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An intelligent and power-saving wireless DSP design for the wearable EEG's fatigue monitoring

机译:用于可穿戴式EEG疲劳监测的智能节能无线DSP设计

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In this paper, an intelligent and low power EEG(electroencephalograph) processing multi-QOS(quality of service) DSP has been designed with the smicrf180nm technology used for EEG wearable Instrument. The bio-detection uses the Ag/Ag-Cl electrode sensor to extract the head skin's micro EEG signal, and uses the differential chopper-LNA circuit to cancel the 1/f, dc-offset voltage and other noises. On one hand, the hardware accelerator uses the STFT(short time fourier transform) multiple filtering channels and the HT(hilbert transform) method, for decomposing the instant amplitude envelop and instant frequency of each sub-channel. On the other hand, when the detected SI(sleepiness indicator) signal triggers the minimum 3-stage CPU, the software thread uses the HHT(hilbert huang transform) method to get the IMF(intrinsic mode function) components from the non-statistical and non-stable EEG signal, then the design executes the Tsallis entropy complexity analysis with the pipeline CPU, which consumes about 20pJ/instruction. The transmitter uses ping/pang switching matrix, the burst TD-OFDM (time division-orthogonal frequency division multiplex) scheme and the power-adaptation algorithm to give a balance design between the frequency utility and the energy consumption. To increase the throughput and to decrease power consumption mostly caused by the wireless channel's idle CS (carrier sensing) operation, the channel wake-upping/monitoring and the data transmitting/receiving circuits are separated, which reduces the energy consumption by about 30×. The design uses one-hop star topology to compose the reduced network architecture. Also, the design mainly uses the CG (clock gating) and PG (power gating) methods to decrease the chip's dynamic and leakage energy consumption respectively.
机译:本文利用smicrf180nm技术设计了一种智能,低功耗的EEG(脑电图)处理多QOS(服务质量)DSP,用于EEG穿戴式仪器。生物检测使用Ag / Ag-Cl电极传感器提取头部皮肤的微EEG信号,并使用差分斩波LNA电路消除1 / f,直流偏移电压和其他噪声。一方面,硬件加速器使用STFT(短时傅立叶变换)多个滤波通道和HT(希尔伯特变换)方法,分解每个子通道的瞬时幅度包络和瞬时频率。另一方面,当检测到的SI(困倦指示器)信号触发最小的3级CPU时,软件线程将使用HHT(希尔伯特·黄变换)方法从非统计量和非统计量中获取IMF(本征模式函数)分量。不稳定的EEG信号,然后设计使用流水线CPU执行Tsallis熵复杂度分析,每条指令消耗约20pJ的能量。发射机使用ping / pang切换矩阵,突发TD-OFDM(时分-正交频分复用)方案和功率自适应算法在频率效用和能耗之间进行平衡设计。为了增加吞吐量并减少主要由无线信道的空闲CS(载波侦听)操作引起的功耗,将信道唤醒/监视和数据发送/接收电路分开,这将能耗降低了约30倍。该设计使用单跳星形拓扑来构成简化的网络体系结构。此外,该设计主要使用CG(时钟门控)和PG(电源门控)方法来分别降低芯片的动态功耗和泄漏能耗。

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