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A Neural Recording Amplifier Based on Adaptive SNR Optimization Technique for Long-Term Implantation
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- Title
- A Neural Recording Amplifier Based on Adaptive SNR Optimization Technique for Long-Term Implantation
- Issued Date
- 2017-10-20
- Citation
- Lee, Taeju. (2017-10-20). A Neural Recording Amplifier Based on Adaptive SNR Optimization Technique for Long-Term Implantation. IEEE Biomedical Circuits and Systems Conference (BioCAS 2017), 352–355. doi: 10.1109/BIOCAS.2017.8325150
- Type
- Conference Paper
- ISBN
- 9781509058037
- ISSN
- 2766-4465
- Abstract
-
Long-term neural recording which can consistently provide good signal-to-noise ratio (SNR) performance over time is important for stable operation of neuroprosthetic systems. This paper presents an analysis for the SNR optimization in a changing environment which causes variations in the tissue-electrode impedance, Zte. Based on the analysis result, a neural recording amplifier (NRA) is developed employing the SNR optimization technique. The NRA can adaptively change its configuration for in situ SNR optimization. The SNR is improved by 4.69% to 23.33% as Zte changes from 1.59 MQ to 31.8 MQ at 1 kHz. The NRA is fabricated in a 0.18-μm standard CMOS process and operates at 1.8-V supply while consuming 1.6 μA It achieves an input-referred noise of 4.67 μVrms when integrated from 1 Hz to 10 kHz, which leads to the NEF of 2.27 and the NEF2VDD of 9.28. The frequency reponse is measured with a high-pass cutoff frequency of 1 Hz and a low-pass cutoff frequency of 10 kHz. The midband gain is set to 40 dB while occupying 0.11 mm2 of a chip area. © 2017 IEEE.
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- Publisher
- IEEE Circuits and Systems Society
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Related Researcher
- Lee, Junghyup이정협
-
Department of Electrical Engineering and Computer Science
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