Routing and Scheduling Optimization for Urban Air Mobility Fleet Management using Quantum Annealing
The growing integration of urban air mobility (UAM) for urban transportation and delivery has accelerated due to increasing traffic congestion and its environmental and economic repercussions. Efficiently managing the anticipated high-density air traffic in cities is critical to ensure safe and effe...
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Zusammenfassung: | The growing integration of urban air mobility (UAM) for urban transportation
and delivery has accelerated due to increasing traffic congestion and its
environmental and economic repercussions. Efficiently managing the anticipated
high-density air traffic in cities is critical to ensure safe and effective
operations. In this study, we propose a routing and scheduling framework to
address the needs of a large fleet of UAM vehicles operating in urban areas.
Using mathematical optimization techniques, we plan efficient and deconflicted
routes for a fleet of vehicles. Formulating route planning as a maximum
weighted independent set problem enables us to utilize various algorithms and
specialized optimization hardware, such as quantum annealers, which has seen
substantial progress in recent years. Our method is validated using a traffic
management simulator tailored for the airspace in Singapore. Our approach
enhances airspace utilization by distributing traffic throughout a region. This
study broadens the potential applications of optimization techniques in UAM
traffic management. |
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DOI: | 10.48550/arxiv.2410.11231 |