Self-learning MIMO-RF receiver systems: Process resilient real-time adaptation to channel conditions for low power operation

D. Banerjee, B. Muldrey, Shreyas Sen, Xian Wang, A. Chatterjee
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引用次数: 11

Abstract

Prior research has established that dynamically trading-off the performance of the RF front-end for reduced power consumption across changing channel conditions, using a feedback control system that modulates circuit and algorithmic level "tuning knobs" in real-time, leads to significant power savings. It is also known that the optimal power control strategy depends on the process conditions corresponding to the RF devices concerned. This complicates the problem of designing the feedback control system that guarantees the best control strategy for minimizing power consumption across all channel conditions and process corners. Since this problem is largely intractable due to the complexity of simulation across all channel conditions and process corners, we propose a self-learning strategy for adaptive MIMO-RF systems. In this approach, RF devices learn their own performance vs. power consumption vs. tuning knob relationships "on-the-fly" and formulate the optimum reconfiguration strategy using neural-network based learning techniques during real-time operation. The methodology is demonstrated for a MIMO-RF receiver front-end and is supported by hardware validation leading to 2.5X power savings in minimal learning time.
自学习MIMO-RF接收机系统:过程弹性实时适应低功耗操作的信道条件
先前的研究已经确定,在不断变化的信道条件下,使用实时调制电路和算法级别“调谐旋钮”的反馈控制系统,动态权衡射频前端的性能以降低功耗,从而显著节省功耗。我们还知道,最优功率控制策略取决于射频器件所对应的工艺条件。这使设计反馈控制系统的问题变得复杂,该系统保证在所有通道条件和过程角落中最小化功耗的最佳控制策略。由于仿真在所有信道条件和工艺拐角的复杂性,这个问题在很大程度上是难以解决的,我们提出了一种自适应MIMO-RF系统的自学习策略。在这种方法中,射频器件“实时”学习自身性能、功耗和调谐旋钮之间的关系,并在实时运行期间使用基于神经网络的学习技术制定最佳的重新配置策略。该方法用于MIMO-RF接收器前端,并得到硬件验证的支持,在最短的学习时间内节省2.5倍的功耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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