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arXiv:2210.17007 [math.AP]AbstractReferencesReviewsResources

Long time solutions for 1D cubic dispersive equations, Part II: the focusing case

Mihaela Ifrim, Daniel Tataru

Published 2022-10-31Version 1

This article is concerned with one dimensional dispersive flows with cubic nonlinearities on the real line. In a very recent work, the authors have introduced a broad conjecture for such flows, asserting that in the defocusing case, small initial data yields global, scattering solutions. Then this conjecture was proved in the case of a Schr\"odinger dispersion relation. In terms of scattering, our global solutions were proved to satisfy both global $L^6$ Strichartz estimates and bilinear $L^2$ bounds. Notably, no localization assumption is made on the initial data. In this article we consider the focusing scenario. There potentially one may have small solitons, so one cannot hope to have global scattering solutions in general. Instead, we look for long time solutions, and ask what is the time-scale on which the solutions exist and satisfy good dispersive estimates. Our main result, which also applies in the case of the Schr\"odinger dispersion relation, asserts that for initial data of size $\epsilon$, the solutions exist on the time-scale $\epsilon^{-8}$, and satisfy the desired $L^6$ Strichartz estimates and bilinear $L^2$ bounds on the time-scale $\epsilon^{-6}$. To the best of our knowledge, this is the first result to reach such a threshold.

Comments: 18 pages. This article relies substantially on the authors earlier paper arXiv:2205.12212, which considered the corresponding defocusing problem
Categories: math.AP
Subjects: 35Q55
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