Structural health monitoring is important to make sure bridges do not fail. Since direct monitoring can be complicated and expensive, indirect methods have been a focus on research. Indirect monitoring can be much cheaper and easier to conduct, however there are challenges with getting accurate results. This work focuses on damage quantification by using accelerometers. Tests were conducted on a model bridge and car with four accelerometers attached to to the vehicle. Different weights were placed on the bridge to simulate different levels of damage, and 31 tests were run for 20 different damage levels. The acceleration data collected was normalized and a Fast-Fourier Transform (FFT) was performed on that data. Both the normalized acceleration data and the normalized FFT data were inputted into a Non-Linear Principal Component Analysis (separately) and three principal components were extracted for each data set. Support Vector Regression (SVR) and Gaussian Process Regression (GPR) were used as the supervised machine learning methods to develop models. Multiple models were created so that the best one could be selected, and the models were compared by looking at their Mean Squared Errors (MSE). This methodology should be applied in the field to measure how effective it can be in real world applications.
翻译:由于直接监测可能复杂而昂贵,间接方法一直是研究的重点,间接监测可能成本低得多,而且比较容易进行,但是在取得准确结果方面也有困难。这项工作的重点是使用加速计对损害进行量化;在装有4个加速计的模型桥和汽车上进行了测试,模拟不同程度的损坏,在桥上进行了不同重量的测试,在20个不同的损坏水平上进行了31次测试。收集的加速数据已经正常化,对这些数据进行了快速转换(FFT),对数据进行了快速加速数据和正常的FFFT数据都进行了标准化的加速数据和正常的FFT数据都输入了非延迟主要部件分析(单独),为每个数据集提取了3个主要部件。支持矢量递减和高西亚进程回归(GPR)作为受监督的机器学习方法用于开发模型。创建了多个模型,以便选择了最佳数据,对模型进行了快速变换(FFT),并对模型进行了测试,从而可以选择最佳数据,并将模型和正常的FFFTFT数据都输入到非延迟元元元分析中(Sqal road) 应用了这个模型。