强化学习
空中交通管制
计算机科学
低空
运输工程
模拟
高度(三角形)
环境科学
人工智能
工程类
航空航天工程
数学
几何学
作者
Yibing Xie,Alessandro Gardi,Roberto Sabatini
标识
DOI:10.1109/dasc52595.2021.9594384
摘要
As Unmanned Aircraft Systems (UAS) technology matures, and the demand for UAS commercial operations is gradually increasing, a widespread proliferation of UAS operations may lead saturation of the airspace resources. Such congestion instances would increase the time-criticality of UAS Traffic Management (UTM) interventions and likely reduce operational efficiency and safety. Therefore, innovative tools and services are needed to deliver Demand and Capacity Balancing (DCB) services in a range of airspace regions, thus increasing operational efficiency and safety while also reducing the time-criticality of UTM operator's duties. The research presented in this paper aims to develop an efficient and uncertainty-resilient DCB process and solution framework based on hybrid learning algorithms, which allows UTM systems to satisfy the operational requirements of UAS in dense metropolitan regions. The focus of this particular paper is on the analysis of uncertainty factors affecting UAS trajectory conformance in the urban and suburban low-altitude airspace and on the requirements which these factors pose on the determination of recommended DCB processes and techniques. Capitalising on these findings, this research will try to improve the safety, efficiency and uncertainty-resilience of UAS traffic in low-altitude urban airspace operations.
科研通智能强力驱动
Strongly Powered by AbleSci AI