Machine learning based on reservoir computing with time-delayed optoelectronic and photonic systems
Yanne K. Chembo
Abstract
The concept of reservoir computing emerged from a specific machine learning paradigm characterized by a three-layered architecture (input, reservoir, and output), where only the output layer is trained and optimized for a particular task. In recent years, this approach has been successfully implemented using various hardware platforms based on optoelectronic and photonic systems with time-delayed feedback. In this review, we provide a survey of the latest advances in this field, with some perspectives related to the relationship between reservoir computing, nonlinear dynamics, and network theory.
Topics & Concepts
Reservoir computingComputer sciencePhotonicsTask (project management)Nonlinear systemField (mathematics)ArchitectureDistributed computingComputer architectureArtificial intelligenceArtificial neural networkEngineeringMaterials scienceOptoelectronicsSystems engineeringRecurrent neural networkPhysicsPure mathematicsQuantum mechanicsArtMathematicsVisual artsNeural Networks and Reservoir ComputingOptical Network TechnologiesAdvanced Memory and Neural Computing