Book contents
- Frontmatter
- Contents
- Notation
- Preface
- Part I Overview of Optimization:Applications and Problem Formulations
- Part II From General Mathematical Background to General Nonlinear Programming Problems (NLP)
- 2 General Concepts
- 3 Convexity
- 4 Quadratic Functions
- 5 Minimization in One Dimension
- 6 Unconstrained Multivariate Gradient-Based Minimization
- 7 Constrained Nonlinear Programming Problems (NLP)
- 8 Penalty and Barrier Function Methods
- 9 Interior Point Methods (IPM’s):A Detailed Analysis
- Part III Formulation and Solution of Linear Programming (LP) Problems
- Index
6 - Unconstrained Multivariate Gradient-Based Minimization
from Part II - From General Mathematical Background to General Nonlinear Programming Problems (NLP)
Published online by Cambridge University Press: 17 December 2020
- Frontmatter
- Contents
- Notation
- Preface
- Part I Overview of Optimization:Applications and Problem Formulations
- Part II From General Mathematical Background to General Nonlinear Programming Problems (NLP)
- 2 General Concepts
- 3 Convexity
- 4 Quadratic Functions
- 5 Minimization in One Dimension
- 6 Unconstrained Multivariate Gradient-Based Minimization
- 7 Constrained Nonlinear Programming Problems (NLP)
- 8 Penalty and Barrier Function Methods
- 9 Interior Point Methods (IPM’s):A Detailed Analysis
- Part III Formulation and Solution of Linear Programming (LP) Problems
- Index
Summary
Unconstrained multivariate gradient-based minimization is introduced by means of search direction-producing methods, focusing on steepest descent and Newton's method.Issues with both methods are discussed, highlighting what happens in the case of locally nonconvex functions, particularly in Newton's method.Linesearch is introduced, effectively rendering multidimensional optimization into a sequence of one-dimensional searches along the ray of the search directions produced.Linesearch criteria are discussed, such as the Armijo first condition, and efficient ways to cut the step size are discussed.
- Type
- Chapter
- Information
- Optimization for Chemical and Biochemical EngineeringTheory, Algorithms, Modeling and Applications, pp. 63 - 80Publisher: Cambridge University PressPrint publication year: 2021