Yang Chia-Hsiang, Shih Yi-Hsin, Chiueh Herming
IEEE Trans Biomed Circuits Syst. 2015 Feb;9(1):60-71. doi: 10.1109/TBCAS.2014.2318592. Epub 2014 Jun 24.
To improve the performance of epileptic seizure detection, independent component analysis (ICA) is applied to multi-channel signals to separate artifacts and signals of interest. FastICA is an efficient algorithm to compute ICA. To reduce the energy dissipation, eigenvalue decomposition (EVD) is utilized in the preprocessing stage to reduce the convergence time of iterative calculation of ICA components. EVD is computed efficiently through an array structure of processing elements running in parallel. Area-efficient EVD architecture is realized by leveraging the approximate Jacobi algorithm, leading to a 77.2% area reduction. By choosing proper memory element and reduced wordlength, the power and area of storage memory are reduced by 95.6% and 51.7%, respectively. The chip area is minimized through fixed-point implementation and architectural transformations. Given a latency constraint of 0.1 s, an 86.5% area reduction is achieved compared to the direct-mapped architecture. Fabricated in 90 nm CMOS, the core area of the chip is 0.40 mm(2). The FastICA processor, part of an integrated epileptic control SoC, dissipates 81.6 μW at 0.32 V. The computation delay of a frame of 256 samples for 8 channels is 84.2 ms. Compared to prior work, 0.5% power dissipation, 26.7% silicon area, and 3.4 × computation speedup are achieved. The performance of the chip was verified by human dataset.
为了提高癫痫发作检测的性能,独立成分分析(ICA)被应用于多通道信号以分离伪迹和感兴趣的信号。快速独立成分分析(FastICA)是一种计算ICA的高效算法。为了减少能量消耗,在预处理阶段利用特征值分解(EVD)来减少ICA分量迭代计算的收敛时间。通过并行运行的处理元件阵列结构高效地计算EVD。利用近似雅可比算法实现了面积高效的EVD架构,使面积减少了77.2%。通过选择合适的存储元件并减小字长,存储内存的功耗和面积分别降低了95.6%和51.7%。通过定点实现和架构转换使芯片面积最小化。在0.1 s的延迟约束下,与直接映射架构相比,面积减少了86.5%。该芯片采用90 nm CMOS工艺制造,核心面积为0.40 mm²。作为集成癫痫控制片上系统(SoC)一部分的FastICA处理器,在0.32 V电压下功耗为81.6 μW。对于8通道的256个样本帧,计算延迟为84.2 ms。与先前的工作相比,功耗降低了0.5%,硅面积减少了26.7%,计算速度提高了3.4倍。该芯片的性能通过人体数据集得到验证。