Spatially quasi-periodic bifurcations from periodic traveling water waves and a method for detecting bifurcations using signed singular values
Jon Wilkening, Xinyu Zhao

TL;DR
The paper introduces a novel method for detecting bifurcations using the signed smallest singular value of the Jacobian, applied to find complex quasi-periodic water waves with multiple spatial periods.
Contribution
A new bifurcation detection technique based on signed singular values, enabling precise localization of bifurcation points in complex water wave models.
Findings
Successfully identified quasi-periodic gravity and gravity-capillary waves.
Demonstrated the method's mesh independence and effectiveness in multi-parameter bifurcation analysis.
Extended solutions beyond linearization to explore complex wave structures.
Abstract
We present a method of detecting bifurcations by locating zeros of a signed version of the smallest singular value of the Jacobian. This enables the use of quadratically convergent root-bracketing techniques or Chebyshev interpolation to locate bifurcation points. Only positive singular values have to be computed, though the method relies on the existence of an analytic or smooth singular value decomposition (SVD). The sign of the determinant of the Jacobian, computed as part of the bidiagonal reduction in the SVD algorithm, eliminates slope discontinuities at the zeros of the smallest singular value. We use the method to search for spatially quasi-periodic traveling water waves that bifurcate from large-amplitude periodic waves. The water wave equations are formulated in a conformal mapping framework to facilitate the computation of the quasi-periodic Dirichlet-Neumann operator. We…
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Taxonomy
TopicsOcean Waves and Remote Sensing · Differential Equations and Numerical Methods
