Global Optimization with Non-Convex Constraints

Global Optimization with Non-Convex Constraints
About this book
This book presents a new approach to global non-convex constrained optimization. Problem dimensionality is reduced via space-filling curves. To economize the search, constraint is accounted separately (penalties are not employed). The multicriteria case is also considered. All techniques are generalized for (non-redundant) execution on multiprocessor systems. Audience: Researchers and students working in optimization, applied mathematics, and computer science.
Details
- OL Work ID
- OL20717669W
Subjects
AlgorithmsMathematicsInformation theoryComputer scienceMathematical optimizationEngineeringOptimizationComputational Mathematics and Numerical AnalysisTheory of ComputationEngineering, general