Robust Eigensystem Assignment for State Estimators Using Second-Order Models
نویسنده
چکیده
A novel design of a state estimator is presented using second-order dynamic equations of mechanical systems. The eigenvalues and eigenvectors of the state estimator are assigned by solving the second-order eigenvalue problem of the structural system. Three design methods for the state estimator are given in this paper. The first design method uses collocated sensors to measure the desired signals and their derivatives. The second design method uses prefilters to shift signal phases to obtain estimates of the signal derivatives. These two methods are used to build a second-order state estimator model. The third design method is the conventional one that converts a typical second-order dynamic model to a first-order model and then builds a state estimator based on the first-order model. It is shown that all three design methods for state estimation are similar. A numerical example representing a large space structure is given for illustration of the design methods presented in this paper.
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