Convexification and Global Optimization in Continuous and Mixed-Integer Nonlinear Programming

Convexification and Global Optimization in Continuous and Mixed-Integer Nonlinear Programming
Author: Mohit Tawarmalani
Publisher: Springer Science & Business Media
Total Pages: 492
Release: 2013-04-17
Genre: Mathematics
ISBN: 1475735324

Interest in constrained optimization originated with the simple linear pro gramming model since it was practical and perhaps the only computationally tractable model at the time. Constrained linear optimization models were soon adopted in numerous application areas and are perhaps the most widely used mathematical models in operations research and management science at the time of this writing. Modelers have, however, found the assumption of linearity to be overly restrictive in expressing the real-world phenomena and problems in economics, finance, business, communication, engineering design, computational biology, and other areas that frequently demand the use of nonlinear expressions and discrete variables in optimization models. Both of these extensions of the linear programming model are NP-hard, thus representing very challenging problems. On the brighter side, recent advances in algorithmic and computing technology make it possible to re visit these problems with the hope of solving practically relevant problems in reasonable amounts of computational time. Initial attempts at solving nonlinear programs concentrated on the de velopment of local optimization methods guaranteeing globality under the assumption of convexity. On the other hand, the integer programming liter ature has concentrated on the development of methods that ensure global optima. The aim of this book is to marry the advancements in solving nonlinear and integer programming models and to develop new results in the more general framework of mixed-integer nonlinear programs (MINLPs) with the goal of devising practically efficient global optimization algorithms for MINLPs.

Mixed Integer Nonlinear Programming

Mixed Integer Nonlinear Programming
Author: Jon Lee
Publisher: Springer Science & Business Media
Total Pages: 687
Release: 2011-12-02
Genre: Mathematics
ISBN: 1461419271

Many engineering, operations, and scientific applications include a mixture of discrete and continuous decision variables and nonlinear relationships involving the decision variables that have a pronounced effect on the set of feasible and optimal solutions. Mixed-integer nonlinear programming (MINLP) problems combine the numerical difficulties of handling nonlinear functions with the challenge of optimizing in the context of nonconvex functions and discrete variables. MINLP is one of the most flexible modeling paradigms available for optimization; but because its scope is so broad, in the most general cases it is hopelessly intractable. Nonetheless, an expanding body of researchers and practitioners — including chemical engineers, operations researchers, industrial engineers, mechanical engineers, economists, statisticians, computer scientists, operations managers, and mathematical programmers — are interested in solving large-scale MINLP instances.

Disjunctive Programming

Disjunctive Programming
Author: Egon Balas
Publisher: Springer
Total Pages: 238
Release: 2018-11-27
Genre: Mathematics
ISBN: 3030001482

Disjunctive Programming is a technique and a discipline initiated by the author in the early 1970's, which has become a central tool for solving nonconvex optimization problems like pure or mixed integer programs, through convexification (cutting plane) procedures combined with enumeration. It has played a major role in the revolution in the state of the art of Integer Programming that took place roughly during the period 1990-2010. The main benefit that the reader may acquire from reading this book is a deeper understanding of the theoretical underpinnings and of the applications potential of disjunctive programming, which range from more efficient problem formulation to enhanced modeling capability and improved solution methods for integer and combinatorial optimization. Egon Balas is University Professor and Lord Professor of Operations Research at Carnegie Mellon University's Tepper School of Business.

Relaxation and Decomposition Methods for Mixed Integer Nonlinear Programming

Relaxation and Decomposition Methods for Mixed Integer Nonlinear Programming
Author: Ivo Nowak
Publisher:
Total Pages: 213
Release: 2005
Genre: Electronic books
ISBN: 9780817672386

This book presents a comprehensive description of efficient methods for solving nonconvex mixed integer nonlinear programs, including several numerical and theoretical results, which are presented here for the first time. It contains many illustrations and an up-to-date bibliography. Because on the emphasis on practical methods, as well as the introduction into the basic theory, the book is accessible to a wide audience. It can be used both as a research and as a graduate text.

Convex Relaxations for Mixed-Integer Nonlinear Programs

Convex Relaxations for Mixed-Integer Nonlinear Programs
Author: Martin Ballerstein
Publisher: Cuvillier Verlag
Total Pages: 252
Release: 2013-09-16
Genre: Mathematics
ISBN: 3736944748

