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2006 | Buch

Linear Optimization Problems with Inexact Data

verfasst von: M. Fiedler, J. Nedoma, J. Ramík, J. Rohn, K. Zimmermann

Verlag: Springer US

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Über dieses Buch

Linear programming attracted the interest of mathematicians during and after World War II when the first computers were constructed and methods for solving large linear programming problems were sought in connection with specific practical problems—for example, providing logistical support for the U.S. Armed Forces or modeling national economies. Early attempts to apply linear programming methods to solve practical problems failed to satisfy expectations. There were various reasons for the failure. One of them, which is the central topic of this book, was the inexactness of the data used to create the models. This phenomenon, inherent in most pratical problems, has been dealt with in several ways. At first, linear programming models used "average" values of inherently vague coefficients, but the optimal solutions of these models were not always optimal for the original problem itself. Later researchers developed the stochastic linear programming approach, but this too has its limitations. Recently, interest has been given to linear programming problems with data given as intervals, convex sets and/or fuzzy sets. The individual results of these studies have been promising, but the literature has not presented a unified theory. Linear Optimization Problems with Inexact Data attempts to present a comprehensive treatment of linear optimization with inexact data, summarizing existing results and presenting new ones within a unifying framework.

Inhaltsverzeichnis

Frontmatter
1. Matrices
M. Fiedler
2. Solvability of systems of interval linear equations and inequalities
J. Rohn
3. Interval linear programming
J. Rohn
4. Linear programming with set coefficients
J. Nedoma, J. Ramík
5. Fuzzy linear optimization
5.12 Conclusion
In this chapter we have proposed a new general approach to fuzzy single and multicriteria linear programming problems with fuzzy coefficients. A unifying concept of this approach is the concept of a fuzzy relation, particularly fuzzy extension of the inequality or equality relation and the concept of an aggregation operator.
We have formulated the FLP problem, defined a feasible solution of the FLP problem and dealt with the problem of “optimal solution” of FLP problems. Two approaches have been introduced: the satisficing solution based on externalgoals modeled by fuzzy quantities, and the α-efficient (nondominated) solution. Then our interest has been focused on the problem of duality in FLP. Finally, we have also dealt with the multicriteria case. We have formulated a fuzzy multicriteria linear programming problem, defined a compromise solution and derived basic results. The chapter has been closed with a numerical example.
J. Ramík
6. Interval linear systems and optimization problems over max-algebras
6.8 Conclusion
The results obtained in this chapter extend the possibility of applications of the (⊕, ⊗)-linear systems and optimization problems to cases in which the data of the problems are inexact and the inexactness is expressed by replacing the exact coefficients of the (⊕, ⊗)-linear functions involved with interval coefficients. Such problems occur, e.g., in scheduling problems with inexact processing times, reliability problems with inexact failure probabilities and others. As we have already mentioned, only problems with variables on one side of the constraints were considered here. Problems with variables on both sides of (⊕, ⊗)-linear constraints may become the subject of further research.
K. Zimmermann
Backmatter
Metadaten
Titel
Linear Optimization Problems with Inexact Data
verfasst von
M. Fiedler
J. Nedoma
J. Ramík
J. Rohn
K. Zimmermann
Copyright-Jahr
2006
Verlag
Springer US
Electronic ISBN
978-0-387-32698-6
Print ISBN
978-0-387-32697-9
DOI
https://doi.org/10.1007/0-387-32698-7

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