4.8 Article

Linear Classification Function Emulated by Pectin-Based Polysaccharide-Gated Multiterminal Neuron Transistors

期刊

ADVANCED FUNCTIONAL MATERIALS
卷 31, 期 33, 页码 -

出版社

WILEY-V C H VERLAG GMBH
DOI: 10.1002/adfm.202102015

关键词

artificial neurons; electric double layer transistors; linear classification; multi-terminal neuromorphic devices

资金

  1. National Natural Science Foundation of China [61904208, 91833301]

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Neuromorphic computing, merging learning and memory functions, surpasses traditional von Neumann architecture. By simulating neurons' multi-input signal integration, the efficiency of neuromorphic computing is enhanced. The artificial neuron proposed in this work shows promise in improving artificial neural networks' efficiency, playing a crucial role in neuromorphic computing.
Neuromorphic computing, which merges learning and memory functions, is a new computing paradigm surpassing traditional von Neumann architecture. Apart from the plasticity of artificial synapses, the simulation of neurons' multi-input signal integration is also of great significance to realize efficient neuromorphic computing. Since the structure of transistors and neurons is strikingly similar, capacitively coupled multi-terminal pectin-gated oxide electric double layer transistors are proposed here as artificial neurons for classification. In this work, the free logic switching of AND and OR is realized in the device with triple in-plane gates. More importantly, the linear classification function on a single neuron transistor is demonstrated experimentally for the first time. All the results obtained in this work indicate that the prepared artificial neuron can improve the efficiency of artificial neural networks and thus will play an important role in neuromorphic computing.

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