Mixed-signal programmable non-linear interface for resource-efficient multi-sensor analytics

2018 IEEE INTERNATIONAL SOLID-STATE CIRCUITS CONFERENCE - (ISSCC)(2018)

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摘要
Tremendous progress has been made in reducing ADC power-consumption, yet, in many portable always-awake and multi-sensor systems, the power consumption is dominated by digital backend processing [1] for feature-computation and classification. Recent Analog-to-Information based innovations (see Fig. 21.1.1) have attempted to alleviate this bottleneck by reducing the amount of data streaming into the digital domain: (a) by extracting sensory features in the analog domain [2] and digitizing these instead of the raw-data; and (b) by compressing the data through an analog non-linearity in order to reduce the required digitization word-length [3-5]. Yet, both approaches suffer from limited applicability and design reuse problems, due to (a) their need for highly application-specific building blocks which are not portable across different sensor-signals in multi-sensor platforms; and (b) their need for complex, performance-sensitive analog building blocks which are not portable across silicon technologies. Overcoming the above shortcomings, this work reports a highly programmable non-linear interface that synergistically combines a digitally-computed, application-tunable non-linearity with a 10b binary DAC in an iterative mixed-signal loop (see Fig. 21.1.1 bottom) to enable a compressive analog to non-linear digital transfer-curve. Such configurable non-linear transfer-curve has wide applicability in multi-sensor analytics for feature-extraction, signal-emphasis/-de-emphasis, signal-correction, etc. A 90nm CMOS proof-of-concept illustrates this versatility with 2 very different application mappings, demonstrating (a) Compressive classification: 2x improvement in rms-error for heart-beat classification from muscle noise corrupted ECG signals, along with 50% backend data reduction; and (b) Analog impairment correction : up-to 20dB distortion correction for analog impairments in the sensory chain.
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关键词
resource-efficient multisensor analytics,ADC power-consumption,multisensor systems,power consumption,digital backend processing,feature-computation,Analog-to-Information based innovations,digital domain,sensory features,analog domain,raw-data,analog nonlinearity,design reuse problems,highly application-specific building blocks,multisensor platforms,complex performance-sensitive analog building blocks,iterative mixed-signal loop,compressive analog,nonlinear digital transfer-curve,configurable nonlinear transfer-curve,feature-extraction,signal-correction,Compressive classification,heart-beat classification,Analog impairment correction,mixed-signal programmable nonlinear interface,digitization word-length,sensor-signals,backend data reduction,size 90.0 nm
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