以学习为中心的边缘智能功率分配

Shuai Wang, Rui Wang, Qi Hao, Yik-Chung Wu, H. Poor
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引用次数: 7

摘要

当机器类型通信(MTC)设备产生大量数据时,由于有限的能量和计算能力,它们通常无法处理这些数据。为此,边缘智能被提出,它收集分布式数据并在边缘执行机器学习。然而,这种模式需要最大限度地提高学习性能而不是通信吞吐量,因此著名的注水算法和最大最小公平性算法由于仅根据无线信道的质量分配资源而变得效率低下。提出了一种基于经验分类误差模型的以学习为中心的无线电资源分配方法。为了深入了解LCPA问题,我们推导了一个渐近最优解。结果表明,发射功率与信道增益成反比,并随学习参数呈指数比例增长。实验结果表明,LCPA算法明显优于其他功率分配算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Centric Power Allocation for Edge Intelligence
While machine-type communication (MTC) devices generate massive data, they often cannot process this data due to limited energy and computation power. To this end, edge intelligence has been proposed, which collects distributed data and performs machine learning at the edge. However, this paradigm needs to maximize the learning performance instead of the communication throughput, for which the celebrated water-filling and max-min fairness algorithms become inefficient since they allocate resources merely according to the quality of wireless channels. This paper proposes a learning centric power allocation (LCPA) method, which allocates radio resources based on an empirical classification error model. To get insights into LCPA, an asymptotic optimal solution is derived. The solution shows that the transmit powers are inversely proportional to the channel gain, and scale exponentially with the learning parameters. Experimental results show that the proposed LCPA algorithm significantly outperforms other power allocation algorithms.
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