状病毒2)以来,由于政府实施的限制措施和封锁,世界各地的社会不得不改变其正常生活模式。这些生活模式的变化直接反映在能源消耗上。得益于智能电网技术,特别是二级配电网的先进计量基础设施,即使在客户层面也能评估这种影响。因此,本文利用智能电表数据分析了消费行为以及这场危机所产生的影响。所提出的方法包括特征的选择与归一化、自动聚类、在不考虑危机的情况下(短期和中期)获取估计消费量以及影响评估。所提出的方法已在西班牙韦尔瓦省曼萨尼利亚的一个具有真实智能电表基础设施的案例中进行了测试。该用例的结果表明,在全面封锁期间,居民客户的用电量增加了约15%,在重新开放期间增加了7.5%。相比之下,全球范围内,非居民客户在全面封锁期间用电量下降了38%,在重新开放期间下降了14.5%。然而,对于非居民客户,在新冠疫情危机期间发现了五种不同的消费模式,其短期和中期行为各不相同。发现的不同行为表明,有些客户在封锁期间保持了正常消费,有些客户则减少了消费(或多或少),并且在限制解除后没有恢复到原来的水平,还有些客户减少了消费,但在限制解除后又恢复了消费。在每个行为集群中发现的客户元数据与为控制病毒传播而实施的限制高度相关。这项研究证明了所提出的方法在分析新冠疫情危机期间客户层面的行为和影响方面的有效性。