Yang Yuning, Boling Sam, Mason Andrew J
IEEE Trans Biomed Circuits Syst. 2017 Aug;11(4):743-754. doi: 10.1109/TBCAS.2017.2679032. Epub 2017 May 24.
Next-generation brain machine interfaces demand a high-channel-count neural recording system to wirelessly monitor activities of thousands of neurons. A hardware efficient neural signal processor (NSP) is greatly desirable to ease the data bandwidth bottleneck for a fully implantable wireless neural recording system. This paper demonstrates a complete multichannel spike sorting NSP module that incorporates all of the necessary spike detector, feature extractor, and spike classifier blocks. To meet high-channel-count and implantability demands, each block was designed to be highly hardware efficient and scalable while sharing resources efficiently among multiple channels. To process multiple channels in parallel, scalability analysis was performed, and the utilization of each block was optimized according to its input data statistics and the power, area and/or speed of each block. Based on this analysis, a prototype 32-channel spike sorting NSP scalable module was designed and tested on an FPGA using synthesized datasets over a wide range of signal to noise ratios. The design was mapped to 130 nm CMOS to achieve 0.75 μW power and 0.023 mm area consumptions per channel based on post synthesis simulation results, which permits scalability of digital processing to 690 channels on a 4×4 mm electrode array.
下一代脑机接口需要高通道数的神经记录系统来无线监测数千个神经元的活动。非常需要一种硬件高效的神经信号处理器(NSP)来缓解完全可植入无线神经记录系统的数据带宽瓶颈。本文展示了一个完整的多通道尖峰分类NSP模块,该模块集成了所有必要的尖峰检测器、特征提取器和尖峰分类器模块。为了满足高通道数和可植入性的要求,每个模块都被设计为具有高度的硬件效率和可扩展性,同时在多个通道之间高效共享资源。为了并行处理多个通道,进行了可扩展性分析,并根据每个模块的输入数据统计以及每个模块的功耗、面积和/或速度对每个模块的利用率进行了优化。基于此分析,设计了一个32通道尖峰分类NSP可扩展原型模块,并使用合成数据集在广泛的信噪比范围内在FPGA上进行了测试。根据合成后仿真结果,该设计映射到130纳米CMOS工艺,以实现每通道0.75微瓦的功耗和0.023平方毫米的面积消耗,这使得数字处理能够在4×4毫米电极阵列上扩展到690个通道。