Elsevier

Transport Policy

Volume 106, June 2021, Pages 54-63
Transport Policy

Recovery preparedness of global air transport influenced by COVID-19 pandemic: Policy intervention analysis

https://doi.org/10.1016/j.tranpol.2021.03.009Get rights and content

Highlights

  • Propose a Causal Bayesian Network (CBN) based non-pharmaceutical policy intervention framework.

  • This framework can integrate multiple data source (expert knowledge, open-source data and questionnaires) together.

  • Multi-factors (authorities, traveller, epidemiological) interacted uncertainties are considered.

  • This work can be of great potential in post-recovery preparedness of global aviation.

Abstract

The outbreak of COVID-19 constitutes an unprecedented disruption globally, in which risk management framework is on top priority in many countries. Travel restriction and home/office quarantine are some frequently utilized non-pharmaceutical interventions, which bring the worst crisis of airline industry compared with other transport modes. Therefore, the post-recovery of global air transport is extremely important, which is full of uncertainty but rare to be studied. The explicit/implicit interacted factors generate difficulties in drawing insights into the complicated relationship and policy intervention assessment. In this paper, a Causal Bayesian Network (CBN) is utilized for the modelling of the post-recovery behaviour, in which parameters are synthesized from expert knowledge, open-source information and interviews from travellers. The tendency of public policy in reaction to COVID-19 is analyzed, whilst sensitivity analysis and forward/backward belief propagation analysis are conducted. Results show the feasibility and scalability of this model. On condition that no effective health intervention method (vaccine, medicine) will be available soon, it is predicted that nearly 120 days from May 22, 2020, would be spent for the number of commercial flights to recover back to 58.52%–60.39% on different interventions. This intervention analysis framework is of high potential in the decision making of recovery preparedness and risk management for building the new normal of global air transport.

Keywords

Air transport
Post-recovery
Policy intervention
COVID-19
Causal Bayesian network (CBN)

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