Chen Ying-Lun, Hwang Wen-Jyi, Ke Chi-En
Department of Computer Science and Information Engineering, National Taiwan Normal University, Taipei 116, Taiwan.
Sensors (Basel). 2015 Aug 13;15(8):19830-51. doi: 10.3390/s150819830.
A novel VLSI architecture for multi-channel online spike sorting is presented in this paper. In the architecture, the spike detection is based on nonlinear energy operator (NEO), and the feature extraction is carried out by the generalized Hebbian algorithm (GHA). To lower the power consumption and area costs of the circuits, all of the channels share the same core for spike detection and feature extraction operations. Each channel has dedicated buffers for storing the detected spikes and the principal components of that channel. The proposed circuit also contains a clock gating system supplying the clock to only the buffers of channels currently using the computation core to further reduce the power consumption. The architecture has been implemented by an application-specific integrated circuit (ASIC) with 90-nm technology. Comparisons to the existing works show that the proposed architecture has lower power consumption and hardware area costs for real-time multi-channel spike detection and feature extraction.
本文提出了一种用于多通道在线尖峰排序的新型超大规模集成电路(VLSI)架构。在该架构中,尖峰检测基于非线性能量算子(NEO),特征提取通过广义赫布算法(GHA)进行。为了降低电路的功耗和面积成本,所有通道共享用于尖峰检测和特征提取操作的相同核心。每个通道都有专用缓冲区,用于存储检测到的尖峰及其该通道的主成分。所提出的电路还包含一个时钟门控系统,仅向当前使用计算核心的通道的缓冲区提供时钟,以进一步降低功耗。该架构已通过采用90纳米技术的专用集成电路(ASIC)实现。与现有工作的比较表明,所提出的架构在实时多通道尖峰检测和特征提取方面具有更低的功耗和硬件面积成本。