Ceria Alberto, Köstler Klemens, Gobardhan Rommy, Wang Huijuan
Faculty of Electrical Engineering, Mathematics and Computer Science, Delft University of Technology, Delft, The Netherlands.
Faculty of Aerospace Engineering, Delft University of Technology, Delft, The Netherlands.
PLoS One. 2021 Jan 22;16(1):e0245043. doi: 10.1371/journal.pone.0245043. eCollection 2021.
In this work, we explore the possibility of using a heterogeneous Susceptible- Infected-Susceptible SIS spreading process on an airline network to model airport congestion contagion with the objective to reproduce airport vulnerability. We derive the vulnerability of each airport from the US Airport Network data as the congestion probability of each airport. In order to capture diverse flight features between airports, e.g. frequency and duration, we construct three types of airline networks. The infection rate of each link in the SIS spreading process is proportional to its corresponding weight in the underlying airline network constructed. The recovery rate of each node is also heterogeneous, dependent on its node strength in the underlying airline network, which is the total weight of the links incident to the node. Such heterogeneous recovery rate is motivated by the fact that large airports may recover fast from congestion due to their well-equipped infrastructures. The nodal infection probability in the meta-stable state is used as a prediction of the vulnerability of the corresponding airport. We illustrate that our model could reproduce the distribution of nodal vulnerability and rank the airports in vulnerability evidently better than the SIS model whose recovery rate is homogeneous. The vulnerability is the largest at airports whose strength in the airline network is neither too large nor too small. This phenomenon can be captured by our heterogeneous model, but not the homogeneous model where a node with a larger strength has a higher infection probability. This explains partially the out-performance of the heterogeneous model. This proposed congestion contagion model may shed lights on the development of strategies to identify vulnerable airports and to mitigate global congestion by e.g. congestion reduction at selected airports.
在这项工作中,我们探讨了在航空网络上使用异质的易感-感染-易感(SIS)传播过程来模拟机场拥堵蔓延的可能性,目的是再现机场脆弱性。我们从美国机场网络数据中得出每个机场的脆弱性,即每个机场的拥堵概率。为了捕捉机场之间不同的航班特征,例如频率和时长,我们构建了三种类型的航空网络。SIS传播过程中每条链路的感染率与其在构建的基础航空网络中对应的权重成正比。每个节点的恢复率也是异质的,取决于其在基础航空网络中的节点强度,节点强度是与该节点相连的链路的总权重。这种异质恢复率的依据是,大型机场由于其完善的基础设施,可能会迅速从拥堵中恢复。在亚稳态下的节点感染概率被用作相应机场脆弱性的预测指标。我们表明,与恢复率均匀的SIS模型相比,我们的模型能够更好地再现节点脆弱性的分布,并明显地对机场的脆弱性进行排序。在航空网络中强度既不太大也不太小的机场,其脆弱性最大。这种现象可以被我们的异质模型捕捉到,但均匀模型却无法做到,在均匀模型中,强度较大的节点具有更高的感染概率。这部分解释了异质模型的优势。这个提出的拥堵蔓延模型可能会为制定识别脆弱机场和缓解全球拥堵的策略提供思路,例如通过减少选定机场的拥堵来实现。