Research on noise reduction and data mining techniques for pavement dynamic response signals

Xue Xin, Yuepeng Jiao, Yunfeng Zhang, Ming Liang, Zhanyong Yao
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Abstract

Purpose This study aims to ensure reliable analysis of dynamic responses in asphalt pavement structures. It investigates noise reduction and data mining techniques for pavement dynamic response signals. Design/methodology/approach The paper conducts time-frequency analysis on signals of pavement dynamic response initially. It also uses two common noise reduction methods, namely, low-pass filtering and wavelet decomposition reconstruction, to evaluate their effectiveness in reducing noise in these signals. Furthermore, as these signals are generated in response to vehicle loading, they contain a substantial amount of data and are prone to environmental interference, potentially resulting in outliers. Hence, it becomes crucial to extract dynamic strain response features (e.g. peaks and peak intervals) in real-time and efficiently. Findings The study introduces an improved density-based spatial clustering of applications with Noise (DBSCAN) algorithm for identifying outliers in denoised data. The results demonstrate that low-pass filtering is highly effective in reducing noise in pavement dynamic response signals within specified frequency ranges. The improved DBSCAN algorithm effectively identifies outliers in these signals through testing. Furthermore, the peak detection process, using the enhanced findpeaks function, consistently achieves excellent performance in identifying peak values, even when complex multi-axle heavy-duty truck strain signals are present. Originality/value The authors identified a suitable frequency domain range for low-pass filtering in asphalt road dynamic response signals, revealing minimal amplitude loss and effective strain information reflection between road layers. Furthermore, the authors introduced the DBSCAN-based anomaly data detection method and enhancements to the Matlab findpeaks function, enabling the detection of anomalies in road sensor data and automated peak identification.
路面动态响应信号的降噪和数据挖掘技术研究
目的 本研究旨在确保对沥青路面结构的动态响应进行可靠分析。本文初步对路面动态响应信号进行了时频分析。本文首先对路面动态响应信号进行了时频分析,并使用两种常见的降噪方法,即低通滤波和小波分解重建,来评估它们在降低这些信号中的噪声方面的效果。此外,由于这些信号是在车辆加载时产生的,因此包含大量数据,并且容易受到环境干扰,可能会产生异常值。因此,实时、高效地提取动态应变响应特征(如峰值和峰值间隔)变得至关重要。 研究结果 该研究引入了一种改进的基于密度的噪声应用空间聚类(DBSCAN)算法,用于识别去噪数据中的异常值。结果表明,在指定频率范围内,低通滤波对减少路面动态响应信号中的噪声非常有效。通过测试,改进后的 DBSCAN 算法能有效识别这些信号中的异常值。此外,峰值检测过程使用了增强的 findpeaks 函数,即使在出现复杂的多轴重型卡车应变信号时,也能在识别峰值方面始终保持优异的性能。此外,作者还引入了基于 DBSCAN 的异常数据检测方法,并对 Matlab findpeaks 函数进行了改进,从而实现了道路传感器数据异常检测和峰值自动识别。
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