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Damage diagnosis algorithms for wireless structural health monitoring.

机译:用于无线结构健康监测的损伤诊断算法。

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摘要

Recent research efforts in wireless structural health monitoring have resulted in an explosion in the development of new sensors. Little attention, however, has been focused on the efficient and effective use of the data collected by these sensors. To this end, three local sensor based damage diagnosis algorithms using statistical signal processing and pattern classification techniques have been developed in this dissertation. The main features of these algorithms are that they are simple, robust and computationally efficient.; The first algorithm uses time series to model the vibration signal and defines a damage sensitive feature DSF using the first three autoregressive (AR) coefficients. A t-test on the DSF's is used to discriminate between an undamaged state and a damaged state. This algorithm is valid for linear and stationary signals.; The second algorithm utilizes the first three AR coefficients as the feature vector. Damage detection is performed using the Gaussian Mixture Models (GMM's) and the gap statistic. This algorithm, like the first algorithm described above, is valid for linear, stationary signals. A damage measure has been developed using the Mahalanobis distance between the means of the damaged and undamaged datasets.; The third algorithm uses the wavelet energies at the fifth, sixth and seventh dyadic scales as feature vectors. This algorithm allows the use of non-stationary signals. This algorithm requires a creation of a database of baseline signals. The first part of this algorithm requires finding that signal in the database closest to the new signal. The second part of this algorithm is to obtain the feature vectors. Both of these steps are performed using principal components analysis. Damage detection is performed using the k-means algorithm in conjunction with the gap statistic. A damage measure has been developed using the Euclidean distance between the means of the damaged and undamaged feature vector.; The performance of the developed algorithms is validated using the datasets of the ASCE Benchmark Structure. It is observed that the damage patterns as defined in the ASCE Benchmark Structure are consistently identified using these algorithms. The damage measures are also shown to correlate well with the extent of damage.
机译:无线结构健康监测的最新研究成果导致了新传感器的发展。然而,很少有注意力集中在有效和有效地使用这些传感器收集的数据上。为此,本文开发了三种使用统计信号处理和模式分类技术的基于局部传感器的损伤诊断算法。这些算法的主要特征是它们简单,健壮且计算效率高。第一种算法使用时间序列对振动信号进行建模,并使用前三个自回归(AR)系数定义损伤敏感特征DSF。 DSF的t检验用于区分未损坏状态和损坏状态。该算法对线性和平稳信号均有效。第二种算法利用前三个AR系数作为特征向量。使用高斯混合模型(GMM)和间隙统计量进行损伤检测。与上述第一种算法一样,该算法对于线性固定信号也有效。使用损坏和未损坏的数据集的均值之间的马氏距离来制定损坏度量。第三算法使用第五,第六和第七二进制尺度的小波能量作为特征向量。该算法允许使用非平稳信号。该算法需要创建基线信号数据库。该算法的第一部分要求在数据库中找到最接近新信号的那个信号。该算法的第二部分是获得特征向量。这两个步骤都是使用主成分分析执行的。结合间隙统计量使用k-means算法执行损坏检测。已经使用受损和未受损特征向量的均值之间的欧几里德距离来开发一种损坏度量。使用ASCE基准结构的数据集验证了开发算法的性能。可以看出,使用这些算法可以一致地确定ASCE基准结构中定义的损坏模式。还显示了损坏程度与损坏程度密切相关。

著录项

  • 作者

    Kesavan, Krishnan Nair.;

  • 作者单位

    Stanford University.;

  • 授予单位 Stanford University.;
  • 学科 Engineering Civil.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;
  • 关键词

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