A midpoint projection algorithm for stochastic differential equations on manifolds
Stochastic differential equations projected onto manifolds occur in physics, chemistry, biology, engineering, nanotechnology and optimization, with interdisciplinary applications. Intrinsic coordinate stochastic equations on the manifold are often computationally impractical, and numerical projectio...
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Zusammenfassung: | Stochastic differential equations projected onto manifolds occur in physics,
chemistry, biology, engineering, nanotechnology and optimization, with
interdisciplinary applications. Intrinsic coordinate stochastic equations on
the manifold are often computationally impractical, and numerical projections
are useful in many cases. We show that the Stratonovich interpretation of the
stochastic calculus is obtained using adiabatic elimination with a constraint
potential. We derive intrinsic stochastic equations for spheroidal and
hyperboloidal surfaces for comparison purposes, and review some earlier
projection algorithms. In this paper, a combined midpoint projection algorithm
is proposed that uses a midpoint projection onto a tangent space, combined with
a subsequent normal projection to satisfy the constraints. Numerical examples
are given for a range of manifolds, including circular, spheroidal,
hyperboloidal, and catenoidal cases, as well as higher-order polynomial
constraints and a ten-dimensional hypersphere. We show that in all cases the
combined midpoint method has greatly reduced errors compared to methods using a
combined Euler projection approach or purely tangential projection. Our
technique can handle multiple constraints. This allows manifolds that embody
several conserved quantities. The algorithm is accurate, simple and efficient.
An order of magnitude error reduction in diffusion distance is typically found
compared to the other methods, with reductions of several orders of magnitude
in constraint errors. |
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DOI: | 10.48550/arxiv.2112.03391 |