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首页> 外文期刊>KSCE journal of civil engineering >Finite Element Model Updating of a Simply Supported Skewed PSC I-girder Bridge using Hybrid Genetic Algorithm
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Finite Element Model Updating of a Simply Supported Skewed PSC I-girder Bridge using Hybrid Genetic Algorithm

机译:基于混合遗传算法的斜撑PSC工字钢桥有限元模型更新

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摘要

Hybrid Genetic Algorithm (HGA) which combines the genetic algorithm as a global optimization and the simplex method as a local optimization is proposed for a finite element model updating of a real prestressed concrete bridge structure. In order to minimize the updating error between the measurement and the finite element model updating result, objective functions which are combinations of fitness functions based on the natural frequency, the mode shape and the static displacement are introduced. And an interface tool is also developed in order to utilize various element library and numerical analysis tools which are provided by commercial finite element and numerical analysis programs. A simply supported skewed PSC girder bridge which has 30 m span length is selected for the verification of the proposed FE model updating algorithm. Static vehicle loading test and forced vibration test by traveling vehicle as well as ambient vibration test were carried out to obtain the reference measurement data for numerical updating. A grillage model is used for the finite element analysis. Effect of the spring element to simulate the realistic support condition which is not perfectly free or restrained in real situation as well as that of the objective function on the updating accuracy are studied. From the result of parametric study, it is investigated that the use of spring element for support condition is effective to minimize the updating error for natural frequency and mode shape. Furthermore, including the static displacement fitness function together with those of dynamic properties may improve the global behavior of updated finite element model. It is concluded that the hybrid genetic algorithm proposed in this study is a very effective finite element model updating method to find an accurate result in updating real bridge structure based on measured data.
机译:针对实际预应力混凝土桥梁结构的有限元模型更新,提出了混合遗传算法(HGA),该遗传算法将遗传算法作为一种全局优化方法,将单纯形法作为一种局部优化方法。为了使测量结果与有限元模型更新结果之间的更新误差最小,引入了目标函数,该目标函数是基于自然频率,振型和静位移的适应度函数的组合。并且还开发了接口工具,以利用由商业有限元和数值分析程序提供的各种要素库和数值分析工具。选择了跨度为30 m的简支斜交PSC梁桥,以验证所提出的有限元模型更新算法。进行了静态车辆载荷测试和行驶车辆的强制振动测试以及环境振动测试,以获得用于数值更新的参考测量数据。格栅模型用于有限元分析。研究了弹簧元件模拟真实情况下不能完全自由或约束的现实支撑条件以及目标函数对更新精度的影响。从参数研究的结果来看,研究表明使用弹簧元件作为支撑条件可以有效地减小固有频率和振型的更新误差。此外,将静态位移适应度函数与动态属性适应度函数一起使用可以改善更新的有限元模型的整体性能。结论是,本文提出的混合遗传算法是一种非常有效的有限元模型更新方法,可以根据实测数据找到准确的桥梁结构更新结果。

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