This thesis deals with new techniques to construct a strong convex relaxation for a mixed-integer nonlinear program (MINLP). While local optimization software can quickly identify promising operating points of MINLPs, the solution of the convex relaxation provides a global bound on the optimal value of the MINLP that can be used to evaluate the quality of the local solution. Certainly, the efficiency of this evaluation is strongly dependent on the quality of the convex relaxation. Convex relaxations of general MINLPs can be constructed by replacing each nonlinear function occurring in the model description by convex underestimating and concave overestimating functions. In this setting, it is desired to use the best possible convex underestimator and concave overestimator of a given function over an underlying domain -- the so-called convex and concave envelope, respectively. However, the computation of these envelopes can be extremely difficult so that analytical expressions for envelopes are only available for some classes of well-structured functions. Another factor influencing the strength of the estimators is the size of the underlying domain: The smaller the domain, the better the quality of the estimators. In many applications the initial domains of the variables are chosen rather conservatively while tighter bounds are implicitly given by the constraint set of the MINLP. Thus, bound tightening techniques, which exploit the information of the constraint set, are an essential ingredient to improve the estimators and to accelerate global optimization algorithms. The focus of this thesis lies on the development and computational analysis of new convex relaxations for MINLPs, especially for two applications from chemical engineering. In detail, we derive a new bound tightening technique for a general structure used for modeling chemical processes and provide different approaches to generate strong convex relaxations for various nonlinear functions. Initially, we aim at the optimal design of hybrid distillation/melt-crystallization processes, a novel process configuration to separate a m ixture into its component. A crucial part in the formal representation of this process as well as other separation processes is to model the mass conservation within the process. We exploit the analytical properties of the corresponding equation system to reduce the domains of the involved variables. Using the proposed technique, we can accelerate the computations for hybrid distillation/melt-crystallization processes significantly compared to standard software. Then, we concentrate on the generation of convex relaxations for nonlinear functions. First, we exploit the existing theory for two interesting classes of bivariate functions. On the one hand, we elaborate, implement, and illustrate the strength of a cut-generation algorithm for bivariate functions which are convex or concave in each variable and for which the sign of the Hessian is the same over the entire domain. On the other hand, relaxation strategies for advanced equilibrium functions in chromatographic separation processes are analyzed and finally applied to completely describe the feasible separation regions of these processes. Second, we suggest to derive the envelopes in an extended space to overcome the combinatorial difficulties involved in the computation of the convex envelope in the original space. In particular, we consider a class of functions accounting for a large amount of all nonlinearities in common benchmark libraries. These functions are component-wise concave in one part of the variables and convex in the other part of the variables. For this general class of functions the convex envelopes in the original variable space have not been discovered so far. We provide closed-form expressions for the extended formulation of their convex envelopes based on the simultaneous convexification with multilinear monomials. By construction, this approach does not only yield an extended formulation for the convex envelope of a function, but also a strong simultaneous relaxation of the function and the involved multilinear monomials. Several examples show that this simultaneous relaxation can be orders of magnitude better than the individual relaxation of the functions. Finally, inspired by the strength and the computational impact of the simultaneous relaxation of a function and multilinear monomials, we further focus on the simultaneous convexification of several functions. In such an approach the relaxation of a MINLP involving several functions in the same variables is much tighter because the interdependence between the different functions is taken into account. We study the simultaneous convex hull of several functions for which we derive theoretical results concerning their inner and outer description by means of the rich theory of convex envelopes. Moreover, we apply these results to provide formulas for tight convex relaxations of several univariate convex functions. Implementations of all convexification techniques are available as plugins for the open-source MINLP solver scip. The computational results of several case studies reveal the benefit of the proposed techniques compared to state-of-the-art methods.

Lectures on Global Optimization

Lectures on Global Optimization
Author: Thomas Frederick Coleman
Publisher: American Mathematical Soc.
Total Pages: 257
Release: 2009
Genre: Mathematics
ISBN: 0821844857

A large number of mathematical models in many diverse areas of science and engineering have lead to the formulation of optimization problems where the best solution (globally optimal) is needed. This book covers a small subset of important topics in global optimization with emphasis on theoretical developments and scientific applications.

Nonlinear Integer Programming

Nonlinear Integer Programming
Author: Duan Li
Publisher: Springer Science & Business Media
Total Pages: 452
Release: 2006-08-13
Genre: Mathematics
ISBN: 0387329951

A combination of both Integer Programming and Nonlinear Optimization, this is a powerful book that surveys the field and provides a state-of-the-art treatment of Nonlinear Integer Programming. It is the first book available on the subject. The book aims to bring the theoretical foundation and solution methods for nonlinear integer programming to students and researchers in optimization, operations research, and computer science.

A Reformulation-Linearization Technique for Solving Discrete and Continuous Nonconvex Problems

A Reformulation-Linearization Technique for Solving Discrete and Continuous Nonconvex Problems
Author: Hanif D. Sherali
Publisher: Springer Science & Business Media
Total Pages: 529
Release: 2013-04-17
Genre: Mathematics
ISBN: 1475743882

This book deals with the theory and applications of the Reformulation- Linearization/Convexification Technique (RL T) for solving nonconvex optimization problems. A unified treatment of discrete and continuous nonconvex programming problems is presented using this approach. In essence, the bridge between these two types of nonconvexities is made via a polynomial representation of discrete constraints. For example, the binariness on a 0-1 variable x . can be equivalently J expressed as the polynomial constraint x . (1-x . ) = 0. The motivation for this book is J J the role of tight linear/convex programming representations or relaxations in solving such discrete and continuous nonconvex programming problems. The principal thrust is to commence with a model that affords a useful representation and structure, and then to further strengthen this representation through automatic reformulation and constraint generation techniques. As mentioned above, the focal point of this book is the development and application of RL T for use as an automatic reformulation procedure, and also, to generate strong valid inequalities. The RLT operates in two phases. In the Reformulation Phase, certain types of additional implied polynomial constraints, that include the aforementioned constraints in the case of binary variables, are appended to the problem. The resulting problem is subsequently linearized, except that certain convex constraints are sometimes retained in XV particular special cases, in the Linearization/Convexijication Phase. This is done via the definition of suitable new variables to replace each distinct variable-product term. The higher dimensional representation yields a linear (or convex) programming relaxation.

Introduction to Global Optimization

Introduction to Global Optimization
Author: R. Horst
Publisher: Springer Science & Business Media
Total Pages: 376
Release: 2000-12-31
Genre: Computers
ISBN: 9780792367567

A textbook for an undergraduate course in mathematical programming for students with a knowledge of elementary real analysis, linear algebra, and classical linear programming (simple techniques). Focuses on the computation and characterization of global optima of nonlinear functions, rather than the locally optimal solutions addressed by most books on optimization. Incorporates the theoretical, algorithmic, and computational advances of the past three decades that help solve globally multi-extreme problems in the mathematical modeling of real world systems. Annotation copyright by Book News, Inc., Portland, OR