Ling Yixin, Yu Lejian, Guo Ziwen, Bian Fazhou, Wang Yanqiong, Wang Xin, Hou Yaqi, Hou Xu
State Key Laboratory of Physical Chemistry of Solid Surfaces, College of Chemistry and Chemical Engineering, Xiamen University, Xiamen 361005, China.
Institute of Artificial Intelligence, Xiamen University, Xiamen 361005, China.
J Am Chem Soc. 2024 May 29;146(21):14558-14565. doi: 10.1021/jacs.4c01218. Epub 2024 May 16.
The biological neural network is a highly efficient in-memory computing system that integrates memory and logical computing functions within synapses. Moreover, reconfiguration by environmental chemical signals endows biological neural networks with dynamic multifunctions and enhanced efficiency. Nanofluidic memristors have emerged as promising candidates for mimicking synaptic functions, owing to their similarity to synapses in the underlying mechanisms of ion signaling in ion channels. However, realizing chemical signal-modulated logic functions in nanofluidic memristors, which is the basis for brain-like computing applications, remains unachieved. Here, we report a single-pore nanofluidic logic memristor with reconfigurable logic functions. Based on the different degrees of protonation and deprotonation of functional groups on the inner surface of the single pore, the modulation of the memristors and the reconfiguration of logic functions are realized. More noteworthy, this single-pore nanofluidic memristor can not only avoid the average effects in multipore but also act as a fundamental component in constructing complex neural networks through series and parallel circuits, which lays the groundwork for future artificial nanofluidic neural networks. The implementation of dynamic synaptic functions, modulation of logic gates by chemical signals, and diverse combinations in single-pore nanofluidic memristors opens up new possibilities for their applications in brain-inspired computing.
生物神经网络是一种高效的内存计算系统,它在突触内集成了存储和逻辑计算功能。此外,通过环境化学信号进行重新配置赋予了生物神经网络动态多功能性和更高的效率。纳米流体忆阻器因其在离子通道中离子信号传导的潜在机制与突触相似,已成为模拟突触功能的有前途的候选者。然而,在纳米流体忆阻器中实现化学信号调制的逻辑功能(这是类脑计算应用的基础)仍然没有实现。在此,我们报道了一种具有可重构逻辑功能的单孔纳米流体逻辑忆阻器。基于单孔内表面官能团不同程度的质子化和去质子化,实现了忆阻器的调制和逻辑功能的重新配置。更值得注意的是,这种单孔纳米流体忆阻器不仅可以避免多孔中的平均效应,还可以作为通过串联和并联电路构建复杂神经网络的基本组件,为未来的人工纳米流体神经网络奠定基础。单孔纳米流体忆阻器中动态突触功能的实现、化学信号对逻辑门的调制以及多样组合,为其在受脑启发计算中的应用开辟了新的可能性。