Gu Shuting, Zhou Xiang
School of Mathematical Sciences, South China Normal University, Guangzhou 510631, People's Republic of China.
School of Data Science and Department of Mathematics,City University of Hong Kong, Tat Chee Ave., Kowloon, Hong Kong.
Chaos. 2018 Dec;28(12):123106. doi: 10.1063/1.5046819.
The gentlest ascent dynamics (GAD) [W. E and X. Zhou, Nonlinearity , 1831 (2011)] is a time continuous dynamics to efficiently locate saddle points with a given index by coupling the position and direction variables together. These saddle points play important roles in the activated process of randomly perturbed dynamical systems. For index-1 saddle points in non-gradient systems, the GAD requires two direction variables to approximate, respectively, the eigenvectors of the Jacobian matrix and its transposed matrix. In the particular case of gradient systems, the two direction variables are equal to the single minimum mode of the Hessian matrix. In this note, we present a simplified GAD which only needs one direction variable even for non-gradient systems. This new method not only reduces the computational cost for the direction variable by half but also avoids inconvenient transpose operation of the Jacobian matrix. We prove the same convergence property for the simplified GAD as that for the original GAD. The motivation of our simplified GAD is the formal analogy with Hamilton's equation governing the noise-induced exit dynamics. Several non-gradient examples are presented to demonstrate our method, including a two dimensional model and the Allen-Cahn equation in the presence of shear flow.
最平缓上升动力学(GAD)[W. E和X. Zhou,《非线性》,1831(2011)]是一种时间连续动力学,通过将位置变量和方向变量耦合在一起,有效地定位具有给定指标的鞍点。这些鞍点在随机扰动动力系统的激活过程中起着重要作用。对于非梯度系统中的1指标鞍点,GAD需要两个方向变量分别近似雅可比矩阵及其转置矩阵的特征向量。在梯度系统的特殊情况下,这两个方向变量等于海森矩阵的单个最小模式。在本笔记中,我们提出了一种简化的GAD,即使对于非梯度系统,它也只需要一个方向变量。这种新方法不仅将方向变量的计算成本降低了一半,而且避免了雅可比矩阵不方便进行的转置操作。我们证明了简化GAD与原始GAD具有相同的收敛性质。我们简化GAD的动机是与控制噪声诱导退出动力学的哈密顿方程形式上的类比。给出了几个非梯度例子来证明我们的方法,包括一个二维模型和存在剪切流时的艾伦 - 卡恩方程。