Title :
Parallel state estimation assessment with practical data
Author :
Yousu Chen ; Shuangshuang Jin ; Rice, Matthew ; Zhenyu Huang
Author_Institution :
Battelle Seattle Res. Center, Pacific Northwest Nat. Lab., Seattle, WA, USA
Abstract :
This paper presents a parallel state estimation (PSE) implementation using a preconditioned conjugate gradient algorithm and an orthogonal decomposition-based algorithm. Preliminary tests against a commercial Energy Management System (EMS) State Estimation (SE) tool using real-world data are performed. The results show that while the preconditioned conjugate gradient algorithm can solve the SE problem faster with the help of parallel computing techniques, it might not be good for real-world data due to the large condition number of its gain matrix introduced by the wide range of measurement weights. With the help of PETSc package, the orthogonal decomposition-based PSE algorithm can achieve 5-20 times speedup comparing against the commercial EMS tool. It is very promising that the developed PSE can solve the SE problem for large power systems at the SCADA rate, to improve grid reliability.
Keywords :
SCADA systems; conjugate gradient methods; energy management systems; matrix algebra; parallel processing; power engineering computing; power system reliability; power system state estimation; EMS SE tool; PETSc package; PSE implementation; SCADA rate; commercial energy management system state estimation tool; gain matrix; grid reliability improvement; large power systems; measurement weights; orthogonal decomposition-based algorithm; parallel computing techniques; parallel state estimation assessment; preconditioned conjugate gradient algorithm; real-world data; supervisory control and data acquisition system; Energy management; Equations; Mathematical model; Power systems; Sparse matrices; State estimation; Vectors; Computing; High Performance; Orthogonal Decomposition; Preconditioned Conjugate Gradient; State Estimation;
Conference_Titel :
Power and Energy Society General Meeting (PES), 2013 IEEE
Conference_Location :
Vancouver, BC
DOI :
10.1109/PESMG.2013.6672742