论文标题

神经形态无线认知:远程推理事件驱动的语义通信

Neuromorphic Wireless Cognition: Event-Driven Semantic Communications for Remote Inference

论文作者

Chen, Jiechen, Skatchkovsky, Nicolas, Simeone, Osvaldo

论文摘要

神经形态计算是一种新兴的计算范式,它从批处理的处理转向在线,事件驱动的流数据处理。神经形态芯片与基于尖峰的传感器相结合时,只有在尖峰时间内记录相关事件并证明对环境变化的变化时,才能固有地适应数据分布的“语义”。本文为神经形态的无线网络系统系统提出了一种端到端的设计,该系统集成了基于尖峰的传感,处理和通信。在提出的神经系统系统中,每个传感设备都配备了神经形态传感器,尖峰神经网络(SNN)和带有多个天线的脉冲无线电发射器。传输发生在配备了多Antenna Impulse无线电接收器和SNN的接收器上的共享褪色通道上进行。为了使接收器适应褪色的通道条件,我们引入了一项超网络,以使用飞行员控制解码SNN的权重。飞行员,编码SNN,解码SNN和超网络经过多个通道实现的共同训练。拟议的系统被证明可以显着改善基于传统的基于框架的数字解决方案,以及替代性非自适应训练方法,从时间到准确性和能源消耗指标方面。

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.

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