The School of Electrical Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, 34141, Republic of Korea.
Nat Commun. 2022 Jun 3;13(1):2888. doi: 10.1038/s41467-022-30539-6.
Neuromorphic computing, a computing paradigm inspired by the human brain, enables energy-efficient and fast artificial neural networks. To process information, neuromorphic computing directly mimics the operation of biological neurons in a human brain. To effectively imitate biological neurons with electrical devices, memristor-based artificial neurons attract attention because of their simple structure, energy efficiency, and excellent scalability. However, memristor's non-reliability issues have been one of the main obstacles for the development of memristor-based artificial neurons and neuromorphic computings. Here, we show a memristor 1R cross-bar array without transistor devices for individual memristor access with low variation, 100% yield, large dynamic range, and fast speed for artificial neuron and neuromorphic computing. Based on the developed memristor, we experimentally demonstrate a memristor-based neuron with leaky-integrate and fire property with excellent reliability. Furthermore, we develop a neuro-memristive computing system based on the short-term memory effect of the developed memristor for efficient processing of sequential data. Our neuro-memristive computing system successfully trains and generates bio-medical sequential data (antimicrobial peptides) while using a small number of training parameters. Our results open up the possibility of memristor-based artificial neurons and neuromorphic computing systems, which are essential for energy-efficient edge computing devices.
神经形态计算是一种受大脑启发的计算范例,它能够实现节能且快速的人工神经网络。为了处理信息,神经形态计算直接模拟人脑内生物神经元的运作。为了用电子设备有效地模拟生物神经元,基于忆阻器的人工神经元因其结构简单、能效高和出色的可扩展性而受到关注。然而,忆阻器的不可靠问题一直是基于忆阻器的人工神经元和神经形态计算发展的主要障碍之一。在这里,我们展示了一种无晶体管器件的 1R 交叉阵列忆阻器,用于对单个忆阻器进行访问,具有低变化、100%合格率、大动态范围和快速速度,可用于人工神经元和神经形态计算。基于所开发的忆阻器,我们实验演示了具有漏电积分和点火特性的基于忆阻器的神经元,具有出色的可靠性。此外,我们基于所开发忆阻器的短期记忆效应,开发了一种神经忆阻计算系统,用于高效处理顺序数据。我们的神经忆阻计算系统在使用少量训练参数的情况下成功地训练和生成生物医学顺序数据(抗菌肽)。我们的结果为基于忆阻器的人工神经元和神经形态计算系统开辟了可能性,这对于节能的边缘计算设备至关重要。