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Self-Boosting Effect-based Electrochemical RAM with a-IGZO TFT for Highly Energy-Efficient Neural Network Computation

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DataCite Commons2024-10-08 更新2025-04-16 收录
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https://ieee-dataport.org/documents/self-boosting-effect-based-electrochemical-ram-igzo-tft-highly-energy-efficient-neural
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We present a self-boosting effect-based electrochemical random-access memory (SB-ECRAM), composed of an amorphous indium gallium zinc oxide thin-film transistor (a-IGZO TFT) and an electrochemical random-access memory (ECRAM) connected in series, which demonstrates significantly enhanced performance. With a 8-fold increase in programming characteristics and 483-fold improvement in update energy efficiency compared to standard ECRAM, the SB-ECRAM effectively reduces noise in vector-matrix multiplication (VMM) and achieves exceptional half-bias selectivity for the vector-vector outer product (VVOP) in neural networks. Moreover, training simulations on the MNIST dataset indicated a test accuracy of 97.39%, which is comparable to the floating-point baseline. 
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IEEE DataPort
创建时间:
2024-10-08
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