神经形态无线分割计算与多层次尖峰

Dengyu Wu;Jiechen Chen;Bipin Rajendran;H. Vincent Poor;Osvaldo Simeone
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引用次数: 0

摘要

受生物过程的启发,神经形态计算利用峰值神经网络(snn)来执行推理任务,为涉及顺序数据的工作负载提供了显著的效率提升。硬件和软件的最新进展表明,在每个尖峰神经元之间交换的尖峰中嵌入一个小的有效载荷可以在不增加能量消耗的情况下提高推理精度。为了将神经形态计算扩展到更大的工作负载,拆分计算(SNN在两个设备上进行分区)是一个很有前途的解决方案。在这种架构中,承载初始层的设备必须将其输出神经元产生的尖峰信息传输到第二个设备。这在多电平尖峰的好处(它携带额外的有效载荷信息)和设备之间传输额外比特所需的通信资源之间建立了一种权衡。本文首次全面研究了采用多级snn的神经形态无线分离计算架构。我们提出了一个正交频分复用(OFDM)无线电接口的数字和模拟调制方案,以实现有效的通信。使用软件定义无线电的仿真和实验结果揭示了多级SNN模型所实现的性能改进,并提供了作为发射器和接收器之间连接质量函数的最佳有效载荷大小的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuromorphic Wireless Split Computing With Multi-Level Spikes
Inspired by biological processes, neuromorphic computing leverages spiking neural networks (SNNs) to perform inference tasks, offering significant efficiency gains for workloads involving sequential data. Recent advances in hardware and software have shown that embedding a small payload within each spike exchanged between spiking neurons can enhance inference accuracy without increasing energy consumption. To scale neuromorphic computing to larger workloads, split computing—where an SNN is partitioned across two devices—is a promising solution. In such architectures, the device hosting the initial layers must transmit information about the spikes generated by its output neurons to the second device. This establishes a trade-off between the benefits of multi-level spikes, which carry additional payload information, and the communication resources required for transmitting extra bits between devices. This paper presents the first comprehensive study of a neuromorphic wireless split computing architecture that employs multi-level SNNs. We propose digital and analog modulation schemes for an orthogonal frequency division multiplexing (OFDM) radio interface to enable efficient communication. Simulation and experimental results using software-defined radios reveal performance improvements achieved by multi-level SNN models and provide insights into the optimal payload size as a function of the connection quality between the transmitter and receiver.
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