Article
Deterministic Global Optimization for Parameter Estimation of Dynamic Systems
Abstract
A method is presented for deterministic global optimization in the estimation of parameters in models of dynamic systems. The method can be implemented as an ε-global algorithm or, by use of the interval-Newton method, as an exact algorithm. In the latter case, the method provides a mathematically guaranteed and computationally validated global optimum in the goodness-of-fit function. A key feature of the method is the use of a new validated solver for parametric ordinary differential equations (ODEs), which is used to produce guaranteed bounds on the solutions of dynamic systems with interval-valued parameters, as well as on the first- and second-order sensitivities of the state variables with respect to the parameters. The computational efficiency of the method is demonstrated using several benchmark problems.
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History
- Published In Issue December 06, 2006
- Received for review December 13, 2005
Revised manuscript received March 9, 2006
Accepted March 13, 2006
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