All-in-Memory Brain-Inspired Computing Using FeFET Synapses

IF 1.9 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Frontiers in electronics Pub Date : 2022-02-18 DOI:10.3389/felec.2022.833260
Simon Thomann, Hong L. G. Nguyen, P. Genssler, H. Amrouch
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引用次数: 14

Abstract

The separation of computing units and memory in the computer architecture mandates energy-intensive data transfers creating the von Neumann bottleneck. This bottleneck is exposed at the application level by the steady growth of IoT and data-centric deep learning algorithms demanding extraordinary throughput. On the hardware level, analog Processing-in-Memory (PiM) schemes are used to build platforms that eliminate the compute-memory gap to overcome the von Neumann bottleneck. PiM can be efficiently implemented with ferroelectric transistors (FeFET), an emerging non-volatile memory technology. However, PiM and FeFET are heavily impacted by process variation, especially in sub 14 nm technology nodes, reducing the reliability and thus inducing errors. Brain-inspired Hyperdimensional Computing (HDC) is robust against such errors. Further, it is able to learn from very little data cutting energy-intensive transfers. Hence, HDC, in combination with PiM, tackles the von Neumann bottleneck at both levels. Nevertheless, the analog nature of PiM schemes necessitates the conversion of results to digital, which is often not considered. Yet, the conversion introduces large overheads and diminishes the PiM efficiency. In this paper, we propose an all-in-memory scheme performing computation and conversion at once, utilizing programmable FeFET synapses to build the comparator used for the conversion. Our experimental setup is first calibrated against Intel 14 nm FinFET technology for both transistor electrical characteristics and variability. Then, a physics-based model of ferroelectric is included to realize the Fe-FinFETs. Using this setup, we analyze the circuit’s susceptibility to process variation, derive a comprehensive error probability model, and inject it into the inference algorithm of HDC. The robustness of HDC against noise and errors is able to withstand the high error probabilities with a loss of merely 0.3% inference accuracy.
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基于FeFET突触的全记忆脑启发计算
计算机体系结构中计算单元和存储器的分离要求能量密集型数据传输,从而造成冯·诺依曼瓶颈。物联网和以数据为中心的深度学习算法的稳定增长要求极高的吞吐量,这一瓶颈在应用程序层面暴露出来。在硬件层面,内存中模拟处理(PiM)方案用于构建消除计算内存缺口的平台,以克服冯·诺依曼瓶颈。PiM可以通过铁电晶体管(FeFET)(一种新兴的非易失性存储器技术)有效地实现。然而,PiM和FeFET受到工艺变化的严重影响,尤其是在亚14nm技术节点中,降低了可靠性,从而导致误差。受大脑启发的超维计算(HDC)对此类错误具有鲁棒性。此外,它能够从很少的数据切割能源密集型转移中学习。因此,HDC与PiM相结合,在两个层面上都解决了冯·诺依曼的瓶颈问题。然而,PiM方案的模拟性质需要将结果转换为数字,这通常是不考虑的。然而,转换引入了大量的管理费用并降低了PiM的效率。在本文中,我们提出了一种同时执行计算和转换的全内存方案,利用可编程的FeFET突触来构建用于转换的比较器。我们的实验装置首先针对英特尔14纳米FinFET技术进行了晶体管电气特性和可变性的校准。然后,建立了铁电体的物理模型来实现Fe-FinFET。利用这种设置,我们分析了电路对过程变化的敏感性,推导了一个综合的误差概率模型,并将其引入HDC的推理算法中。HDC对噪声和误差的鲁棒性能够承受高误差概率,而推理精度仅损失0.3%。
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