Refine
Document Type
- Conference Proceeding (9) (remove)
Institute
- Department of Computer Science (Ende 2021 aufgelöst; Integration in die übergeordnete OE Technik) (9) (remove)
Language
- English (9)
Has Fulltext
- no (9)
Is part of the Bibliography
- yes (9)
Keywords
- evolution strategies (3)
- mutation strength (3)
- meta-es (2)
- self-adaptation (2)
- Algorithm Analysis and Problem Complexity (1)
- Artificial Intelligence (incl. Robotics) (1)
- Computation by Abstract Devices (1)
- Computational Biology/Bioinformatics (1)
- Constraints (1)
- Discrete Mathematics in Computer Science (1)
A modified matrix adaptation evolution strategy with restarts for constrained real-world problems
(2020)
In combination with successful constraint handling techniques, a Matrix Adaptation Evolution Strategy (MA-ES) variant (the εMAg-ES) turned out to be a competitive algorithm on the constrained optimization problems proposed for the CEC 2018 competition on constrained single objective real-parameter optimization. A subsequent analysis points to additional potential in terms of robustness and solution quality. The consideration of a restart scheme and adjustments in the constraint handling techniques put this into effect and simplify the configuration. The resulting BP-εMAg-ES algorithm is applied to the constrained problems proposed for the IEEE CEC 2020 competition on Real-World Single-Objective Constrained optimization. The novel MA-ES variant realizes improvements over the original εMAg-ES in terms of feasibility and effectiveness on many of the real-world benchmarks. The BP-εMAg-ES realizes a feasibility rate of 100% on 44 out of 57 real-world problems and improves the best-known solution in 5 cases.