Stochastic CBRAM-Based Neuromorphic Time Series Prediction System.

JETC(2017)

引用 6|浏览96
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摘要
In this research, we present a Conductive-Bridge RAM (CBRAM)-based neuromorphic system which efficiently addresses time series prediction. We propose a new (i) voltage-mode, stochastic, multiweight synapse circuit based on experimental bi-stable CBRAM devices, (ii) a voltage-mode neuron circuit based on the concept of charge sharing, and (iii) an optimized training methodology powered by a stochastic implementation of the Least-Mean-Squares (SLMS) training rule. To validate the proposed design, we use time series prediction for short-term electrical load forecasting in smart grids. Our system is able to forecast hourly electrical loads with a mean accuracy of 96%, an estimated power dissipation of 15 μW, and area of 14.5 μm2 at 65 nm CMOS technology.
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关键词
Neural networks,stochastic logic,memristor,CBRAM,time series prediction
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