面向尖峰神经形态应用混合解决方案的可调多时标铟镓锌氧化物薄膜晶体管神经元

Mauricio Velazquez Lopez, Bernabe Linares-Barranco, Jua Lee, Hamidreza Erfanijazi, Alberto Patino-Saucedo, Manolis Sifalakis, Francky Catthoor, Kris Myny
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引用次数: 0

摘要

尖峰神经网络算法需要经过微调的神经形态硬件来提高效率。这种硬件主要是数字硬件,通常建立在成熟的硅节点上。未来的人工智能应用需要执行复杂度越来越高、时间跨度长达数十年的任务。现有的硅基解决方案无法有效满足某些任务的多时间尺度要求。铟镓锌氧化物薄膜晶体管具有低至阿伏安培的漏电流,可以缓解硅平台在时间尺度方面的不足。这些小电流可实现较宽的时标范围,远远超出各种新兴技术的可行性。在这里,我们估算并利用这些低漏电流创建了一个多时标神经元,它能整合跨越 7 个数量级范围的信息,并评估了它在更大网络中的优势。这种神经元的多时标能力可与硅一起用于创建混合尖峰神经网络,能够有效地执行比其单一技术同行更复杂的任务。Mauricio Velazquez Lopez 及其同事制造的神经形态节点的响应时间跨越了 7 个数量级。他们的技术与互补金属氧化物半导体兼容,因此适用于各种机器学习任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A tunable multi-timescale Indium-Gallium-Zinc-Oxide thin-film transistor neuron towards hybrid solutions for spiking neuromorphic applications

A tunable multi-timescale Indium-Gallium-Zinc-Oxide thin-film transistor neuron towards hybrid solutions for spiking neuromorphic applications
Spiking neural network algorithms require fine-tuned neuromorphic hardware to increase their effectiveness. Such hardware, mainly digital, is typically built on mature silicon nodes. Future artificial intelligence applications will demand the execution of tasks with increasing complexity and over timescales spanning several decades. The multi-timescale requirements for certain tasks cannot be attained effectively enough through the existing silicon-based solutions. Indium-Gallium-Zinc-Oxide thin-film transistors can alleviate the timescale-related shortcomings of silicon platforms thanks to their bellow atto-ampere leakage currents. These small currents enable wide timescale ranges, far beyond what has been feasible through various emerging technologies. Here we have estimated and exploited these low leakage currents to create a multi-timescale neuron that integrates information spanning a range of 7 orders of magnitude and assessed its advantages in larger networks. The multi-timescale ability of this neuron can be utilized together with silicon to create hybrid spiking neural networks capable of effectively executing more complex tasks than their single-technology counterparts. Mauricio Velazquez Lopez and colleagues fabricate a neuromorphic node with a response time that spans a range of 7 orders of magnitude. Their technology is compatible with complementary metal-oxide semiconductors, which makes it suitable for a variety of machine learning tasks.
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