Optimization by Vector Space Methods
Engineers must make decisions regarding the distribution of expensive resources in a manner that will be economically beneficial. This problem can be realistically formulated and logically analyzed with optimization theory. This book shows engineers how to use optimization theory to solve complex problems. Unifies the large field of optimization with a few geometric principles. Covers functional analysis with a minimum of mathematics. Contains problems that relate to the applications in the book.
What people are saying - Write a review
We haven't found any reviews in the usual places.
OTHER MINIMUM NORM PROBLEMS
GEOMETRIC FORM OF THE HAHNBANACH
LINEAR OPERATORS AND ADJOINTS
OPTIMIZATION IN HILBERT SPACE
OPTIMIZATION OF FUNCTIONALS
GLOBAL THEORY OF CONSTRAINED OPTIMIZATION
LOCAL THEORY OF CONSTRAINED OPTIMIZATION
ITERATIVE METHODS OF OPTIMIZATION
Other editions - View all
additional analysis applied approximation arbitrary assume Banach space chapter closed complete components cone conjugate consider consisting constraints contains continuous convergence convex convex set corresponding defined definition denoted derivatives determined direction discussed dual duality element equal equation equivalent estimate Example exists expressed Figure finding finite fixed follows Fréchet differentiable functional f geometric given hence Hilbert space hyperplane implies important independent inequality integral interior point Lagrange multiplier Lemma linear functional mapping matrix maximize measurements method minimizing minimum norm necessary normed space Note obtain operator optimal original orthogonal positive problem projection Proof properties Proposition prove random relation respect result satisfying scalar separating sequence Show simple solution solved sphere subset subspace Suppose technique theorem theory transformation unique variable vector space zero