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Hybrid Global/Local Derivative-Free Multi-objective Optimization via Deterministic Particle Swarm with Local Linesearch

机译:确定性粒子群与局部线搜索的全局/局部无导数混合多目标优化

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A multi-objective deterministic hybrid algorithm (MODHA) is introduced for efficient simulation-based design optimization. The global exploration capability of multi-objective deterministic particle swarm optimization (MODPSO) is combined with the local search accuracy of a derivative-free multi-objective (DFMO) linesearch method. Six MODHA formulations are discussed, based on two MODPSO formulations and three DFMO activation criteria. Forty five analytical test problems are solved, with two/three objectives and one to twelve variables. The performance is evaluated by two multi-objective metrics. The most promising formulations are finally applied to the hull-form optimization of a high-speed catamaran in realistic ocean conditions and compared to MODPSO and DFMO, showing promising results.
机译:引入了一种多目标确定性混合算法(MODHA),用于基于仿真的高效设计优化。多目标确定性粒子群优化(MODPSO)的全局探索能力与无导数多目标(DFMO)线性搜索方法的局部搜索精度相结合。基于两种MODPSO配方和三个DFMO激活标准,讨论了六种MODHA配方。解决了45个分析测试问题,其中包含两个/三个目标以及一到十二个变量。通过两个多目标指标评估性能。最后,最有希望的公式最终应用于现实海洋条件下的高速双体船的船体形式优化,并与MODPSO和DFMO进行了比较,显示出令人鼓舞的结果。

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