Litcius/Paper detail

Neuromorphic Computing of Optoelectronic Artificial BFCO/AZO Heterostructure Memristors Synapses

Zhao-Yuan Fan, Zhenhua Tang, Junlin Fang, Yan‐Ping Jiang, Qiu‐Xiang Liu, Xin‐Gui Tang, Yichun Zhou, Ju Gao

2024Nanomaterials11 citationsDOIOpen Access PDF

Abstract

Compared with purely electrical neuromorphic devices, those stimulated by optical signals have gained increasing attention due to their realistic sensory simulation. In this work, an optoelectronic neuromorphic device based on a photoelectric memristor with a Bi2FeCrO6/Al-doped ZnO (BFCO/AZO) heterostructure is fabricated that can respond to both electrical and optical signals and successfully simulate a variety of synaptic behaviors, such as STP, LTP, and PPF. In addition, the photomemory mechanism was identified by analyzing the energy band structures of AZO and BFCO. A convolutional neural network (CNN) architecture for pattern classification at the Mixed National Institute of Standards and Technology (MNIST) was used and improved the recognition accuracy of the MNIST and Fashion-MNIST datasets to 95.21% and 74.19%, respectively, by implementing an improved stochastic adaptive algorithm. These results provide a feasible approach for future implementation of optoelectronic synapses.

Topics & Concepts

Neuromorphic engineeringMNIST databaseMemristorComputer scienceHeterojunctionOptoelectronicsConvolutional neural networkElectronic engineeringMaterials scienceArtificial neural networkArtificial intelligenceComputer architectureEngineeringAdvanced Memory and Neural ComputingTransition Metal Oxide NanomaterialsCCD and CMOS Imaging Sensors