NANANov 26, 2017

Ordered Line Integral Methods for Computing the Quasi-potential

arXiv:1706.0750932 citationsh-index: 13
Originality Incremental advance
AI Analysis

Provides a faster and more accurate numerical method for computing quasi-potentials, which are critical for analyzing rare events and invariant distributions in stochastic dynamics.

The paper introduces Ordered Line Integral Methods (OLIMs) for computing the quasi-potential in stochastic non-gradient dynamical systems, achieving 1.5–4× speedup and 2–3 orders of magnitude lower error compared to the prior Ordered Upwind Method.

The quasi-potential is a key function in the Large Deviation Theory. It characterizes the difficulty of the escape from the neighborhood of an attractor of a stochastic non-gradient dynamical system due to the influence of small white noise. It also gives an estimate of the invariant probability distribution in the neighborhood of the attractor up { to} the exponential order. We present a new family of methods for computing the quasi-potential on a regular mesh named the Ordered Line Integral Methods (OLIMs). In comparison with the first proposed quasi-potential finder based on the Ordered Upwind Method (OUM) (Cameron, 2012), the new methods are 1.5 to 4 times faster, can produce error two to three orders of magnitude smaller, and may exhibit faster convergence. Similar to the OUM, OLIMs employ the dynamical programming principle. Contrary to it, they (i) have an optimized strategy for the use of computationally expensive { triangle} updates leading to a notable speed-up, and (ii) directly solve local minimization problems using quadrature rules instead of solving the corresponding Hamilton-Jacobi-type equation by the first order finite difference upwind scheme. The OLIM with the right-hand quadrature rule is equivalent to OUM. The use of higher order quadrature rules in local minimization problems dramatically boosts up the accuracy of OLIMs. We offer a detailed discussion on the origin of numerical errors in OLIMs and propose rules-of-thumb for the choice of the important parameter, the update factor, in the OUM and OLIMs. Our results are supported by extensive numerical tests on two challenging 2D examples.

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