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Diffusive Memristors with Uniform and Tunable Relaxation Time for Spike Generation in Event‐Based Pattern Recognition

Fan Ye, Fatemeh Kiani, Yi Huang, Qiangfei Xia

2022Advanced Materials43 citationsDOI

Abstract

A diffusive memristor is a promising building block for brain-inspired computing hardware. However, the randomness in the device relaxation dynamics limits the wide-range adoption of diffusive memristors in large arrays. In this work, the device stack is engineered to achieve a much-improved uniformity in the relaxation time (standard deviation σ reduced from ≈12 to ≈0.32 ms). The memristor is further connected with a resistor or a capacitor and the relaxation time is tuned between 1.13 µs and 1.25 ms, ranging from three orders of magnitude. The hierarchy of time surfaces (HOTS) algorithm, to utilize the tunable and uniform relaxation behavior for spike generation, is implemented. An accuracy of 77.3% is achieved in recognizing moving objects in the neuromorphic MNIST (N-MNIST) dataset. The work paves the way for building emerging neuromorphic computing hardware systems with ultralow power consumption.

Topics & Concepts

Neuromorphic engineeringMNIST databaseMemristorMaterials scienceSpike (software development)Relaxation (psychology)MemistorComputer scienceElectronic engineeringOptoelectronicsArtificial neural networkResistive random-access memoryArtificial intelligenceVoltageElectrical engineeringEngineeringSoftware engineeringPsychologySocial psychologyAdvanced Memory and Neural ComputingNeural dynamics and brain functionPhotoreceptor and optogenetics research
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