An Artificial Neural Network Based on Oxide Synaptic Transistor for Accurate and Robust Image Recognition

oleh: Dongyue Su, Xiaoci Liang, Di Geng, Qian Wu, Baiquan Liu, Chuan Liu

Format: Article
Diterbitkan: MDPI AG 2024-03-01

Deskripsi

Synaptic transistors with low-temperature, solution-processed dielectric films have demonstrated programmable conductance, and therefore potential applications in hardware artificial neural networks for recognizing noisy images. Here, we engineered AlO<sub>x</sub>/InO<sub>x</sub> synaptic transistors via a solution process to instantiate neural networks. The transistors show long-term potentiation under appropriate gate voltage pulses. The artificial neural network, consisting of one input layer and one output layer, was constructed using 9 × 3 synaptic transistors. By programming the calculated weight, the hardware network can recognize 3 × 3 pixel images of characters z, v and n with a high accuracy of 85%, even with 40% noise. This work demonstrates that metal-oxide transistors, which exhibit significant long-term potentiation of conductance, can be used for the accurate recognition of noisy images.