Data di Pubblicazione:
2008
Abstract:
A new neural network for convex quadratic optimization is
presented in this brief. The proposed network can handle both equality
and inequality constraints, as well as bound constraints on the optimization
variables. It is based on the Lagrangian approach, but exploits a partial
dual method in order to keep the number of variables at minimum. The
dynamic evolution is globally convergent and the steady-state solutions satisfy
the necessary and sufficient conditions of optimality. The circuit implementation
is simpler with respect to existing solutions for the same class of
problems. The validity of the proposed approach is verified through some
simulation examples.
Tipologia CRIS:
01.01 Articolo in rivista
Elenco autori:
Costantini, Giovanni
Link alla scheda completa:
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