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Differentiation of discrete data with unequal measurement intervals and quantification of uncertainty in differentiation using Bayesian compressive sampling

机译:使用贝叶斯压缩采样的不同测量间隔的离散数据的分化和不同分化的不确定性

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摘要

Calculation of derivatives on discrete measurement data with unequal intervals is often required in geotechnical engineering, such as interpretation of stiffness reduction curve of soil from pressuremeter test data, pile lateral responses from inclinometer data. Such a task is however tricky and challenging, because a small error or noise in the measurements may amplify and lead to huge fluctuations in the derivatives obtained. The amplification becomes increasingly significant as the order of derivative increases. It is therefore of great importance to evaluate reliability of the derivatives obtained and quantify the uncertainty associated with the derivative calculation. A Bayesian compressive sampling-based method is proposed in this paper to address this problem. It not only provides high-order derivatives on discrete measurement data, even at un-sampled locations, but also quantifies the uncertainty associated with the derivatives obtained and offers an index to evaluate reliability of the derivatives obtained. The proposed approach is illustrated using both real-life pressuremeter data and numerical example of pile lateral responses. A comparison is also made between the proposed method and several existing methods in geotechnical literature. It shows that the proposed method performs better than existing methods and it is applicable to problems with both elastic and plastic soil responses.
机译:在岩土工程中通常需要计算具有不平等的离散测量数据的衍生物,例如来自压力测定试验数据的土壤刚度减少曲线的解释,从倾斜度计数据中堆积横向响应。然而,这种任务是棘手和具有挑战性的,因为测量中的误差或噪音可能会放大并导致所获得的衍生物的巨大波动。随着衍生物的顺序增加,扩增变得越来越重要。因此,重视评估获得的衍生物的可靠性并量化与衍生计算相关的不确定性。本文提出了一种基于贝叶斯压缩采样的方法来解决这个问题。它不仅在离散测量数据上提供了高阶导数,即使在未采样的位置,也会量化与所获得的衍生物相关的不确定性,并提供评估所获得的衍生物可靠性的指数。使用真实的压力表数据和桩横向响应的数值例来说明所提出的方法。还在岩土学文献中提出的方法和几种现有方法之间进行比较。它表明,该方法比现有方法更好,适用于弹性和塑料土壤反应的问题。

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