论文标题
使用拉格朗日描述量量化混乱
Quantifying chaos using Lagrangian descriptors
论文作者
论文摘要
我们介绍并验证简单有效的方法,以在短时间尺度上从Lagrangian描述符(LDS)计算中估算低维动力系统中轨道的混沌性。提出了两个数量,用于确定系统相空间中轨道的混沌或规则性质,这些轨道基于这些轨道和附近的轨道的值:相邻轨道的LDS的差异(DNLD)和比率(RNLD)。我们发现,通常,这些指标能够正确地表征轨道的混乱或规则性质,比实施较小的对齐指数(SALI)方法获得的结果比90%的一致,这是一种已建立的混乱检测技术。进一步研究了两个引入数量的性能,我们讨论了总体整合时间和所使用的邻近轨道之间的间隔对方法准确性的影响,发现即使是典型的短时间,粗网格LD计算也足以提供与SALI相比,使用更少的CPU时间,可以提供可靠的系统的Chaotic组件的可靠量化。除了量化混乱之外,引入的指标还能揭示有关系统局部和全局混沌相空间结构的细节。我们的发现清楚地表明,LDS也可以用来量化和研究连续和离散的低维动力系统中的混乱。
We present and validate simple and efficient methods to estimate the chaoticity of orbits in low dimensional dynamical systems from computations of Lagrangian descriptors (LDs) on short time scales. Two quantities are proposed for determining the chaotic or regular nature of orbits in a system's phase space, which are based on the values of the LDs of these orbits and of nearby ones: The difference (DNLD) and ratio (RNLD) of neighboring orbits' LDs. We find that, typically, these indicators are able to correctly characterize the chaotic or regular nature of orbits to better than 90 % agreement with results obtained by implementing the Smaller Alignment Index (SALI) method, which is a well established chaos detection technique. Further investigating the performance of the two introduced quantities we discuss the effects of the total integration time and of the spacing between the used neighboring orbits on the accuracy of the methods, finding that even typical short time, coarse grid LD computations are sufficient to provide a reliable quantification of a system's chaotic component, using less CPU time than the SALI. In addition to quantifying chaos, the introduced indicators have the ability to reveal details about the systems' local and global chaotic phase space structure. Our findings clearly suggest that LDs can also be used to quantify and investigate chaos in continuous and discrete low dimensional dynamical systems.