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10 (1970) 17) V. Kucera: A Contribution to Matrix Ouadratic Equations, IEEE Trans. on Automatic Control, AC- 17-3, 344/347 (1972) 18) V. Kucera: On Nonnegative Definite Solutions to Matrix Ouadratic Equations, Automatica, 8, 413/ 423 (1972) 1) L. Ljung, T. Kailath and B. Friedlander: Scattering 20) T. Nishimura: Spectral Factorization in Discrete Theory and Linear Least Squares Estimation- Systems, Proc. IEEE Symp. on Adaptive Process, Part I; Continuous-Time Problems, Proc. IEEE, Decision and Control (1970) 64-1, 131/139 (1976) 21) L. Tartar: Sur I'Etude Directe d'equations non 2) T. Kailath: A View of Three Decades of Linear Lineaires Intervenant en Theorie du Controle Filtering Theory, IEEE Trans. on Information Optimal, Journal of Functional Analysis, 17-1, 1/ Theory, IT-20-2, 146/181 (1974) 47 (1974) 4) A.E. Bryson, Jr. and Y.C. Ho: Applied Optimal Control, John Wiley and Sons (1975) 23) T. Nishimura and H. Kano: Periodic Oscillations of Matrix Riccati Equations in Time-Invariant 5) R.S. Buoy and P.D. Joseph: Filtering for Stochastic Processes with Applications to Guidance, Systems, IEEE Trans. on Automatic Control, AC- Interscience Publishers (1968) 25-4, 749/755 (1980) 6) D.R. Vaughan: A Negative Exponential Solution for the Matrix Riccati Equation, IEEE Trans. on Automatic Control AC-14-1, 72/75 (1969) 7) T. Nishimura: On the Solution of Error Covariance Difference Equations by Means of Canonical Decomposition and z Transform, IEEE Trans. on Autonatic Control, AC-12-4, 471/472 (1967) 26) J.C. Willems: Least Squares Stationary Optimal Control and the Algebraic Riccati Equation, IEEE Trans. on Automatic Control, 16-6, 621/634 (1971) 27) T. Kailath and L. Ljung: The Asymptotic Behavior of Constant-Coefficient Riccati Differential 9) A.J. Laub: A Shur Method for Solving Algebraic Riccati Equations, IEEE Trans. on Automatic Equatios IEEE Trans. on Automatic Control, AC- 21-3, 385/388 (1976) Control, AC-24-6, 913/921 (1979) 10) B.D.O. Anderson: Second-order Convergent Algorithms for the Steady-state Riccati Equation, 28) G.A. Hewer: Periodicity, Detectability and the Matrix Riccati Equation, SIAM Journal on Control, 13-6, 1235/1251 (1975) International Journal of Control, 28-2, 295/306 29) T. Nishimura: Spectral Factorization in Periodic- (1978) ally Time-Varying Systems and Application to Navigation Problems, AIAA Journal of Spacecraft 12) J.E. Potter: Matrix Quadratic Solutions, Journal and Rockets, 9-7 (1972) of SIAM Applied Mathematics, 14, 496/501 (1966) 30) H. Kano and T. Nishimura: Periodic Solutions of 13) R.E. Kalman: Contributions to the Theory of Matrix Riccati Equations with Detectability and Optimal Control, Bol. Soc. Mat. Max., 5, 102/119 Stabilizability, International Journal of Control, 29-3, 471/487 (1978) (1961) 14) R.E. Kalman: New Methods and Results in Linear Prediction and Estimation Theory, RIAS Report, 61-1, Baltimove Md. (1961) 15) W.M. Wonham: On a Matrix Riccati Equation of Stochastic Control, SIAM Journal on Control, 6-4, 681/698 (1968) 16) M.L.J. Hautus: Stabilization, Controllability and Observability of Linear Autonomous Systems, Ned. Akad. Wetensch., proc. ser. A73, 448/455
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