论文标题
紧凑的在线学习尖峰神经形态生物信号处理器
A Compact Online-Learning Spiking Neuromorphic Biosignal Processor
论文作者
论文摘要
可穿戴设备上的实时生物信号处理引起了全世界的关注,因为其在医疗保健应用中的潜力。但是,对不同患者的低区域,低功率和高适应性的要求挑战了常规算法和硬件平台。在此设计中,提出了一个紧凑的在线学习神经形态硬件体系结构,具有针对生物信号处理的超低功耗。基于痕量的峰值依赖性塑性性(STDP)LGORITHM用于实现单层兴奋性抑制性尖峰神经网络的硬件友好在线学习。采用了几种技术,包括事件驱动的架构和完全优化的迭代计算方法,以最大程度地减少硬件利用率和功耗,以实现在线学习的硬件。实验结果表明,拟议的设计达到了混合国家标准与技术数据库(MNIST)和ECG分类的精度为87.36%和83%。硬件体系结构在Zynq-7020 FPGA上实现。实施结果表明,查找表(LUT)和触发器(FF)的利用率分别降低了14.87和7.34倍,与最先进的状态相比,功耗降低了21.69%。
Real-time biosignal processing on wearable devices has attracted worldwide attention for its potential in healthcare applications. However, the requirement of low-area, low-power and high adaptability to different patients challenge conventional algorithms and hardware platforms. In this design, a compact online learning neuromorphic hardware architecture with ultra-low power consumption designed explicitly for biosignal processing is proposed. A trace-based Spiking-Timing-Dependent-Plasticity (STDP) lgorithm is applied to realize hardware-friendly online learning of a single-layer excitatory-inhibitory spiking neural network. Several techniques, including event-driven architecture and a fully optimized iterative computation approach, are adopted to minimize the hardware utilization and power consumption for the hardware implementation of online learning. Experiment results show that the proposed design reaches the accuracy of 87.36% and 83% for the Mixed National Institute of Standards and Technology database (MNIST) and ECG classification. The hardware architecture is implemented on a Zynq-7020 FPGA. Implementation results show that the Look-Up Table (LUT) and Flip Flops (FF) utilization reduced by 14.87 and 7.34 times, respectively, and the power consumption reduced by 21.69% compared to state of the art.