纳米磁铁
椭圆
磁化
消散
物理
凝聚态物理
二进制数
灵敏度(控制系统)
各向异性
能量(信号处理)
几何学
拓扑(电路)
光学
数学
量子力学
磁场
电子工程
组合数学
工程类
算术
作者
Rahnuma Rahman,Supriyo Bandyopadhyay
标识
DOI:10.1109/tnano.2023.3244139
摘要
Binary stochastic neurons (BSNs) are excellent activators for machine learning. An ideal platform for implementing them is low- or zero-energy-barrier nanomagnets (LBMs) possessing in-plane anisotropy (e.g., circular or slightly elliptical disks) whose fluctuating magnetization encodes a probabilistic (p-) bit. Here, we show that such a BSN's activation function, the pinning current (which pins the output to a particular binary state), and the response time – all exhibit strong sensitivity to very slight geometric variations in the LBM's cross-section. A mere 1% change in the diameter of a circular nanomagnet in any arbitrary direction can alter the response time by a factor of ∼4 at room temperature and a 10% change can alter the pinning current by a factor of ∼2. All this causes large device-to-device variation which is detrimental to integration. we also show that the energy dissipation is lowered but the response time is increased by replacing a circular cross-section with a slightly elliptical one and then encoding the p-bit in the magnetization component along the major axis. Encoding the p-bit in the magnetization component along the minor axis has the opposite effect. The energy-delay-product, however, is relatively independent of whether the cross-section is a circle or an ellipse and which magnetization component encodes the p-bit in the case of the ellipse.
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