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Physical Reservoir Computing Based on Nanoscale Materials and Devices

Zhiying Qi, Linjie Mi, Haoran Qian, Weiguo Zheng, Yao Guo, Yang Chai

2023Advanced Functional Materials59 citationsDOIOpen Access PDF

Abstract

Abstract Bioinspired computation systems can achieve artificial intelligence, bypassing fundamental bottlenecks and cost constraints. Computational frameworks suited for temporal/sequential data processing such as recurrent neural networks (RNNs) suffer from problems of high complexity and low efficiency. Physical systems assembled with nanoscale materials and devices represent as an alternative route to serve as the core component for physically implanted reservoir computing. In this review, an overview of the development of the paradigm of physical reservoir computing (PRC) is provided and the typical physical reservoirs constructed with nanomaterials and nanodevices are described. The physical reservoirs based on multiple nanomaterials overcome the problems of RNN, show strong robustness, and effectively deal with tasks with improved reliability and availability. Finally, the challenges and perspectives of nanomaterial and nanodevice‐based PRC as a component of next‐generation machine learning systems are discussed.

Topics & Concepts

NanodeviceReservoir computingRobustness (evolution)Computer scienceComponent (thermodynamics)ComputationNanomaterialsNanotechnologyDistributed computingMaterials scienceArtificial neural networkArtificial intelligenceRecurrent neural networkAlgorithmChemistryThermodynamicsPhysicsGeneBiochemistryNeural Networks and Reservoir ComputingAdvanced Memory and Neural Computing
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