Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in computational power have enabled researchers and practitioners to optimize previously intractable complex engineering problems. This paper investigates the possible benefit of a concurrent utilization of multiple simulation-based surrogate models to solve complex discrete optimization problems. To fulfill this, the so-called Self-Adaptive Multi-surrogate Assisted Efficient Global Optimization algorithm (SAMA-DiEGO), which features a two-stage online model management strategy, is proposed and further benchmarked on fifteen binary-encoded combinatorial and fifteen ordinal problems against several state-of-the-art non-surrogate or single surrogate assisted optimization algorithms. Our findings indicate that SAMA-DiEGO can rapidly converge to better solutions on a majority of the test problems, which shows the feasibility and advantage of using multiple surrogate models in optimizing discrete problems.
翻译:模拟替代辅助优化和计算能力空前增长方面数十年的进展使得研究人员和从业人员能够优化以前棘手的复杂工程问题。本文件探讨了同时使用多种模拟替代模型解决复杂的离散优化问题的潜在好处。为此,提出了以两阶段在线示范管理战略为特点的所谓自我开发多角度辅助高效全球优化算法(SAMA-DiEGO),并进一步以15个二进制组合和15个半成形问题作为基准,以对付一些最先进的非代孕模型或单一代孕辅助优化算法。我们的研究结果表明,SAMA-DIEGO可以迅速汇集到对大多数测试问题的更好解决办法,这表明利用多个替代模型优化离散问题的可行性和优势。