Neuromorphic computing is an emerging computing paradigm that moves away from batched processing towards the online, event-driven, processing of streaming data. Neuromorphic chips, when coupled with spike-based sensors, can inherently adapt to the "semantics" of the data distribution by consuming energy only when relevant events are recorded in the timing of spikes and by proving a low-latency response to changing conditions in the environment. This paper proposes an end-to-end design for a neuromorphic wireless Internet-of-Things system that integrates spike-based sensing, processing, and communication. In the proposed NeuroComm system, each sensing device is equipped with a neuromorphic sensor, a spiking neural network (SNN), and an impulse radio transmitter with multiple antennas. Transmission takes place over a shared fading channel to a receiver equipped with a multi-antenna impulse radio receiver and with an SNN. In order to enable adaptation of the receiver to the fading channel conditions, we introduce a hypernetwork to control the weights of the decoding SNN using pilots. Pilots, encoding SNNs, decoding SNN, and hypernetwork are jointly trained across multiple channel realizations. The proposed system is shown to significantly improve over conventional frame-based digital solutions, as well as over alternative non-adaptive training methods, in terms of time-to-accuracy and energy consumption metrics.
翻译:神经地貌计算是一种新兴的计算模式,它从分批处理转向在线、事件驱动和流数据处理。神经地貌芯片,如果加上基于钉子的传感器,可以自然地适应数据分配的“静态 ”, 只有当有关事件在峰值的时机记录下来,并且证明对环境条件变化的低纬度反应时,才能通过消耗能源来消耗能源。本文件建议对神经地貌无线互联网系统进行端对端设计,将基于峰值的感测、处理和通信整合在一起。在拟议的NeuroComm系统中,每个感测装置都配有神经形态传感器、闪烁神经神经神经网络(SNNN)和带多个天线的脉冲无线电发报机。传输是通过一个共享的光化通道进行,该接收器配备多线感应感应信号接收器和SNNN。为了让接收器适应疲软化的频道条件,我们引入一个超网络来控制SNNN的解码的重量。在试点中,将SNNNNS加密的编码、解码化神经网络和多式电路段的解解码化系统被大大地显示为超越了常规的系统。