Abstract
This paper presents a new algorithm of parameter and state estimation based on the Modified Cooperative Particle Swarm Optimization (MCPSO). Through modern control theory, the convergence and parameters setting rule of the algorithm is analyzed and a good optimization performance is shown from the given test functions. By minimizing the estimation states error covariance matrix for canonical state space models, the system states are computed by using the estimated parameters. Finally, a valuable simulation example is provided to show the validity and robustness of the new proposed algorithm.
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