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A Brief Review on the Application of Sound in Pavement Monitoring and Comparison of Tire/Road Noise Processing Methods for Pavement Macrotexture Assessment

机译:浅谈声音在路面监测中的应用及路面宏观文化评估轮胎/道路噪声处理方法的应用

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摘要

Data acquisition and data processing are at the core of pavement management systems. Nowadays, traditional methods of data collection are rarely used in developed countries due to the considerable disadvantages of the traditional methods compared to the automated ones, such as the slow pace of data collection, endangering the safety of the human operators collecting the data, considerable cost, collecting data from only a limited section of road networks, and inconsistency among the data collected by different operators. In contrast, automated methods alleviate the majority of these problems. However, the main drawback of the automated methods is the high cost of purchase, implementation, and maintenance of the equipment, which has deterred their use in developing countries with limited financial resources. To address this problem, developing a new automated method that reduces the production costs while keeping the required accuracy and performance seems imperative. The goal of this research is to investigate the use of microphones, as inexpensive equipment with acceptable accuracy, for collecting pavement macrotexture data, which is an input to the pavement management system. The proposed method is based on the tire/road interaction noise. To this end, a review of the previous researches on audio-based monitoring of various pavement features is presented. By considering the results of the related researches and the goals of this work, a new setup for data collection and an accompanying signal processing method is proposed. To develop and evaluate the proposed method, data from six standard road sections of a test field are collected. To process the collected data, PCA, Cepstrum, LPC, LSF, PSD, and Wavelet methods are employed. The SVM and KNN classification methods are used to evaluate the results of the signal processing step, which is performed in various frequency bands. The best results are obtained by using the Cepstrum signal processing method along with the SVM classifier in the 3000-5000 Hz frequency band resulting in an accuracy of 95% on the test data and the precision error of 1%.
机译:数据采集​​和数据处理是路面管理系统的核心。如今,由于传统方法的相当大的缺点与自动化的方法相当大的方法,如数据收集速度缓慢,危及收集数据的安全性,相当大的成本,从仅限于路线网络的限量部分收集数据,以及不同运营商收集的数据之间的不一致。相比之下,自动化方法减轻了大多数这些问题。然而,自动化方法的主要缺点是设备的购买,实施和维护的高成本,这使得它们在有限的财务资源有限的发展中国家。为了解决这个问题,开发一种新的自动化方法,可降低生产成本,同时保持所需的准确性和性能似乎势在必行。该研究的目标是调查使用麦克风的使用,作为具有可接受的精度的廉价设备,用于收集路面宏观文化数据,这是对人行道管理系统的输入。该方法基于轮胎/道路交互噪声。为此,介绍了对先前对各种路面特征的基于音频监测的研究综述。通过考虑相关研究的结果和这项工作的目标,提出了一种用于数据收集的新设置和伴随信号处理方法。要开发和评估所提出的方法,收集来自六个标准路段的数据。为了处理所收集的数据,采用PCA,Cepstrum,LPC,LSF,PSD和小波方法。 SVM和KNN分类方法用于评估在各种频带中执行的信号处理步骤的结果。通过使用综衣信号处理方法以及3000-5000Hz频带中的SVM分类器以及测试数据的精度和1%的精度误差产生最佳结果。

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  • 来源
    《Archives of Computational Methods in Engineering》 |2021年第4期|2977-3000|共24页
  • 作者单位

    Amirkabir Univ Technol Dept Civil & Environm Engn 424 Hafez Ave Tehran 158754413 Iran;

    Amirkabir Univ Technol Dept Elect Engn 424 Hafez Ave Tehran 158754413 Iran;

    Amirkabir Univ Technol Dept Civil & Environm Engn 424 Hafez Ave Tehran 158754413 Iran;

    Amirkabir Univ Technol Dept Elect Engn 424 Hafez Ave Tehran 158754413 Iran;

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  • 正文语种 eng
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  • 入库时间 2022-08-19 02:16:49

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