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Damage identification of bridge structure considering temperature variations based on particle swarm optimization - cuckoo search algorithm

机译:基于粒子群算法的考虑温度变化的桥梁结构损伤识别-杜鹃搜索算法

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摘要

Structures are always exposed to environmental conditions such as varying temperatures and noises; as a consequence, the dynamic features of structures are changed accordingly. But the model-based methods, used to detect damage using optimization algorithms to get global optimal solution, are highly sensitive to environmental conditions, experimental noises, or numerical errors. While the mechanisms of optimization algorithms are limited by local optimal solution, their convergences are not always assured. In the study, a model-based damage-identification method considering temperature variations, comprised of particle swarm optimization and cuckoo search, is implemented to detect structural damage. First, to eliminate the influence of environmental temperature, temperature change is considered as a parameter of structural material elastic modulus. A function relationship is established between environmental temperature and the material elastic modulus, and an objective function composed of natural frequency, mode shape and modal strain energy with different weight coefficients is constructed. Second, the hybrid optimization algorithm, a combination of particle swarm optimization and cuckoo search, is proposed. Third, to solve the problem of optimization algorithm convergence, the optimization performance of the hybrid optimization algorithm is validated by utilizing four benchmark functions, and it is found that the performance of the hybrid optimization algorithm is the best. In order to test the performance of the three algorithms in damage identification, a numerical simply supported beam is adopted. The results show that the hybrid optimization algorithm can identify the damage location and severity under four different damage cases without considering temperature variations and two cases considering temperature variations. Finally, the hybrid optimization algorithm is introduced to test the damage-identification performance of I-40 Bridge, an actual steel–concrete composite bridge under temperature variations, whose results show that the hybrid optimization algorithm can preferably distinguish between real damages and temperature effects (temperature gradient included); its good robustness and engineering applicability are validated.
机译:结构总是暴露于各种环境条件下,例如温度和噪音的变化。结果,结构的动态特征也随之改变。但是,基于模型的方法(用于通过使用优化算法来获取整体最优解的方法来检测损坏)对环境条件,实验噪声或数值误差高度敏感。尽管优化算法的机制受到局部最优解的限制,但并不能始终保证其收敛性。在这项研究中,实现了一种基于模型的考虑温度变化的损伤识别方法,该方法包括粒子群优化和杜鹃搜索,以检测结构损伤。首先,为消除环境温度的影响,温度变化被认为是结构材料弹性模量的参数。建立了环境温度与材料弹性模量之间的函数关系,构造了具有不同权重系数的固有频率,模态形状和模态应变能组成的目标函数。其次,提出了混合优化算法,结合了粒子群算法和杜鹃搜索。第三,为解决优化算法的收敛性问题,利用四个基准函数对混合优化算法的优化性能进行了验证,发现混合优化算法的性能最佳。为了测试这三种算法在损伤识别中的性能,采用了数值简单支持的梁。结果表明,混合优化算法可以在不考虑温度变化的情况下和两种考虑温度变化的情况下识别四种不同损伤情况下的损伤位置和严重程度。最后,引入了混合优化算法来测试I-40桥梁的损伤识别性能,I-40桥梁是温度变化下的实际钢-混凝土组合桥梁,其结果表明,该混合优化算法可以更好地区分实际损伤和温度影响(包括温度梯度);其良好的鲁棒性和工程适用性得到了验证。

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