Evolutionary Multi-Objective System Design (e-bog) af -

Evolutionary Multi-Objective System Design e-bog

403,64 DKK
Real-world engineering problems often require concurrent optimization of several design objectives, which are conflicting in cases. This type of optimization is generally called multi-objective or multi-criterion optimization. The area of research that applies evolutionary methodologies to multi-objective optimization is of special and growing interest. It brings a viable computational solution t…
Real-world engineering problems often require concurrent optimization of several design objectives, which are conflicting in cases. This type of optimization is generally called multi-objective or multi-criterion optimization. The area of research that applies evolutionary methodologies to multi-objective optimization is of special and growing interest. It brings a viable computational solution to many real-world problems. Generally, multi-objective engineering problems do not have a straightforward optimal design. These kinds of problems usually inspire several solutions of equal efficiency, which achieve different trade-offs. Decision makers' preferences are normally used to select the most adequate design. Such preferences may be dictated before or after the optimization takes place. They may also be introduced interactively at different levels of the optimization process. Multi-objective optimization methods can be subdivided into classical and evolutionary. The classical methods usually aim at a single solution while the evolutionary methods provide a whole set of so-called Pareto-optimal solutions. Evolutionary Multi-Objective System Design: Theory and Applicationsprovides a representation of the state-of-the-art in evolutionary multi-objective optimization research area and related new trends. It reports many innovative designs yielded by the application of such optimization methods. It also presents the application of multi-objective optimization to the following problems:Embrittlement of stainless steel coated electrodesLearning fuzzy rules from imbalanced datasets Combining multi-objective evolutionary algorithms with collective intelligenceFuzzy gain scheduling controlSmart placement of roadside units in vehicular networksCombining multi-objective evolutionary algorithms with quasi-simplex local searchDesign of robust substitution boxesProtein structure prediction problemCore assignment for efficient network-on-chip-based system design
E-bog 403,64 DKK
Forfattere Lopes, Heitor Silverio (redaktør)
Udgivet 15.07.2020
Længde 218 sider
Genrer Automatic control engineering
Sprog English
Format epub
Beskyttelse LCP
ISBN 9781315349596

Real-world engineering problems often require concurrent optimization of several design objectives, which are conflicting in cases. This type of optimization is generally called multi-objective or multi-criterion optimization. The area of research that applies evolutionary methodologies to multi-objective optimization is of special and growing interest. It brings a viable computational solution to many real-world problems. Generally, multi-objective engineering problems do not have a straightforward optimal design. These kinds of problems usually inspire several solutions of equal efficiency, which achieve different trade-offs. Decision makers' preferences are normally used to select the most adequate design. Such preferences may be dictated before or after the optimization takes place. They may also be introduced interactively at different levels of the optimization process. Multi-objective optimization methods can be subdivided into classical and evolutionary. The classical methods usually aim at a single solution while the evolutionary methods provide a whole set of so-called Pareto-optimal solutions. Evolutionary Multi-Objective System Design: Theory and Applicationsprovides a representation of the state-of-the-art in evolutionary multi-objective optimization research area and related new trends. It reports many innovative designs yielded by the application of such optimization methods. It also presents the application of multi-objective optimization to the following problems:Embrittlement of stainless steel coated electrodesLearning fuzzy rules from imbalanced datasets Combining multi-objective evolutionary algorithms with collective intelligenceFuzzy gain scheduling controlSmart placement of roadside units in vehicular networksCombining multi-objective evolutionary algorithms with quasi-simplex local searchDesign of robust substitution boxesProtein structure prediction problemCore assignment for efficient network-on-chip-based system design