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Particle Swarm Optimization with Sequential Niche Technique for Dynamic Finite Element Model Updating

机译:基于序列小生境技术的粒子群优化动态有限元模型更新

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摘要

Due to uncertainties associated with material properties, structural geometry, boundary conditions, and connectivity of structural parts as well as inherent simplifying assumptions in the development of finite element (FE) models, actual behavior of structures often differs from model predictions. FE model updating comprises a multitude of techniques that systematically calibrate FE models in order to match experimental results. Updating of structural models can be posed as an optimization problem where model parameters that minimize the errors between the responses of the model and actual structure are sought. However, due to limited number of experimental responses and measurement errors, the optimization problem may have multiple admissible solutions in the search domain. Global optimization algorithms (GOAs) are useful and efficient tools in such situations as they try to find the globally optimal solution out of many possible local minima, but are not totally immune to missing the right minimum in complex problems such as those encountered in updating. A methodology based on particle swarm optimization (PSO), a GOA, with sequential niche technique (SNT) for FE model updating is proposed and explored in this article. The combination of PSO and SNT enables a systematic search for multiple minima and considerably increases the confidence in finding the global minimum. The method is applied to FE model updating of a pedestrian cable-stayed bridge using modal data from full-scale dynamic testing.
机译:由于与材料特性,结构几何形状,边界条件和结构零件的连通性相关的不确定性,以及有限元(FE)模型开发中固有的简化假设,结构的实际行为通常与模型预测有所不同。 FE模型更新包含多种技术,这些技术可以系统地校准FE模型以匹配实验结果。可以将结构模型的更新作为一个优化问题,在其中寻求使模型响应与实际结构之间的误差最小的模型参数。但是,由于实验响应和测量误差的数量有限,优化问题可能在搜索域中具有多个可允许的解决方案。全局优化算法(GOA)在某些情况下是有用且高效的工具,因为它们试图从许多可能的局部最小值中找到全局最优解,但不能完全避免错过复杂问题(例如更新中遇到的问题)的正确最小值。本文提出并探索了一种基于粒子群优化(PSO),GOA和顺序小生境技术(SNT)的有限元模型更新方法。 PSO和SNT的组合使系统搜索多个最小值成为可能,并大大增加了找到全局最小值的信心。该方法适用于使用全尺寸动态测试的模态数据对人行斜拉桥进行有限元模型更新。

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