多波形无线电接收机,一个基于机器学习的无线电架构与设计的例子

W. Leonard, Alex Saunders, Michael Calabro, Katherine Olsen
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引用次数: 3

摘要

我们描述了一种支持机器学习的多波形无线电接收机的架构和设计,以追求真正的认知无线电,比当前的软件定义无线电实现具有更多的功能和适应性。这种机器学习方法使Joseph Mitola III和Gerald Q. Maguire, Jr.提出的认知无线电(cognitive radio)的愿景更接近现实。认知无线电(cognitive radio)决定其通信机制,即在何处(频谱中)以及如何(波形参数)传输和接收信息[1]。而且,这种无线电应该能够自我优化其通信,以便在功率和频谱受限的环境中最有效地最大化数据容量。为了实现这些目标,无线电中的软件必须控制更多的功能,包括物理层的功能。基于Tim O' shea和Jakob Hoydis的思想[2],我们开发了一种通用架构,其中物理层功能:频率校正、时序校正、解调和误码校正由能够处理多种信号类型和波形的人工神经网络执行。
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A Multi-waveform Radio Receiver, an Example of Machine Learning Enabled Radio Architecture and Design
We describe a machine learning enabled architecture and design for a multi-waveform radio receiver in the pursuit of a truly cognitive radio with more functionality and adaptability than current software defined radio implementations. This machine learning approach brings closer to reality the vision of cognitive radios proposed by Joseph Mitola III and Gerald Q. Maguire, Jr. Cognitive radios make decisions about their communications regime about where (in spectrum), and how (waveform parameters) to transmit and receive information [1]. And, such radios should be able to self-optimize their communications to most efficiently maximize data capacity in power and spectrum constrained environments. To achieve these goals, the software in the radio must control more of the functionality, including functions in the physical layer. Building on Tim O'Shea's and Jakob Hoydis' ideas [2], we have developed a generalized architecture, in which the physical layer functions: Frequency correction, timing correction, demodulation, and bit error correction are performed by an artificial neural network capable of processing several signal types and waveforms.
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