用于神经形态计算的隧道磁阻材料和器件

Yuxuan Yao, Houyi Cheng, Boyu Zhang, Jialiang Yin, D. Zhu, W. Cai, Sai Li, Weisheng Zhao
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引用次数: 0

摘要

人工智能已成为现代生活中不可或缺的一部分,但由于其巨大的存储和计算需求,其能耗已成为一个重大问题。人工智能算法主要以深度学习算法为基础,依靠卷积神经网络或二元神经网络的反向传播。虽然这些算法旨在模拟人类大脑的学习过程,但它们的低生物保真度以及存储和计算单元的分离导致了大量的能量消耗。人脑是一台非凡的计算机器,在消耗极低功耗的情况下,具有识别和处理复杂信息的非凡能力。基于隧道磁电阻(TMR)的器件,即磁隧道结(MTJs),在模拟生物突触和神经元的行为方面具有很大的优势。这不仅是因为mtj可以模拟生物行为,如峰值时间依赖性可塑性和泄漏集成火,而且还因为mtj具有固有的随机和振荡特性。这些特性提高了mtj的生物保真度并降低了其功耗。MTJs还具有超快动力学和非易失性等优点,近年来在神经形态计算领域得到了广泛应用。我们对TMR的发展历史和基本原理进行了全面的回顾,包括详细介绍了MTJs的材料和磁性及其温度依赖性。我们还探讨了MTJs的各种书写方法及其潜在的应用。此外,我们还深入分析了不同类型的MTJs在神经形态计算中的特点和潜在应用。基于颅磁流变的设备在神经形态计算,特别是脉冲神经网络的发展中显示出了广阔的应用前景。它们以超低功耗进行片上学习的能力使它们成为物联网时代未来发展的令人兴奋的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tunneling magnetoresistance materials and devices for neuromorphic computing
Artificial intelligence has become indispensable in modern life, but its energy consumption has become a significant concern due to its huge storage and computational demands. Artificial intelligence algorithms are mainly based on deep learning algorithms, relying on the backpropagation of convolutional neural networks or binary neural networks. While these algorithms aim to simulate the learning process of the human brain, their low bio-fidelity and the separation of storage and computing units lead to significant energy consumption. The human brain is a remarkable computing machine with extraordinary capabilities for recognizing and processing complex information while consuming very low power. Tunneling magnetoresistance (TMR)-based devices, namely magnetic tunnel junctions (MTJs), have great advantages in simulating the behavior of biological synapses and neurons. This is not only because MTJs can simulate biological behavior such as spike-timing dependence plasticity and leaky integrate-fire, but also because MTJs have intrinsic stochastic and oscillatory properties. These characteristics improve MTJs’ bio-fidelity and reduce their power consumption. MTJs also possess advantages such as ultrafast dynamics and non-volatile properties, making them widely utilized in the field of neuromorphic computing in recent years. We conducted a comprehensive review of the development history and underlying principles of TMR, including a detailed introduction to the material and magnetic properties of MTJs and their temperature dependence. We also explored various writing methods of MTJs and their potential applications. Furthermore, we provided a thorough analysis of the characteristics and potential applications of different types of MTJs for neuromorphic computing. TMR-based devices have demonstrated promising potential for broad application in neuromorphic computing, particularly in the development of spiking neural networks. Their ability to perform on-chip learning with ultra-low power consumption makes them an exciting prospect for future advances in the era of the internet of things.
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CiteScore
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