Title :
Scalable cellular computational network based WLS state estimator for power systems
Author :
Rahman, Ashfaqur ; Venayagamoorthy, Ganesh Kumar
Author_Institution :
Dept. of Electr. & Comput. Eng., Clemson Univ., Clemson, SC, USA
Abstract :
Modern interconnected electric power systems are made up of a large number of buses to meet the demand of electricity across large geographical distances. The large number of buses and interconnections across multiple areas result in a complex network and cause an increase in computational requirements on the processor. In order to meet the requirements of this increased complexity for state estimation, distributed estimation is getting attention nowadays. A new approach based on Cellular Computational Network (CCN) for static state estimation is proposed to overcome the computational demand of large power networks in general. The CCN architecture requires a cell at every bus where the states need to be estimated. A cell uses locally available information to estimate voltage magnitude and angle of its bus. The cells exploit output information of other cells in some electrical proximity prior to computing the outputs for next time step. Beside the promise of scalability of the CCN architecture, a fully observable system for state estimation and other applications can be realized. As the traditional estimators take all the measurements at a time and executes the estimation, missing some of the measurements may cause it to loose observability. In this paper, CCN based architecture is implemented with the popular Weighted Least Square (WLS) estimator on nonlinear power flow equations to estimate off-line data. Through simulation, the scalability and observability of the CCN based framework is investigated.
Keywords :
computational complexity; least squares approximations; load flow; nonlinear equations; power system interconnection; power system state estimation; CCN architecture; WLS state estimator; cellular computational network; computational complexity; computational demand; distributed estimation; electrical proximity; interconnected electric power systems; nonlinear power flow equations; power networks; static state estimation; voltage magnitude; weighted least square estimator; Computer architecture; Estimation; Microprocessors; Power systems; Time measurement; Transmission line measurements; Voltage measurement; Cellular computational network; and weighted least square estimator; nonlinear power flow; observability; scalability;
Conference_Titel :
Power Systems Conference (PSC), 2015 Clemson University
Conference_Location :
Clemson, SC
DOI :
10.1109/PSC.2015.7101702