考虑时空相关性的结构贝叶斯系统辨识

Ioannis Koune, Árpád Rózsás, Arthur Slobbe, Alice Cicirello
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引用次数: 1

摘要

随着成本的降低和传感器和监测系统技术(如光纤和应变片)的改进,越来越多的测量结果相互靠近。当在贝叶斯系统识别策略中使用这种空间密集的测量数据时,模型预测误差的相关性会变得显著。广泛采用的非相关高斯误差假设可能导致不准确的参数估计和过度自信的预测,从而导致次优决策。本文解决了在使用大型数据集时对结构进行贝叶斯系统识别的挑战,同时考虑了模型不确定性中的空间和时间依赖性。我们提出了一种有效评估对数似然函数的方法,并利用嵌套抽样来计算贝叶斯模型选择的证据。该方法首先在一个合成案例上进行了演示,然后应用于(测量的)实际钢桥。结果表明,模型预测不确定性的相关性假设得到了数据的有力支持。所提出的发展使得在执行贝叶斯系统识别时能够使用大型数据集并考虑依赖关系,即使在推断出相对大量的不确定参数时也是如此。
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Bayesian system identification for structures considering spatial and temporal correlation
Abstract The decreasing cost and improved sensor and monitoring system technology (e.g., fiber optics and strain gauges) have led to more measurements in close proximity to each other. When using such spatially dense measurement data in Bayesian system identification strategies, the correlation in the model prediction error can become significant. The widely adopted assumption of uncorrelated Gaussian error may lead to inaccurate parameter estimation and overconfident predictions, which may lead to suboptimal decisions. This article addresses the challenges of performing Bayesian system identification for structures when large datasets are used, considering both spatial and temporal dependencies in the model uncertainty. We present an approach to efficiently evaluate the log-likelihood function, and we utilize nested sampling to compute the evidence for Bayesian model selection. The approach is first demonstrated on a synthetic case and then applied to a (measured) real-world steel bridge. The results show that the assumption of dependence in the model prediction uncertainties is decisively supported by the data. The proposed developments enable the use of large datasets and accounting for the dependency when performing Bayesian system identification, even when a relatively large number of uncertain parameters is inferred.
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