Bottom Up Construction and 2:1 Balance Refinement of Linear Octrees in Parallel

Loading...
Thumbnail Image

Embargo Date

Related Collections

Degree type

Discipline

Subject

linear octrees
balance refinement
Morton encoding
large scale parallel computing
space filling curves

Funder

Grant number

License

Copyright date

Distributor

Related resources

Author

Sundar, Hari
Sampath, Rahul S

Contributor

Abstract

In this article, we propose new parallel algorithms for the construction and 2:1 balance refinement of large linear octrees on distributed memory machines. Such octrees are used in many problems in computational science and engineering, e.g., object representation, image analysis, unstructured meshing, finite elements, adaptive mesh refinement, and N-body simulations. Fixed-size scalability and isogranular analysis of the algorithms using an MPI-based parallel implementation was performed on a variety of input data and demonstrated good scalability for different processor counts (1 to 1024 processors) on the Pittsburgh Supercomputing Center's TCS-1 AlphaServer. The results are consistent for different data distributions. Octrees with over a billion octants were constructed and balanced in less than a minute on 1024 processors. Like other existing algorithms for constructing and balancing octrees, our algorithms have ϑ (N log N) work and ϑ (N) storage complexity. Under reasonable assumptions on the distribution of octants and the work per octant, the parallel time complexity is ϑ (N/np log np log(N/np) + np log np), where N is the size of the final linear octree and np is the number of processors.

Advisor

Date Range for Data Collection (Start Date)

Date Range for Data Collection (End Date)

Digital Object Identifier

Series name and number

Publication date

2008-08-06

Journal title

Volume number

Issue number

Publisher

Publisher DOI

Journal Issues

Comments

Copyright SIAM, 2008. Reprinted in SIAM Journal on Computing, Volume 30, Issue 5, August 2008, pages 2675–2708.

Recommended citation

Collection