基于FPGA的深度强化学习低温功率放大器自愈控制

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Jiachen Xu;Yuyi Shen;Jinho Yi;Ethan Chen;Vanessa Chen
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引用次数: 0

摘要

由于发射机电路的低温效应,用于人类无法到达区域的空间探索的无线传感和通信往往会出现严重的性能下降。为了在极端温度下生存,发射机可以内置可编程射频(RF)功率放大器(PA),智能PA控制器需要集成到系统中,以与环境交互并恢复PA的功能。这个问题可以建模为控制器在环境中行为(控制PA)以最大化奖励(信号质量),并且最适合使用强化学习作为解决方案。本文提出了一种基于现场可编程门阵列(FPGA)的低温节能强化学习(RL)模块,该模块可以直接对PA进行编程。通过在液氮环境中表征自修复PA,我们生成了一个射频信号数据集,并建立了一个交互式RL环境,以模拟PA在其配置和低温至- 197°C时的行为。我们开发了一种由神经网络引入的具有高泛化能力的深度强化学习模型来控制PA并恢复其性能。在FPGA上实现了具有定点训练和推理的RL模型,以适应低温条件,对PA控制进行快速、低功耗的训练和推理。编程FPGA的所有功能在低温测试环境中都能正常工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning on FPGA for Self-Healing Cryogenic Power Amplifier Control
Wireless sensing and communication for space exploration in areas inaccessible to human often suffer from severe performance degradation due to the cryogenic effects on the transmitters’ circuits. To survive extreme temperatures, programmable radio frequency (RF) power amplifiers (PA) can be built into the transmitter, and intelligent PA controllers need to be integrated into the system to interact with the environment and restore the PA’s functionalities. This problem can be modeled as the controller acts (control the PA) in an environment to maximize the reward (signal quality), and it is most suitable to use reinforcement learning as a solution. This paper presents a cryogenic and energy-efficient reinforcement learning (RL) module on Field Programmable Gate Arrays (FPGA) that can directly program the PA. By characterizing a self-healing PA in a liquid nitrogen environment, we generated an RF signal data set and built an interactive RL environment to model the PA’s behaviors across its configurations and cryogenic temperatures down to −197°C. We developed a deep RL model with a high generalization capability introduced by the neural networks to control the PA and restore its performance. The RL model with fixed-point training and inference is implemented on FPGA to survive the cryogenic conditions and carry out fast and low-power training and inference for PA control. All functionalities of the programmed FPGA operate correctly in the cryogenic testing environment.
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