Publication | Closed Access
Analog–Digital Hybrid Memristive Devices for Image Pattern Recognition with Tunable Learning Accuracy and Speed
51
Citations
49
References
2019
Year
Artificial Sensory SystemsX MemristorEngineeringNeural Networks (Machine Learning)Recognition SystemIntegrated CircuitsNeurochipSocial SciencesElectronic DevicesNeuromorphic EngineeringNeuromorphic DevicesTunable Learning AccuracyNeurocomputersElectrical EngineeringComputer EngineeringSchottky BarrierNeural Networks (Computational Neuroscience)Electronic MaterialsImage Pattern RecognitionComputational NeuroscienceNeuroscienceBrain-like Computing
Abstract Brain‐inspired memristive artificial neural networks (ANNs) have been identified as a promising technology for pattern recognition tasks. To optimize the performance of ANNs in various applications, a recognition system with tunable accuracy and speed is highly desirable. A single WO 3− x ‐based memristor is presented in which analog and digital resistive switching (A‐RS and D‐RS) coexist according to a selectively executed forming process. The A‐RS and D‐RS mechanisms can be attributed to the modulation of the Schottky barrier on the interface and the formation/rupture of conducting filaments inside the film, respectively. More importantly, a new analog–digital hybrid ANN is developed based on the coexistence of A‐RS and D‐RS in the WO 3− x memristor, enabling tunable learning accuracy and speed in pattern recognition. The spike‐timing‐dependent plasticity learning rules, as a learning base for image pattern recognition, are demonstrated using A‐RS and D‐RS devices with obviously different fluctuations and rates of change. The learning accuracy/speed can be improved by increasing the proportion of A‐RS/D‐RS in the crossbar array. A convenient method is provided for selecting an optimized pattern recognition scheme to meet different application situations.
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