A 36-nW Electrocardiogram Anomaly Detector Based on a 1.5-bit Non-Feedback Delta Quantizer for Always-on Cardiac Monitoring

Ning Pu;Nan Wu;Syed Muhammad Abubakar;Yihuai Yang;Xinpeng Liu;Sining Pan;Yanshu Guo;Wen Jia;Zhihua Wang;Hanjun Jiang
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Abstract

An always-on electrocardiogram (ECG) anomaly detector (EAD) with ultra-low power (ULP) consumption is proposed for continuous cardiac monitoring applications. The detector is featured with a 1.5-bit non-feedback delta quantizer (DQ) based feature extractor, followed by a multiplier-less convolutional neural network (CNN) engine, which eliminates the traditional high-resolution analog-to-digital converter (ADC) in conventional signal processing systems. The DQ uses a computing-in-capacitor (CIC) subtractor to quantize the sample-to-sample difference of ECG signal into 1.5-bit ternary codes, which is insensitive to low-frequency baseline wandering. The subsequent event-driven classifier is composed of a low-complexity coarse detector and a systolic-array-based CNN engine for ECG anomaly detection. The DQ and the digital CNN are fabricated in 65-nm and 180-nm CMOS technology, respectively, and the two chips are integrated on board through wire bonding. The measured detection accuracy is 90.6% ∼ 91.3% when tested on the MIT-BIH arrhythmia database, identifying three different ECG anomalies. Operating at 1 V and 1.4 V power supplies for the DQ and the digital CNN, respectively, the measured long-term average power consumption of the core circuits is 36 nW, which makes the detector among those state-of-the-art always-on cardiac anomaly detection devices with the lowest power consumption.
基于 1.5 位非反馈德尔塔量化器的 36-nW 心电图异常检测器,用于始终在线的心脏监护。
针对连续心脏监测应用,提出了一种超低功耗(ULP)的始终在线心电图(ECG)异常检测器(EAD)。该检测器采用基于 1.5 位非反馈三角量化器(DQ)的特征提取器,之后是无乘法器卷积神经网络(CNN)引擎,从而消除了传统信号处理系统中的传统高分辨率模数转换器(ADC)。DQ 使用电容内计算(CIC)减法器将心电图信号的采样-采样差量化为 1.5 位三元编码,对低频基线徘徊不敏感。随后的事件驱动分类器由低复杂度粗检测器和基于收缩阵列的 CNN 引擎组成,用于心电图异常检测。DQ 和数字 CNN 分别采用 65 纳米和 180 纳米 CMOS 技术制造,两个芯片通过线键合集成在电路板上。在麻省理工学院-BIH 心律失常数据库上进行测试时,测得的检测准确率为 90.6% ∼ 91.3%,可识别三种不同的心电图异常。DQ 和数字 CNN 的工作电压分别为 1 V 和 1.4 V,测得的核心电路长期平均功耗为 36 nW,这使得该检测器成为功耗最低的先进始终在线心脏异常检测设备之一。
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