Multi-Objective Optimization for Improved Experimental Designs
Analysis
Key Takeaways
- •Addresses limitations of existing experimental designs.
- •Proposes a multi-objective optimization approach.
- •Combines surrogate model predictions with a space-filling criterion.
- •Demonstrates practical application with Python packages and a case study.
- •Effectively balances exploration and exploitation.
“The methodology effectively balances the exploration-exploitation trade-off in multi-objective optimization.”