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Damage type classification based on structures nonlinear dynamical signature

机译:基于结构非线性动力特征的损伤类型分类

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Structural damages result in nonlinear dynamical signatures that significantly help for their monitoring. A damage type classification approach is proposed here that is based on a parallel Hammerstein models representation of the structure estimated by means of the Exponential Sine Sweep Method. This estimation method has been here extended to take into account for input signal amplitude which was not the case before. On the basis of these estimated models, three amplitude dependent damage indexes are built: one that monitors the shift of the resonance frequency of the structure, another the ratio of nonlinear versus linear energy in the output signal, and a last one the ratio of the energy coming from odd nonlinearities to the energy coming from even nonlinearities in the output signal. The slopes of these amplitude-dependent DIs are then used as coordinates to place the damaged structure under study within a three-dimensional space. A single mass-spring-damper system is considered to illustrate the ability of this space to classify different types of damage. Four types of damage with different severities are simulated through different spring nonlinearities: bilinear stiffness, dead zone, saturation, and Coulomb friction. For all severities, the four types of damage are extremely well separated within the proposed three-dimensional space, thus highlighting its high potential for classification purposes.
机译:结构损坏会导致非线性动力学特征,从而大大有助于对其进行监控。本文提出了一种损伤类型分类方法,该方法基于通过指数正弦扫描法估算的结构的并行Hammerstein模型表示。在此,此估计方法已扩展为考虑到输入信号幅度,而以前是这种情况。在这些估计的模型的基础上,建立了三个与振幅有关的损伤指标:一个监测结构共振频率的变化,另一个监测输出信号中非线性能量与线性能量的比值,最后一个比来自奇数非线性的能量到来自输出信号的偶数非线性的能量。然后,将这些依赖于幅度的DI的斜率用作坐标,以将正在研究的受损结构放置在三维空间内。考虑使用单个质量弹簧阻尼器系统来说明该空间对不同类型的损坏进行分类的能力。通过不同的弹簧非线性模拟了四种具有不同严重程度的损伤:双线性刚度,死区,饱和度和库仑摩擦。对于所有严重程度,在建议的三维空间内,四种类型的损坏都可以很好地分开,从而突出了其在分类方面的巨大潜力。

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