4.7 Article

A Microring as a Reservoir Computing Node: Memory/Nonlinear Tasks and Effect of Input Non-Ideality

Journal

JOURNAL OF LIGHTWAVE TECHNOLOGY
Volume 40, Issue 17, Pages 5917-5926

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JLT.2022.3183694

Keywords

Microcavities; Reservoirs; Resonant frequency; Task analysis; Training; Photonics; Pump lasers; Optical neural systems; neural networks; non- linear optics; integrated optics; silicon microresonators

Funding

  1. European Research Council (ERC) through the European Union [788793]
  2. MIUR through Project PRIN PELM [20177 PSCKT]
  3. European Research Council (ERC) [788793] Funding Source: European Research Council (ERC)

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The nonlinear response of an optical microresonator is utilized in a time multiplexed reservoir computing neural network to solve linear and nonlinear logic operations, showcasing its memory and nonlinearity capabilities.
The nonlinear response of an optical microresonator is used in a time multiplexed reservoir computing neural network. Within a virtual node approach combined with an offline training through ridge regression, we solved linear and nonlinear logic operations. We analyzed the nonlinearity of the microresonator as a memory between bits and/or as a neural activation function. This is made possible by controlling both the distance between bits subject to the logical operation and the number of bits supplied to the ridge regression. We show that the optical microresonator exhibits up to two bits of memory in linear tasks and that it allows solving nonlinear tasks providing both memory and nonlinearity. Finally, we demonstrate that the virtual node approach always requires a comparison of the reservoirs performance with the results obtained by applying the same training process on the input signal.

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