de Boer Jeroen J, Ehrler Bruno
Center for Nanophotonics, AMOLF, 1098 XG, Amsterdam, The Netherlands.
Mater Horiz. 2025 Apr 14;12(8):2701-2708. doi: 10.1039/d4mh01729c.
Hardware neural networks could perform certain computational tasks orders of magnitude more energy-efficiently than conventional computers. Artificial neurons are a key component of these networks and are currently implemented with electronic circuits based on capacitors and transistors. However, artificial neurons based on memristive devices are a promising alternative, owing to their potentially smaller size and inherent stochasticity. But despite their promise, demonstrations of memristive artificial neurons have so far been limited. Here we demonstrate a fully on-chip artificial neuron based on microscale electrodes and halide perovskite semiconductors as the active layer. By connecting a halide perovskite memristive device in series with a capacitor, the device demonstrates stochastic leaky integrate-and-fire behavior, with an energy consumption of 20 to 60 pJ per spike, lower than that of a biological neuron. We simulate populations of our neuron and show that the stochastic firing allows the detection of sub-threshold inputs. The neuron can easily be integrated with previously-demonstrated halide perovskite artificial synapses in energy-efficient neural networks.
硬件神经网络执行某些计算任务时,能效可比传统计算机高几个数量级。人工神经元是这些网络的关键组件,目前通过基于电容器和晶体管的电子电路来实现。然而,基于忆阻器件的人工神经元是一种很有前景的替代方案,因为它们可能具有更小的尺寸和固有的随机性。尽管它们很有前景,但迄今为止,忆阻人工神经元的演示仍很有限。在此,我们展示了一种基于微尺度电极和卤化物钙钛矿半导体作为有源层的全片上人工神经元。通过将卤化物钙钛矿忆阻器件与一个电容器串联,该器件表现出随机泄漏积分激发行为,每个脉冲的能耗为20至60皮焦耳,低于生物神经元。我们对我们的神经元群体进行了模拟,并表明随机放电允许检测亚阈值输入。该神经元可以很容易地与先前展示的卤化物钙钛矿人工突触集成在节能神经网络中。