Application of noise-cancelling and smoothing techniques in road pavement vibration monitoring data

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Abstract

Road pavement surfaces need routine and regular monitoring and inspection to keep the surface layers in high-quality condition. However, the population growth and the increases in the number of vehicles and the length of road networks worldwide have required researchers to identify appropriate and accurate road pavement monitoring techniques. The vibration-based technique is one of the effective techniques used to measure the condition of pavement degradation and the level of pavement roughness. The consistency of pavement vibration data is directly proportional to the intensity of surface roughness. Intense fluctuations in vibration signals indicate possible defects at certain points of road pavement. However, vibration signals typically need a series of pre-processing techniques such as filtering, smoothing, segmentation, and labelling before being used in advanced processing and analyses. This research reports the use of noise-cancelling and data-smoothing techniques, including high pass filter, moving average method, median, Savitzky-Golay filter, and extracting peak envelope method, to enhance raw vibration signals for further processing and classification. The results show significant variations in the impact of noise-cancelling and data-smoothing techniques on raw pavement vibration signals. According to the results, the high pass filter is a more accurate noise-cancelling and data smoothing technique on road pavement vibration data compared to other data filtering and data smoothing methods.

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噪声消除与平滑技术在路面振动监测数据中的应用
公路路面需要日常和定期的监测和检查,以保持路面层的高质量状态。然而,随着全球人口的增长、车辆数量的增加和道路网络长度的增加,研究人员需要找到合适而准确的道路路面监测技术。基于振动的技术是用于测量路面退化状况和路面粗糙度水平的有效技术之一。路面振动数据的一致性与表面粗糙度的强度成正比。振动信号的强烈波动表明路面的某些点可能存在缺陷。然而,振动信号通常需要一系列预处理技术,如过滤、平滑、分割和标记,然后才能用于高级处理和分析。本研究报告介绍了如何使用噪声消除和数据平滑技术,包括高通滤波器、移动平均法、中值法、萨维茨基-戈莱滤波器和提取峰值包络法,来增强原始振动信号,以便进一步处理和分类。结果显示,降噪和数据平滑技术对原始路面振动信号的影响存在明显差异。结果表明,与其他数据过滤和数据平滑方法相比,高通滤波器是一种更精确的路面振动数据降噪和数据平滑技术。
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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
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