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Robust Variable Input Observer for Structural Health Monitoring of Systems Experiencing Harsh Extreme Environments

机译:鲁棒可变输入观察者,体系遇到严苛的极端环境的系统健康监控

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Systems experiencing events in the order of 10μs-10ms timescales, for instance high-rate dynamics or harsh extreme environments, may encounter rapid damaging effects. If the structural health of such systems could be accurately estimated in a timely manner, preventative measures could be employed to minimize adverse effects Previously, a Variable Input Observer (VIO) coupled with a neuro-observer was proposed by the authors as a potential solution in monitoring their structural health. The objective of the VIO is to provide state estimation based on an optimal input space allowed to vary as a function of time The VIO incorporates the use of mutual information and false nearest neighbors techniques to automatically compute the time delay and embedding dimension at set time intervals. The time delay and embedding dimensions are then used to vary the input space to achieve optimal performance for the estimator based on the observed measurements from sensors. Here, we augment the VIO with a smooth transitioning technique to provide enhanced robustness. The performance of the algonthm is investigated using experimental data obtained from a complex engineering system experiencing a harsh extreme environment. Results show that the enhanced VIO incorporating a smooth transitioning input space outperforms the previous VIO strategies which allowed rapid mput space adaptation.
机译:系统遇到10μ-10ms时间尺度的事件,例如高速动态或严格的极端环境,可能会遇到快速的损坏效果。如果可以及时地精确地估计这种系统的结构健康,则可以采用预防性测量来最小化先前的不利影响,作者提出了与神经观察者联系的可变输入观察者(VIO)作为潜在的解决方案监测他们的结构健康。 VIO的目的是提供基于所允许的最佳输入空间的状态估计,因为VIO包含互信息和错误最近邻居技术以在设定的时间间隔自动计算时间延迟和嵌入维度的时间。然后使用时间延迟和嵌入尺寸来改变输入空间以基于来自传感器的观察到的测量来实现估算器的最佳性能。在这里,我们使用平滑的过渡技术增强了VIO,以提供增强的鲁棒性。使用从经历严酷的极端环境的复杂工程系统获得的实验数据来研究藻类的性能。结果表明,增强型VIO结合了平滑的转换输入空间优于先前的VIO策略,允许快速捕捉空间适应。

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