IoHT中的队列感知拥塞避免:实现未来与传输优化大型模型的集成

IF 0.5 Q4 TELECOMMUNICATIONS
Muhammad Zafarullah, Ata Ullah, Fazli Subhan, Sajjad A. Ghauri, Mazliham Mohd Suud, M. Mansoor Alam
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引用次数: 0

摘要

医疗保健物联网(IoHT)已经取得了长足的进步,通过不断收集附着在患者身上的健康传感器的数据,改善了医疗保健操作和患者监测。当前的拥塞检测技术不足以进行早期检测,因为发送方通常不知道剩余队列的大小。关键健康数据的实时传输至关重要,但是中间节点上频繁的拥塞可能导致丢包、延迟和系统可靠性降低。为了应对这些挑战,我们提出了一种专为以患者为中心的IoHT网络量身定制的鲁棒且低复杂度的QACA算法,该算法基于实时队列占用阈值动态调整确认频率。通过将基于间隔的确认与基于优先级的排队策略集成在一起,QACA确保高优先级的医疗数据能够及时传输,即使在面对繁重的网络负载时也是如此。仿真结果表明,与分析模型和DCCA相比,QACA在减少丢包和包延迟方面的性能有显著提高。此外,当前的框架可能会在未来的工作中得到增强,使用LMs来增加队列状态的预测估计、流量分类和智能传输调度,从而为下一代IoHT系统的可扩展和智能拥塞管理铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Queue-Aware Congestion Avoidance in IoHT: Enabling Future Integration With Large Models for Transmission Optimization

Queue-Aware Congestion Avoidance in IoHT: Enabling Future Integration With Large Models for Transmission Optimization

The internet of healthcare things (IoHT) has advanced considerably, improving healthcare operations and patient monitoring by continuously collecting data from health sensors attached to patients. Current congestion detection techniques are insufficient for early detection since senders often remain unaware of the size of the residual queue. The real-time transmission of critical health data is essential, yet frequent congestion at intermediate nodes can lead to increased packet loss, delays, and diminished system reliability. To tackle these challenges, we propose a robust and low-complexity QACA algorithm tailored specifically for patient-centric IoHT networks, which dynamically adjusts the frequency of acknowledgments based on real-time queue occupancy thresholds. By integrating interval-based acknowledgments with a priority-based queuing strategy, QACA ensures that high-priority medical data is transmitted promptly, even in the face of heavy network loads. Simulation results indicate that QACA significantly improves performance over the analytical model and DCCA regarding packet loss and packet delay reduction. Moreover, the current framework may be enhanced in future work with the use of LMs to add predictive estimation of queue status, traffic classification, and an intelligent transmission scheduling, thus paving the way toward scalable and intelligent congestion management in next-generation IoHT systems.

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