利用机器学习概念在多波束卫星中实现基于需求的动态带宽分配

Shwet Kashyap;Nisha Gupta
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引用次数: 0

摘要

在卫星通信领域,由于该技术的重要性与日俱增,有效利用频谱的重要性与日俱增,动态资源管理已成为当代多波束卫星设计中的一个关键考虑因素,有助于根据用户需求灵活分配资源。本研究论文深入探讨了机器学习和人工智能在卫星通信领域发挥的关键作用,尤其侧重于点波束卫星。该研究包括对机器学习应用的评估,即对捕捉特定地理区域用户需求的广泛数据集进行分析。该分析包括确定波束/簇的最佳数量,这是通过使用以簇内平方和为前提的膝肘法实现的。随后,利用加权均值聚类技术对需求数据进行公平分割。与传统的固定光束照明模型相比,所提出的解决方案为带宽分配引入了一个简单而高效的模型。这种方法不仅提高了频谱利用率,还节省了大量电力,从而解决了卫星通信中日益重要的高效资源管理问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demand-Based Dynamic Bandwidth Allocation in Multi-Beam Satellites Using Machine Learning Concepts
In the realm of satellite communication, where the importance of efficient spectrum utilization is growing day by day due to the increasing significance of this technology, dynamic resource management has emerged as a pivotal consideration in the design of contemporary multi-beam satellites, facilitating the flexible allocation of resources based on user demand. This research paper delves into the pivotal role played by machine learning and artificial intelligence within the domain of satellite communication, particularly focusing on spot beam satellites. The study encompasses an evaluation of machine learning's application, whereby an extensive dataset capturing user demand across a specific geographical area is subjected to analysis. This analysis involves determining the optimal number of beams/clusters, achieved through the utilization of the knee-elbow method predicated on within-cluster sum of squares. Subsequently, the demand data are equitably segmented employing the weighted k-means clustering technique. The proposed solution introduces a straightforward yet efficient model for bandwidth allocation, contrasting with conventional fixed beam illumination models. This approach not only enhances spectrum utilization but also leads to noteworthy power savings, thereby addressing the growing importance of efficient resource management in satellite communication.
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