密集RFID网络的自适应功率控制

Bernard Amoah;Xiangyu Wang;Jian Zhang;Shiwen Mao;Senthilkumar C. G. Periaswamy;Justin Patton
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引用次数: 0

摘要

自适应功率控制是密集射频识别(RFID)环境中的一个关键挑战,在这种环境中,不受控制的功率水平可能导致过度干扰、能源效率低下和系统性能降低。本文提出了一个鲁棒和可扩展的自适应功率控制框架,动态调整发射功率水平,以优化能源效率,减少干扰,提高系统吞吐量。提出的框架利用基于实时环境反馈的优化驱动方法,确保遵守监管约束,同时保持最佳性能。采用多目标优化策略来平衡几个关键指标,包括吞吐量,能耗和公平性,与固定功率策略相比,Pareto front分析显示了更好的权衡。通过在密集RFID部署中使用通用软件无线电外设(USRP)设备进行广泛的模拟和现实世界实验,验证了所提出方法的有效性。结果表明,与基准固定功率方法相比,我们的框架实现了累积干扰减少34%,能源效率提高15%,吞吐量提高20%。此外,即使在动态和高密度的网络中,它的收敛速度也很快。这些改进使其具有高度可扩展性,并适应不同的读取器密度,确保在供应链管理和工业自动化等大规模RFID应用中的可靠性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Power Control for Dense RFID Networks
Adaptive power control is a critical challenge in dense radio frequency identification (RFID) environments, where uncontrolled power levels can lead to excessive interference, energy inefficiency, and reduced system performance. This paper presents a robust and scalable adaptive power control framework that dynamically adjusts transmit power levels to optimize energy efficiency, minimize interference, and enhance system throughput. The proposed framework leverages an optimization-driven approach based on real-time environmental feedback, ensuring compliance with regulatory constraints while maintaining optimal performance. A multi-objective optimization strategy is employed to balance several key metrics, including throughput, energy consumption, and fairness, with a Pareto front analysis demonstrating superior trade-offs compared to fixed power strategies. The effectiveness of the proposed approach is validated through extensive simulations and real-world experiments using universal software radio peripheral (USRP) devices in dense RFID deployments. The results show that our framework achieves a 34% reduction in cumulative interference, a 15% improvement in energy efficiency, and a 20% increase in throughput compared to baseline fixed power methods. Furthermore, it converges rapidly, even in dynamic and high-density networks. These improvements make it highly scalable and adaptable to varying reader densities, ensuring reliable performance in large-scale RFID applications such as supply chain management and industrial automation.
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