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A One Stage Damage Detection Technique Using Spectral Density Analysis and Parallel Genetic lgorithms

机译:基于谱密度分析和并行遗传算法的一级损伤检测技术

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This paper describes a new global damage identification framework tor the continuous/periodic monitoring of civil structures. In order to localize and estimate the severity of damage regions, a one-stage model-based Bayesian probabilistic damage detection approach is proposed. This method, which is based on the response power spectral density of the structure, enjoys the advantage of broadband frequency information and can be implemented on input-output as well as output-only damage identification studies. A parallel genetic algorithm is subsequently used to evolve the optimal model parameters introduced for different damage conditions. Given the complex search space and the need to perform multiple time-consuming objective function evaluations, a parallel meta-heuristic provides a robust optimization tool in this domain. It is shown that this approach is capable of detecting structural damage in both noisy and noise-free environments.
机译:本文介绍了一个新的全球损害识别框架,以对土木结构进行连续/定期监测。为了定位和估计损伤区域的严重程度,提出了一种基于模型的贝叶斯概率损伤检测方法。该方法基于结构的响应功率谱密度,具有宽带频率信息的优势,可以在输入-输出以及仅输出损伤识别研究中实现。随后使用并行遗传算法来演化针对不同损伤条件引入的最佳模型参数。考虑到复杂的搜索空间以及执行多个耗时的目标函数评估的需求,并行元启发式算法在此领域提供了强大的优化工具。结果表明,该方法能够在嘈杂和无噪声的环境中检测结构损坏。

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