Kaneko Nanae, Fujimoto Yu, Jacobsen Hans-Arno, Hayashi Yasuhiro
School of Advanced Science and Engineering, Waseda University, Tokyo, Japan.
Advanced Collaborative Research Organization for Smart Society, Waseda University, Tokyo, Japan.
Heliyon. 2024 Jul 3;10(14):e33943. doi: 10.1016/j.heliyon.2024.e33943. eCollection 2024 Jul 30.
The recent COVID-19 pandemic has precipitated drastic changes in economic and lifestyle conditions, significantly altering residual electricity demand behavior. This alteration has expanded the demand gap between actual and forecasted electricity usage based on pre-pandemic data, highlighting a critical global issue. Many studies in the pandemic have explored the features of this widening gap, which is impacted by major social events like fast virus spread and lockdowns. However, the influence of factors like economic shifts and lifestyle changes on this demand remains largely unexplored, primarily due to the pandemic's significant effects in these areas. Understanding the essential factors affecting the demand gap is crucial for stakeholders in the electricity sector to develop effective strategies. This study examines the hourly electricity consumption and related factors during the specified period. We present a method combining time-series forecasting and sparse modeling. This helps identify critical factors affecting the electricity demand gap during the pandemic, highlighting the most crucial variables. Utilizing this method, we identify the variables that have undergone significant changes during the pandemic and evaluate their effects on the electricity demand gap. The effectiveness is proven by applying it to the dataset collected in German.
近期的新冠疫情引发了经济和生活条件的急剧变化,极大地改变了剩余电力需求行为。这种改变扩大了基于疫情前数据的实际用电量与预测用电量之间的需求差距,凸显了一个关键的全球性问题。疫情期间的许多研究探讨了这一不断扩大的差距的特征,它受到病毒快速传播和封锁等重大社会事件的影响。然而,经济转变和生活方式变化等因素对这种需求的影响在很大程度上仍未得到探索,主要是因为疫情在这些领域产生了重大影响。了解影响需求差距的关键因素对于电力部门的利益相关者制定有效策略至关重要。本研究考察了特定时期内的每小时用电量及相关因素。我们提出了一种结合时间序列预测和稀疏建模的方法。这有助于识别疫情期间影响电力需求差距的关键因素,突出最关键的变量。利用这种方法,我们识别出疫情期间发生显著变化的变量,并评估它们对电力需求差距的影响。通过将其应用于在德国收集的数据集,证明了该方法的有效性。