Extracting information from radiofrequency (RF) signals using artificial neural networks at low energy cost is a critical need for a wide range of applications. Here we show how to leverage the intrinsic dynamics of spintronic nanodevices called magnetic tunnel junctions to process multiple analogue RF inputs in parallel and perform synaptic operations. Furthermore, we achieve classification of RF signals with experimental data from magnetic tunnel junctions as neurons and synapses, with the same accuracy as an equivalent software neural network. These results are a key step for embedded radiofrequency artificial intelligence.
翻译:使用低能源成本的人工神经网络从射频信号中提取信息是广泛应用的关键。 在这里,我们展示了如何利用称为磁隧道连接点的脊柱纳米装置的内在动态来同时处理多个类似RF输入并进行合成操作。此外,我们用磁隧道连接点的实验数据将RF信号分类为神经元和突触,其准确性与软件神经网络相同。这些结果对于嵌入无线电频率人工智能来说是一个关键步骤。