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Parameters identification of nonlinear state space model of synchronous generator
Authors:Pangao Kou  Jianzhong Zhou  Changqing Wang  Han Xiao  Huifeng Zhang  Chaoshun Li
Affiliation:College of Hydroelectric Digitization Engineering, Huazhong University of Science and Technology, Wuhan 430074, China
Abstract:Synchronous generator (SG) modeling plays an important role in system planning, operation and post-disturbance analysis. This paper presents an improved algorithm named Particle Swarm Optimization with Quantum Operation (PSO–QO) to solve both offline and online parameters estimation problem for SG. First, the hybrid algorithm is proposed to increase the convergence speed and identification accuracy of the basic Particle Swarm Optimization (PSO). An illustrative example for parameters identification of SG is provided to confirm the validity, as compared with Linearly Decreasing Inertia Weight PSO (LDW-PSO), and the Quantum Particle Swarm Optimization (QPSO) in terms of parameter estimation accuracy and convergence speed. Second, PSO–QO is also improved to detect and determine parameters variation. In this case, a sentry particle is introduced to detect any changes in system parameters. Simulation results confirm that the proposed algorithm is a viable alternative for online parameters detection and parameters identification of SG.
Keywords:Parameters identification  Synchronous generator  State space model  Particle swarm optimization with quantum operation
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