Farkhani Hooman, Böhnert Tim, Tarequzzaman Mohammad, Costa José Diogo, Jenkins Alex, Ferreira Ricardo, Madsen Jens Kargaard, Moradi Farshad
Integrated Circuits and Electronics Laboratory, Department of Engineering, Aarhus University, Aarhus, Denmark.
International Iberian Nanotechnology Laboratory, Braga, Portugal.
Front Neurosci. 2020 Jan 22;13:1429. doi: 10.3389/fnins.2019.01429. eCollection 2019.
Dealing with big data, especially the videos and images, is the biggest challenge of existing Von-Neumann machines while the human brain, benefiting from its massive parallel structure, is capable of processing the images and videos in a fraction of second. The most promising solution, which has been recently researched widely, is brain-inspired computers, so-called neuromorphic computing systems (NCS). The NCS overcomes the limitation of the word-at-a-time thinking of conventional computers benefiting from massive parallelism for data processing, similar to the brain. Recently, spintronic-based NCSs have shown the potential of implementation of low-power high-density NCSs, where neurons are implemented using magnetic tunnel junctions (MTJs) or spin torque nano-oscillators (STNOs) and memristors are used to mimic synaptic functionality. Although using STNOs as neuron requires lower energy in comparison to the MTJs, still there is a huge gap between the power consumption of spintronic-based NCSs and the brain due to high bias current needed for starting the oscillation with a detectable output power. In this manuscript, we propose a spintronic-based NCS (196 × 10) proof-of-concept where the power consumption of the NCS is reduced by assisting the STNO oscillation through a microwatt nanosecond laser pulse. The experimental results show the power consumption of the STNOs in the designed NCS is reduced by 55.3% by heating up the STNOs to 100°C. Moreover, the average power consumption of spintronic layer (STNOs and memristor array) is decreased by 54.9% at 100°C compared with room temperature. The total power consumption of the proposed laser assisted STNO-based NCS (LAO-NCS) at 100°C is improved by 40% in comparison to a typical STNO-based NCS at room temperature. Finally, the energy consumption of the LAO-NCA at 100°C is expected to reduce by 86% compared with a typical STNO-based NCS at the room temperature.
处理大数据,尤其是视频和图像,是现有冯·诺依曼机器面临的最大挑战,而人类大脑得益于其大规模并行结构,能够在几分之一秒内处理图像和视频。目前研究最为广泛且最具前景的解决方案是受大脑启发的计算机,即所谓的神经形态计算系统(NCS)。NCS克服了传统计算机一次处理一个字的思维限制,受益于大规模并行的数据处理方式,类似于大脑。最近,基于自旋电子学的NCS展现出实现低功耗高密度NCS的潜力,其中神经元使用磁性隧道结(MTJ)或自旋扭矩纳米振荡器(STNO)来实现,忆阻器则用于模拟突触功能。尽管与MTJ相比,使用STNO作为神经元所需能量更低,但基于自旋电子学的NCS与大脑的功耗仍存在巨大差距,因为启动振荡并获得可检测的输出功率需要高偏置电流。在本论文中,我们提出了一种基于自旋电子学的NCS(196×10)概念验证,通过微瓦纳秒激光脉冲辅助STNO振荡来降低NCS的功耗。实验结果表明,在设计的NCS中,将STNO加热到100°C可使STNO的功耗降低55.3%。此外,与室温相比,在100°C时自旋电子层(STNO和忆阻器阵列)的平均功耗降低了54.9%。与室温下典型的基于STNO的NCS相比,所提出的基于激光辅助STNO的NCS(LAO-NCS)在100°C时的总功耗提高了40%。最后,预计与室温下典型的基于STNO的NCS相比,100°C时LAO-NCA的能耗将降低86%。