Litcius/Paper detail

Reservoir computing with solitons

Nuno A. Silva, Tiago D. Ferreira, Ariel Guerreiro

2021New Journal of Physics45 citationsDOIOpen Access PDF

Abstract

Abstract Reservoir computing is a promising framework that facilitates the approach to physical neuromorphic hardware by enabling a given nonlinear physical system to act as a computing platform. In this work, we exploit this paradigm to propose a versatile and robust soliton-based computing system using a discrete soliton chain as a reservoir. By taking advantage of its tunable governing dynamics, we show that sufficiently strong nonlinear dynamics allows our soliton-based solution to perform accurate regression and classification tasks of non-linear separable datasets. At a conceptual level, the results presented pave a way for the physical realization of novel hardware solutions and have the potential to inspire future research on soliton-based computing using various physical platforms, leveraging its ubiquity across multiple fields of science, from nonlinear optical media to quantum systems.

Topics & Concepts

ExploitPhysicsRealization (probability)Physical systemNonlinear systemSolitonNeuromorphic engineeringReservoir computingSeparable spaceUnconventional computingComputational scienceTheoretical computer scienceComputer engineeringDistributed computingComputer scienceArtificial intelligenceArtificial neural networkQuantum mechanicsMathematicsComputer securityStatisticsMathematical analysisRecurrent neural networkNeural Networks and Reservoir ComputingAdvanced Memory and Neural ComputingOptical Network Technologies