For multi-beam high throughput (MB-HTS) geostationary (GEO) satellite networks, the congestion appears when user's demands cannot be fully satisfied. This paper boosts the system performance by formulating and solving the power allocation strategies under the congestion control to admit users. A new multi-objective optimization is formulated to balance the sum data throughput and the satisfied user set. After that, we come up with two different solutions, which efficiently tackle the multi-objective maximization problem: The model-based solution utilizes the weighted sum method to enhance the number of demand-satisfied users, whilst the supervised learning solution offers a low-computational complexity design by inheriting optimization structures as continuous mappings. Simulation results verify that our solutions effectively copes with the congestion and outperforms the data throughput demand than the other previous works.
翻译:对于多波束高输送量(MB-HTS)地球静止卫星网络,当用户的需求无法完全满足时,就会出现拥堵现象。本文通过制定和解决拥堵控制下的权力分配战略来提高系统性能,以接纳用户。制定了新的多目标优化,以平衡数据输送量和满意用户的组合。之后,我们提出了两种不同的解决方案,有效解决多目标最大化问题:基于模型的解决方案利用加权总和方法来增加满足需求用户的数量,而受监督的学习解决方案则通过将优化结构作为连续绘图,提供低消费复杂性的设计。模拟结果证实我们的解决办法有效地应对了拥堵,并超越了以往其他工程的数据吞吐量需求。