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Data Fusion to Improve the Concrete Diagnosis

机译:数据融合,提高具体诊断

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摘要

Numerous non-destructive testing (NDT) methods are used for concrete structures to obtain relevant data about material properties and damage states for reliable condition assessment. Whether the objective is to determine physical properties such as the porosity and the water saturation rate, or mechanical properties such as the elastic modulus or the compressive strength, sensitivity of NDT techniques to many characteristics of the material and its environment is a commonly encountered problem. Thus, accurate and reliable information is often difficult to extract due to the high level of uncertainty involved. Complementary use of different NDT methods for coherent combination of information obtained from each method is a sensible strategy to improve evaluation. The data fusion methodology presented in this paper makes use of the complementary data obtained from different non-destructive or destructive techniques to improve diagnosis reliability. In the case of imprecise and uncertain data, an assessment can still be made with a quantitative measure of the uncertainty involved. The methodology is based on the possibility theory and allows the selection of the best combination of data and techniques to evaluate the material. Applications of the methodology are presented and the results are discussed. Results show good agreement between estimations by data fusion and measured values. Also shown by the results is that the selection of complementary techniques is essential for a better estimation of indicators and improved diagnosis.
机译:许多非破坏性测试(NDT)方法用于混凝土结构,以获得有关可靠性条件评估的有关材料性质和损伤状态的相关数据。该目的是确定诸如孔隙率和水饱和速率的物理性质,或机械性能,如弹性模量或抗压强度,NDT技术对材料的许多特征及其环境的敏感性是通常遇到的问题。因此,由于所涉及的高度的不确定性,准确可靠的信息往往难以提取。互补使用不同NDT方法的用于从每种方法获得的信息的相干组合是一种有明智的策略,可以改善评估。本文呈现的数据融合方法利用从不同的非破坏性或破坏性技术获得的互补数据来提高诊断可靠性。在不精确和不确定的数据的情况下,仍然可以使用所涉及的不确定性的定量衡量来进行评估。该方法基于可能性理论,并允许选择数据和技术的最佳组合来评估材料。提出了方法的应用,并讨论了结果。结果显示数据融合和测量值之间的估计之间的良好一致性。结果表明,结果是互补技术的选择对于更好地估计指标和改善的诊断是必不可少的。

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