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Dynamic memristor-based reservoir computing for high-efficiency temporal signal processing

Ya‐Nan Zhong, Jianshi Tang, Xinyi Li, Bin Gao, He Qian, Huaqiang Wu

2021Nature Communications576 citationsDOIOpen Access PDF

Abstract

Reservoir computing is a highly efficient network for processing temporal signals due to its low training cost compared to standard recurrent neural networks, and generating rich reservoir states is critical in the hardware implementation. In this work, we report a parallel dynamic memristor-based reservoir computing system by applying a controllable mask process, in which the critical parameters, including state richness, feedback strength and input scaling, can be tuned by changing the mask length and the range of input signal. Our system achieves a low word error rate of 0.4% in the spoken-digit recognition and low normalized root mean square error of 0.046 in the time-series prediction of the Hénon map, which outperforms most existing hardware-based reservoir computing systems and also software-based one in the Hénon map prediction task. Our work could pave the road towards high-efficiency memristor-based reservoir computing systems to handle more complex temporal tasks in the future.

Topics & Concepts

Reservoir computingComputer scienceProcess (computing)Artificial neural networkSIGNAL (programming language)Signal processingTask (project management)Range (aeronautics)Computer engineeringParallel computingComputer hardwareRecurrent neural networkArtificial intelligenceDigital signal processingOperating systemEconomicsManagementMaterials scienceProgramming languageComposite materialAdvanced Memory and Neural ComputingNeural Networks and Reservoir ComputingNeural dynamics and brain function