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首页> 外文期刊>International journal of non-linear mechanics >Structural health monitoring and damage detection using an intelligent parameter varying (IPV) technique
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Structural health monitoring and damage detection using an intelligent parameter varying (IPV) technique

机译:使用智能参数变化(IPV)技术进行结构健康监测和损坏检测

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摘要

Most structural health monitoring and damage detection strategies utilize dynamic response information to identify the existence, location, and magnitude of damage. Traditional model-based techniques seek to identify parametric changes in a linear dynamic model, while non-model-based techniques focus on changes in the temporal and frequency characteristics of the system response. Because restoring forces in base-excited structures can exhibit highly non-linear characteristics, non-linear model-based approaches may be better suited for reliable health monitoring and damage detection. This paper presents the application of a novel intelligent parameter varying (IPV) modeling and system identification technique, developed by the authors, to detect damage in base-excited structures. This IPV technique overcomes specific limitations of traditional model-based and non-model-based approaches, as demonstrated through comparative simulations with wavelet analysis methods. These simulations confirm the effectiveness of the IPV technique, and show that performance is not compromised by the introduction of realistic structural non-linearities and ground excitation characteristics.
机译:大多数结构健康监测和损坏检测策略都利用动态响应信息来识别损坏的存在,位置和程度。传统的基于模型的技术试图识别线性动态模型中的参数变化,而非基于模型的技术则专注于系统响应的时间和频率特性的变化。由于基础激励结构中的恢复力可能表现出高度的非线性特性,因此基于非线性模型的方法可能更适合于可靠的健康状况监视和损坏检测。本文介绍了由作者开发的一种新颖的智能参数变化(IPV)建模和系统识别技术在检测基础激励结构中的损伤中的应用。这种IPV技术克服了传统的基于模型和基于非模型的方法的特定局限性,如通过小波分析方法进行的比较模拟所证明的那样。这些仿真证实了IPV技术的有效性,并表明引入实际的结构非线性和地面激励特性不会影响性能。

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