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Directions In Mathematical Systems Theory And Optimization Anders Rantzer

  • SKU: BELL-1438614
Directions In Mathematical Systems Theory And Optimization Anders Rantzer
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Directions In Mathematical Systems Theory And Optimization Anders Rantzer instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 2.19 MB
Pages: 391
Author: Anders Rantzer, Christopher I. Byrnes
ISBN: 9783540000655, 3540000658
Language: English
Year: 2003

Product desciption

Directions In Mathematical Systems Theory And Optimization Anders Rantzer by Anders Rantzer, Christopher I. Byrnes 9783540000655, 3540000658 instant download after payment.

This volume provides a compilation of recent contributions on feedback and robust control, modeling, estimation and filtering. They were presented on the occasion of the sixtieth birthday of Anders Lindquist, who has delivered fundamental contributions to the fields of systems, signals and control for more than three decades. His contributions include seminal work on the role of splitting subspaces in stochastic realization theory, on the partial realization problem for both deterministic and stochastic systems, on the solution of the rational covariance extension problem and on system identification. Lindquist's research includes the development of fast filtering algorithms, leading to a nonlinear dynamical system which computes spectral factors in its steady state, and which provide an alternate, linear in the dimension of the state space, to computing the Kalman gain from a matrix Riccati equation. He established the separation principle for stochastic function differential equations, including some fundamental work on optimal control for stochastic systems with time lags. His recent work on a complete parameterization of all rational solutions to the Nevanlinna-Pick problem is providing a new approach to robust control design.

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