Synaptic Transistor with Multiple Biological Function Based on Metal-Organic Frameworks Combined with LIF Model of Spiking Neural Network to Recognize Temporal Information

Author:

Wen Zhen1ORCID,Wang Qinan2,Zhao Chun2,Sun Yi2,Xu Rongxuan2,Li Chenran2,Wang Chengbo2,Liu Web2,Gu Jiangmin2,Shi Yingli2,Yang Li2,Tu Xin3,Gao Hao4

Affiliation:

1. Soochow University

2. Xi'an Jiaotong-Liverpool University

3. University of Liverpool

4. Eindhoven University of Technology

Abstract

Abstract Spike neural networks (SNNs) have immense potential due to their utilization of synaptic plasticity and ability to take advantage of temporal correlation and low power consumption. The leaky integration and firing (LIF) model and spike-timing-dependent plasticity (STDP) are the fundamental components of SNNs. Here, the neural device is first demonstrated by zeolitic imidazolate frameworks (ZIFs) as an essential part of the synaptic transistor to simulate SNNs. Significantly, three kinds of typical functions between neurons, the memory function achieved through the hippocampus, synaptic weight regulation and membrane potential triggered by ion migration, are effectively described through the short-term memory/long-term memory (STM/LTM), long-term depression/long-term potentiation (LTD/LTP) and LIF, respectively. Further, the update rule of iteration weight in the backpropagation based on the time interval between pre-synaptic and post-synaptic pulses is extracted and fitted from the STDP. Besides, the post-synaptic currents of the channel directly connect to the Very Large Scale Integration (VLSI) implementation of the LIF mode that can convert high-frequency information into spare pulses based on the threshold of membrane potential. The leaky integrator block, firing/detector block and frequency adaption block instantaneously release the accumulated voltage to form pulses. Finally, we recode the Steady-State Visual Evoked Potentials (SSVEP) belonging to the electroencephalogram (EEG) with filter characteristics of LIF. SNNs deeply fused by synaptic transistors are designed to recognize the 40 different frequencies of EEG and improve accuracy to 95.1%. This work represents an advanced contribution to brain-like chips and promotes the systematization and diversification of artificial intelligence.

Publisher

Research Square Platform LLC

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