Published on 01 January 2016
Solving the stochastic Burgers equation with a sensitivity derivative-driven Monte Carlo method
View DatasetDescription
Code to solve a 1D stochastic viscous Burgers equation using a sensitivity derivative-driven Monte Carlo method. A Docker image is provided that can run all of the included code.
This code generates the figures shown in the paper: Accelerating Monte Carlo estimation with derivatives of high-level finite element models, P. Hauseux, J.S. Hale, S.P.A. Bordas. 1 May 2017. 318, pp. 917-936. Computer Methods in Applied Mechanics and Engineering.http://dx.doi.org/10.1016/j.cma.2017.01.041http://hdl.handle.net/10993/28618This figshare repository is for archival purposes. It is easiest to use the code and image directly from the Bitbucket and Dockerhub repositories shown in the References section below. Full instructions are given in the README.md file inside the code archive file.
The code is licensed under the LGPL v3.0.
The Docker image contains binaries for a variety of open source software. All software binaries in the container were compiled from unmodified sources from the project originators.
Citations (2)
Cited on 25 May 2018
Weight: 1.36
Cited on 09 February 2017
Weight: 1.23
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Publication Details
Subfield
Computational Mechanics
Field
Engineering
Domain
Physical Sciences
Confidence Score
45%
Source
Scholar Data Model