Kim Soon-Young, Mukhiddinov Mukhriddin
Department of Physical Education, Gachon University, Seongnam 13120, Republic of Korea.
Department of Communication and Digital Technologies, University of Management and Future Technologies, Tashkent 100208, Uzbekistan.
Sensors (Basel). 2023 Oct 17;23(20):8525. doi: 10.3390/s23208525.
Structural health monitoring (SHM) has been extensively utilized in civil infrastructures for several decades. The status of civil constructions is monitored in real time using a wide variety of sensors; however, determining the true state of a structure can be difficult due to the presence of abnormalities in the acquired data. Extreme weather, faulty sensors, and structural damage are common causes of these abnormalities. For civil structure monitoring to be successful, abnormalities must be detected quickly. In addition, one form of abnormality generally predominates the SHM data, which might be a problem for civil infrastructure data. The current state of anomaly detection is severely hampered by this imbalance. Even cutting-edge damage diagnostic methods are useless without proper data-cleansing processes. In order to solve this problem, this study suggests a hyper-parameter-tuned convolutional neural network (CNN) for multiclass unbalanced anomaly detection. A multiclass time series of anomaly data from a real-world cable-stayed bridge is used to test the 1D CNN model, and the dataset is balanced by supplementing the data as necessary. An overall accuracy of 97.6% was achieved by balancing the database using data augmentation to enlarge the dataset, as shown in the research.
几十年来,结构健康监测(SHM)已在土木基础设施中得到广泛应用。使用各种各样的传感器对土木建筑的状态进行实时监测;然而,由于采集到的数据存在异常,确定结构的真实状态可能会很困难。极端天气、传感器故障和结构损坏是这些异常的常见原因。为了使土木结构监测取得成功,必须迅速检测到异常。此外,一种异常形式通常在SHM数据中占主导地位,这对于土木基础设施数据来说可能是个问题。异常检测的当前状态受到这种不平衡的严重阻碍。如果没有适当的数据清理过程,即使是前沿的损伤诊断方法也毫无用处。为了解决这个问题,本研究提出了一种用于多类不平衡异常检测的超参数调谐卷积神经网络(CNN)。使用来自实际斜拉桥的多类异常数据时间序列来测试一维CNN模型,并通过必要时补充数据来平衡数据集。如研究所示,通过使用数据增强来扩大数据集以平衡数据库,实现了97.6%的总体准确率。