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Feed-forward neural network as nonlinear dynamics integrator for supercontinuum generation: erratum.

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    This summary is machine-generated.

    This erratum corrects a minor sign error in higher-order dispersion coefficients used in optical simulations. The correction does not alter the study's original findings or conclusions regarding optical phenomena.

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    Area of Science:

    • Optics and Photonics
    • Computational Physics

    Background:

    • Accurate modeling of optical phenomena requires precise parameter values.
    • Higher-order dispersion coefficients are critical for simulating light propagation in various media.

    Purpose of the Study:

    • To correct a previously published Letter regarding optical simulations.
    • To address an error in the sign of a higher-order dispersion coefficient.

    Main Methods:

    • Review and re-evaluation of simulation parameters.
    • Identification of an incorrect sign in a higher-order dispersion coefficient.

    Main Results:

    • A sign error in a higher-order dispersion coefficient was identified.
    • The simulations were re-verified with the corrected parameter.

    Conclusions:

    • The correction of the dispersion coefficient sign does not impact the original results.
    • The conclusions of the original Letter remain valid despite the erratum.