用于生物医学应用的模数转换器中的预测传感

Jelle Van Rethy, Maarten De Smedt, M. Verhelst, G. Gielen
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引用次数: 7

摘要

本文提出了一种基于预测传感的ADC架构,通过利用生物医学信号(如心电图信号)的可预测特性,与传统的SAR ADC相比,该架构提高了能量效率。通过基于之前的样本预测下一个输入样本,在满量程的子范围内执行转换。与SAR ADC相比,这可以节省能源,SAR ADC总是在满量程中执行转换。给出并分析了在子范围内进行转换的两种搜索算法。对于6 - 10位之间的中等分辨率,在能耗方面可获得高达40-50%的改进,而对于更高分辨率,则可获得25 - 40%的改进。为了验证这一概念,设计了一个12位预测ADC,实现了具有0阶预测的受限二进制搜索算法,并在130nm UMC CMOS技术上进行了仿真。仿真结果表明,与相同分辨率的传统SAR ADC相比,每次转换的平均能量消耗在30-40%的范围内。
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Predictive sensing in analog-to-digital converters for biomedical applications
This paper presents a predictive sensing-based ADC architecture that has improved energy efficiency, compared to a conventional SAR ADC, by exploiting the predictable properties of biomedical signals, such as the electrocardiogram (ECG) signal. By predicting the next input sample, based on previous samples, the conversion is performed in a subrange of the full scale. This results in energy savings compared to the SAR ADC, which always performs the conversion in the full scale. Two search algorithms to perform the conversion in the subrange will be presented and analyzed. For moderate resolutions between 6 and 10 bit, up to 40–50% improvement in terms of energy consumption is obtained, while 25 to 40% for higher resolutions. To validate the concept, a 12-bit predictive ADC, implementing the restricted binary search algorithm with 0-th order prediction, is designed and simulated in 130nm UMC CMOS technology. The simulation results show an improvement in the average energy consumption per conversion, compared to a conventional SAR ADC with the same resolution, which is in the range of 30–40%.
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