This paper describes our experience with developing a parallel weighted- least-square (WLS) state estimation (SE) program for shared-memory parallel computers. Since the key computational kernel of the WLS algorithm based on the Newton-Raphson approach is a solver of sparse linear equations, a significant part of our effort was focused on selecting, implementing and evaluating this algorithm. An optimized shared memory version of the conjugate gradient (CG) algorithm was found to be competitive to state-of-the-art implementation of LU solvers for the SE problem on the SGI Altix, a shared memory architecture. We also ported the full SE algorithm including CG to the Cray MTA-2 shared memory multithreaded architecture and investigated its performance.
Revised: August 1, 2008 |
Published: December 3, 2008
Citation
Nieplocha J., D. ChavarrÃa-Miranda, V. Tipparaju, Z. Huang, and A. Marquez. 2008.A parallel WLS state estimator on shared memory computers. In Proceedings of The 8th International Power Engineering Conference, IPEC 2007, 395-400. Piscataway, New Jersey:IEEE.PNNL-SA-57075.