A genetic scheduling strategy with spatial reuse for dense wireless networks

Vinicius Fulber-Garcia, F. Engel, E. P. Duarte
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引用次数: 0

Abstract

Novel networking technologies such as massive Internet-of-Things and 6G-and-beyond cellular networks are based on ultra-dense wireless communications. A wireless communication channel is a shared medium that demands access control, such as proper transmission scheduling. The SINR model can improve the performance of ultra-dense wireless networks by taking into consideration the effects of interference to allow multiple simultaneous transmissions in the same coverage area and using the same frequency band. However, scheduling in wireless networks under the SINR model is an NP-hard problem. This work presents a bioinspired solution based on a genetic heuristic to solve that problem. The proposed solution, called Genetic-based Transmission Scheduler (GeTS) produces a complete transmission schedule optimizing size, increasing the number of simultaneous transmissions (i.e., spatial reuse) thus allowing devices to communicate as soon as possible. Simulation results are presented for GeTS, including a convergence test and comparisons with other alternatives. Results confirm the ability of the solution to produce near-optimal schedules.
密集无线网络空间复用遗传调度策略
大规模物联网和6g及以上蜂窝网络等新型网络技术都是基于超密集无线通信。无线通信信道是一种需要访问控制的共享介质,例如适当的传输调度。SINR模型可以考虑干扰的影响,提高超密集无线网络的性能,允许在同一覆盖区域内使用同一频段同时传输多个信号。然而,无线网络在SINR模型下的调度是一个np困难问题。这项工作提出了一个基于遗传启发式的生物灵感解决方案来解决这个问题。提出的解决方案,称为基于遗传的传输调度程序(GeTS),产生一个完整的传输调度优化大小,增加同时传输的数量(即空间重用),从而允许设备尽快通信。给出了get的仿真结果,包括收敛性测试和与其他替代方案的比较。结果证实了该解决方案产生接近最优调度的能力。
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CiteScore
3.30
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