System Design and Parameter Optimization for Remote Coverage from NOMA-based High-Altitude Platform Stations (HAPS)
Stratospheric solar-powered high-altitude platform stations (HAPS) have recently gained immense popularity for their ubiquitous connectivity and resilient operation while providing/catalyzing advanced mobile wireless communication services. They have particularly emerged as promising alternatives fo...
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Zusammenfassung: | Stratospheric solar-powered high-altitude platform stations (HAPS) have
recently gained immense popularity for their ubiquitous connectivity and
resilient operation while providing/catalyzing advanced mobile wireless
communication services. They have particularly emerged as promising
alternatives for economic coverage of remote areas in the world. This makes
them suitable candidates to meet the UN Sustainable Development Goals
(SDG-2030) for global connectivity. HAPS can provide line-of-sight (LoS)
communications to the ground users in its ultra-wide coverage area. We propose
to divide these users into multiple user groups and serve each group with a
high-density flexible narrow spot beam, generated by the phased array antennas
mounted on HAPS, to achieve high data rates. We carry out the user association
and power allocation in a downlink (DL) non-orthogonal multiple access (NOMA)
scheme in each user group. To improve the system performance, a sum rate
maximization problem is formulated by jointly designing user grouping, user
association, beam optimization, and power allocation while guaranteeing the
quality-of-service (QoS) for users with limited power budget. We further
investigate the outage performance of the users with the proposed approach as
compared to the traditional scheme. Our findings reveal the significance of the
joint design of communication parameters for enhanced system performance,
optimum energy utilization, and resource allocation. |
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DOI: | 10.48550/arxiv.2406.02254 |