A 130-μW, 64-Channel Spike-Sorting DSP Chip

نویسندگان

  • Vaibhav Karkare
  • Sarah Gibson
  • Dejan Marković
چکیده

Spike sorting is an important processing step in various neuroscientific and clinical studies. An on-chip spikesorting DSP must provide data-rate reduction while maintaining a power density much less than 800 μW/mm. Most existing designs either provide only spike detection for multi-channel processing, or they provide detection and feature extraction only for a single channel. We demonstrate a chip for detection, alignment, and feature extraction simultaneously for 64 channels. Spikesorting algorithms identified from a complexity-performance analysis are implemented on ASIC using a Matlab/Simulinkbased architecture design framework. The chip has a modular architecture, which allows it to be configured to process 16, 32, 48, or 64 channels. Inactive cores are power-gated to reduce power consumption when the chip operates for less than 64 channels. The chip is implemented in a 90-nm CMOS process and has a power dissipation of 130 μW (power density of 30 μW/mm) when processing all 64 channels. A data-rate reduction of 91.25% (11.71 Mbps to 1.02 Mbps) is achieved.

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تاریخ انتشار 2009