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A comparative study of optimization techniques for tuning a finite element model of the lung to biomechanical data.

机译:用于优化肺部有限元模型以适应生物力学数据的优化技术的比较研究。

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摘要

A comparison between two stochastic optimization techniques, adaptive simulated annealing (ASA) and the multi-island genetic algorithm (MIGA) is conducted to investigate which is the more attractive option for tuning a finite element model to match experimental data. The study probes the repeatability, robustness and sensitivity of each algorithm. While both algorithms produced FE results within one standard deviation of the experimental mean, the ASA approach proved more effective than the MIGA. The ASA algorithm demonstrated better repeatability after 1000 trials, with an average parameter value change of 9%. The ASA algorithm also probed a wider range of the solution space and produced results with significantly lower sum-of-squares error than the MIGA (t-test, one tailed, p < 0.001).
机译:比较了两种随机优化技术,自适应模拟退火(ASA)和多岛遗传算法(MIGA),这是调整有限元模型以匹配实验数据的更有吸引力的选择。该研究探讨了每种算法的可重复性,鲁棒性和敏感性。尽管两种算法产生的FE结果均在实验平均值的一个标准偏差内,但ASA方法比MIGA更有效。 ASA算法在1000次试验后表现出更好的可重复性,平均参数值变化为9%。 ASA算法还探查了更宽的解决方案空间范围,并产生了比MIGA显着更低的平方和误差的结果(t检验,带尾部,p <0.001)。

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