Li Xishu, de Groot Maurits, Bäck Thomas
Leiden Institute of Advanced Computer Science Leiden University Leiden CA Netherlands.
Decis Sci. 2021 Oct 17. doi: 10.1111/deci.12549.
The COVID-19 pandemic caused a drastic drop in passenger air transport demand due to two forces: supply restriction and demand depression. In order for airlines to recover, the key is to identify which force they are fighting against. We propose a method for separating the two forces of COVID-19 and evaluating the respective impact on demand. Our method involves dividing passengers into different segments based on passenger characteristics, simulating different scenarios, and predicting demand for each passenger segment in each scenario. Comparing the predictions with each other and with the real situation, we quantify the impact of COVID-19 associated with the two forces, respectively. We apply our method to a dataset from Air France-KLM and show that from March 1st to May 31st 2020, the pandemic caused demand at the airline to drop 40.3% on average for passengers segmented based on age and purpose of travel. The 57.4% of this decline is due to demand depression, whereas the other 42.6% is due to supply restriction. In addition, we find that the impact of COVID-19 associated with each force varies between passenger segments. The demand depression force impacted business passengers between age 41 and 60 the most, and it impacted leisure passengers between age 20 and 40 the least. The opposite result holds for the supply restriction force. We give suggestions on how airlines can plan their recovery using our results and how other industries can use our evaluation method.
新冠疫情导致航空客运需求急剧下降,这是由两种因素造成的:供给限制和需求低迷。为了使航空公司复苏,关键在于确定它们应对的是哪种因素。我们提出了一种方法,用于区分新冠疫情的这两种因素,并评估它们各自对需求的影响。我们的方法包括根据乘客特征将乘客分为不同类别,模拟不同情景,并预测每个情景下每个乘客类别的需求。通过相互比较预测结果以及与实际情况的比较,我们分别量化了与这两种因素相关的新冠疫情的影响。我们将该方法应用于法航荷航的数据集,结果显示,在2020年3月1日至5月31日期间,对于按年龄和出行目的划分的乘客群体,疫情导致该航空公司的需求平均下降了40.3%。其中57.4%的下降是由于需求低迷,而另外42.6%是由于供给限制。此外,我们发现与每种因素相关的新冠疫情影响在不同乘客群体之间存在差异。需求低迷因素对41至60岁的商务乘客影响最大,对20至40岁的休闲乘客影响最小。供给限制因素的情况则相反。我们就航空公司如何利用我们的结果规划复苏以及其他行业如何使用我们的评估方法提出了建议。