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A Gaussian process-based approach to cope with uncertainty in structural health monitoring

机译:基于高斯过程的方法来应对结构健康监测中的不确定性

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摘要

Structural health monitoring is widely applied in industrial sectors as it reduces costs associated with maintenance intervals and manual inspections of damage in sensitive structures, while enhancing their operation safety. A major concern and current challenge in developing robust structural health monitoring systems, however, is the impact of uncertainty in the input training parameters on the accuracy and reliability of predictions. The aim of this article is to adapt an advanced statistical pattern recognition technique capable of considering variations in input parameters and arriving at a new structural health monitoring system more immune to the effect of uncertainty. Gaussian processes have been implemented to predict the state of damage in a typical composite airfoil structure. Different covariance functions were evaluated during the training stage of structural health monitoring. Results through a case study showed a remarkable capability of the Gaussian process-based approach to deal with uncertainty in the pattern recognition problem in structural health monitoring of a multi-layer composite airfoil structure. To illustrate robustness advantage of the approach as compared to conventional neural network models, the damage size and location prediction accuracy of the Gaussian process structural health monitoring has been compared to multi-layer perceptron neural networks. Some practical insights and limitations of the approach have also been outlined.
机译:结构健康监测已广泛应用于工业领域,因为它降低了维护间隔和人工检查敏感结构损坏的相关成本,同时提高了它们的操作安全性。然而,在开发健壮的结构健康监测系统时,主要的关注和当前的挑战是输入训练参数的不确定性对预测的准确性和可靠性的影响。本文的目的是采用一种先进的统计模式识别技术,该技术能够考虑输入参数的变化并获得一种新的结构健康监测系统,该系统更不受不确定性影响。已采用高斯过程来预测典型复合翼型结构中的损坏状态。在结构健康监测的训练阶段评估了不同的协方差函数。通过案例研究得出的结果表明,基于高斯过程的方法在多层复合翼型结构的结构健康监测中能够解决模式识别问题中的不确定性。为了说明与常规神经网络模型相比该方法的鲁棒性优势,已将高斯过程结构健康监测的损伤大小和位置预测精度与多层感知器神经网络进行了比较。还概述了该方法的一些实际见解和局限性。

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