New insight of time-transformed symplectic integrator I: hybrid methods for hierarchical triples
Long Wang

TL;DR
This paper introduces hybrid symplectic integrators, including a new method called BlogH, that improve the accuracy and efficiency of simulating hierarchical triple systems in astrophysics, addressing limitations of existing algorithms.
Contribution
The paper develops hybrid methods combining LogH and alternative integrators, and introduces BlogH, a more efficient, time-symmetric hybrid integrator for hierarchical triples.
Findings
Hybrid methods outperform LogH in accuracy for hierarchical triples.
BlogH eliminates time synchronization, improving efficiency.
Hybrid integrators enhance simulation performance of complex astrophysical systems.
Abstract
Accurate -body simulations of multiple systems such as binaries and triples are essential for understanding the formation and evolution of interacting binaries and binary mergers, including gravitational wave sources, blue stragglers and X-ray binaries. The logarithmic time-transformed explicit symplectic integrator (LogH), also known as algorithmic regularization, is a state-of-the-art method for this purpose.However, we show that this method is accurate for isolated Kepler orbits because of its ability to trace Keplerian trajectories, but much less accurate for hierarichal triple systems. The method can lead to an unphysical secular evolution of inner eccentricity in Kozal-Lidov triples, despite a small energy error. We demonstrate that hybrid methods, which apply LogH to the inner binary and alternative methods to the outer bodies, are significantly more effective, though not…
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Taxonomy
TopicsNumerical methods for differential equations · Electromagnetic Simulation and Numerical Methods · Modeling and Simulation Systems
