首页> 外文期刊>IEEE transactions on very large scale integration (VLSI) systems >Design and Implementation of an Ultralow-Energy FFT ASIC for Processing ECG in Cardiac Pacemakers
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Design and Implementation of an Ultralow-Energy FFT ASIC for Processing ECG in Cardiac Pacemakers

机译:用于心脏起搏器中处理ECG的超低能量FFT ASIC的设计与实现

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摘要

In embedded biomedical applications, spectrum analysis algorithms such as fast Fourier transform (FFT) are crucial for pattern detection and have been the focus of continued research. In deeply embedded systems such as cardiac pacemakers, FFT-based signal processing is typically computed by application-specific integrated circuit (ASIC) to achieve low-power operation. This brief proposes a data-driven design approach for an FFT ASIC solution, which exploits the limited range of data encountered by these embedded systems. The optimizations proposed in this brief use the simple concept of hashing and lookup table to effectively reduce the number of arithmetic operations required to perform the FFT of an electrocardiogram (ECG) signal. By reducing the dynamic power consumption and overall energy footprint of FFT computation, the proposed design aims to achieve longer battery life for a cardiac pacemaker. The design is synthesized using a 90-nm standard cell library, and gate level switching activity is simulated to obtain accurate power consumption results. The proposed optimizations achieved a low energy consumption of 27.72 nJ per FFT, which is 14.22% lower than a standard 128-point radix-2 FFT when tested with actual ECG data collected from PhysioNet.
机译:在嵌入式生物医学应用中,频谱分析算法(例如快速傅里叶变换(FFT))对于模式检测至关重要,并且一直是持续研究的重点。在诸如心脏起搏器之类的深度嵌入式系统中,基于FFT的信号处理通常由专用集成电路(ASIC)计算以实现低功耗操作。本简介为FFT ASIC解决方案提出了一种数据驱动的设计方法,该方法利用了这些嵌入式系统遇到的有限数据范围。本摘要中提出的优化方法使用哈希和查找表的简单概念来有效减少执行心电图(ECG)信号FFT所需的算术运算次数。通过减少FFT计算的动态功耗和总体能耗,该设计旨在延长心脏起搏器的电池寿命。该设计使用90 nm标准单元库进行了综合,并对栅极电平开关活动进行了仿真,以获取准确的功耗结果。拟议的优化实现了每FFT 27.72 nJ的低能耗,与从PhysioNet收集的实际ECG数据进行测试相比,它比标准的128点radix-2 FFT降低了14.22%。

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