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Application of the generalized inverse interval method of global constrained optimization for optimal program control problem

Authors: Panteleev A.V., Panovskiy V.N. Published: 19.02.2016
Published in issue: #1(106)/2016  
DOI: 10.18698/0236-3933-2016-1-33-50

 
Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control, and Information Processing  
Keywords: interval methods, global constrained minimization, optimal control

The algorithmic and program software for the generalized inverse interval method of global constrained optimization as well as its application technique are developed for searching of the optimal program control of nonlinear deterministic continuous dynamical systems. The generalized module algorithm scheme (with two changeable check and compressibility modules) using the inverter operation was developed. The convergence theorems proofs, solutions of applied control problems (chemical process control and pursuit of a maneuvering target by an interceptor) are given.

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