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Bayesian multi-task learning methodology for reconstruction of structural health monitoring data

机译:贝叶斯多任务学习方法,用于重建结构健康监测数据

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摘要

Reconstruction of structural health monitoring data is a challenging task, since it involves time series data forecasting especially in the case with a large block of missing data. In this study, we propose a novel methodology for structural health monitoring data recovery in the context of Bayesian multi-task learning with multi-dimensional Gaussian process prior. The proposed methodology stands to model a series of tasks simultaneously rather than modeling each task independently while explicitly encoding the correlations among tasks that can be learnt efficiently from data. The primary advantage of Bayesian multi-task learning for data reconstruction is that it makes more efficient use of the data available and gives rise to enhanced reconstruction capability by making use of the underlying task relatedness. Since the modeling performance of the Gaussian process-based Bayesian approach heavily relies on the selected covariance function, particular focus has been laid on the influences of various kinds of covariance functions including the unblended and composite (hybrid) ones on reconstruction performance. The instrumented Canton Tower of 600 m high is used as a test bed to illustrate the effectiveness of the proposed method in reconstruction of structural health monitoring data. The traditional Bayesian single-task learning approach is also implemented for comparison purpose. The reconstruction results of the structural health monitoring data show that the proposed Bayesian multi-task learning methodology affords an excellent performance, while the Bayesian single-task learning method is unreliable in certain cases; yet, the selection of covariance function has a significant impact on the reconstruction performance of the proposed methodology. The work presented in this study also gains insight into how to choose an appropriate covariance function for reconstruction of missing structural health monitoring data.
机译:结构健康监测数据的重建是一个具有挑战性的任务,因为它涉及时间序列数据预测,特别是在大块缺失数据的情况下。在本研究中,我们提出了一种新的结构健康监测数据恢复的新方法,在贝叶斯多任务学习的背景下与多维高斯过程先前。所提出的方法能够同时模拟一系列任务,而不是独立建模每个任务,同时明确地编码可以从数据有效学习的任务之间的相关性。贝叶斯多任务学习对数据重建的主要优势是它使得可用的数据更有效地利用可用的数据,并通过利用潜在的任务相关性来增强重建能力。由于高斯工艺的贝叶斯方法的建模性能严重依赖于所选择的协方差函数,因此对各种协方差函数的影响奠定了特殊的重点,包括未经反感和复合性(混合)的重建性能。 600米高的仪表广州塔用作试验台,以说明所提出的方法在结构健康监测数据的重建中的有效性。还为比较目的实施了传统的贝叶斯单任务学习方法。结构健康监测数据的重建结果表明,提出的贝叶斯多任务学习方法提供了出色的性能,而贝叶斯单任务学习方法在某些情况下是不可靠的;然而,协方差函数的选择对提出的方法的重建性能产生了重大影响。本研究中提出的工作也会有助于如何选择如何选择适当的协方差,以重建缺失的结构健康监测数据。

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