Global optimization for parameter estimation of differential-algebraic systems
✍ Scribed by Michal Čižniar; Marián Podmajerský; Tomáš Hirmajer; Miroslav Fikar; Abderrazak M. Latifi
- Book ID
- 111491235
- Publisher
- Versita
- Year
- 2009
- Tongue
- English
- Weight
- 339 KB
- Volume
- 63
- Category
- Article
- ISSN
- 0366-6352
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✦ Synopsis
Abstract
The estimation of parameters in semi-empirical models is essential in numerous areas of engineering and applied science. In many cases, these models are described by a set of ordinary-differential equations or by a set of differential-algebraic equations. Due to the presence of non-convexities of functions participating in these equations, current gradient-based optimization methods can guarantee only locally optimal solutions. This deficiency can have a marked impact on the operation of chemical processes from the economical, environmental and safety points of view and it thus motivates the development of global optimization algorithms. This paper presents a global optimization method which guarantees ɛ-convergence to the global solution. The approach consists in the transformation of the dynamic optimization problem into a nonlinear programming problem (NLP) using the method of orthogonal collocation on finite elements. Rigorous convex underestimators of the nonconvex NLP problem are employed within the spatial branch-and-bound method and solved to global optimality. The proposed method was applied to two example problems dealing with parameter estimation from time series data.
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