基于智能手机测量的路面粗糙度回归模型的开发

IF 2.6 Q1 ENGINEERING, MULTIDISCIPLINARY Journal of Engineering Design and Technology Pub Date : 2022-05-24 DOI:10.1108/jedt-12-2021-0723
Turki I. Al-Suleiman (Obaidat), Yazan Ibrahim Alatoom
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引用次数: 3

摘要

本文的目的是研究使用智能手机粗糙度测量来开发路面粗糙度回归模型的可能性,该模型是路面年龄、交通负荷和交通量变量的函数。此外,还研究了路面修补和路面老化对路面粗糙度的影响。工作重点是建立路面粗糙度预测模型,并将这些模型应用于路面管理系统(PMS),以帮助决策者通过经济有效的方法选择最佳的维护和修复(M&R)方案。设计/方法/方法使用包括滤波和处理技术在内的信号处理技术,从智能手机加速度计传感器收集的原始加速度数据中获得国际粗糙度指数(IRI)。将获得的IRI值作为因变量输入到分析回归模型中,以及经过适当转换的几个自变量。根据研究结果,建立了几个决定系数(R2)变化较大的回归模型。最优模型包括路面年龄、累计交通量(∑TV)和施工质量因子(CQF), R2 = 0.63。在a水平< 0.05时,路面破损和修补的影响显著。铺装对路面平整度的影响大于其他路面病害的影响。实际意义本文的结果和方法可用于未来路面平整度的预测,帮助决策者估计路面平整度需求。工作重点是建立IRI预测模型,并将这些模型应用于PMS,以帮助决策者选择最佳的m&r选项。原创性/价值为了建立合理的路面粗糙度模型,使用自动化程序收集粗糙度数据至关重要。但是,在发展中国家应用这些程序面临一些困难,例如粗糙设备的价格和操作费用高以及缺乏技术经验。使用智能手机上的IRI值的优势在于,与使用自动化仪器相比,粗糙度评估调查可以扩展到覆盖整个道路网络,成本更低。因此,如果粗糙度调查覆盖更多的道路,将提高预测模型的精度。
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Development of pavement roughness regression models based on smartphone measurements
Purpose The purpose of this paper was to study the possibility of using smartphone roughness measurements for developing pavement roughness regression models as a function of pavement age, traffic loading and traffic volume variables. Also, the effects of patching and pavement distresses on pavement roughness were investigated. The work focused on establishing pavement roughness prediction models and applying these models to pavement management systems (PMS) to help decision-makers choose the best maintenance and rehabilitation (M&R) options by using cost-effective methods. Design/methodology/approach Signal processing techniques including filtering and processing techniques were used to obtain the International Roughness Index (IRI) from raw acceleration data collected from smartphone accelerometer sensors. The obtained IRI values were inputted as a dependent variable in analytical regression models as well as several independent variables with proper transformations. Findings According to the study results, several regression models were developed with a big variation in the coefficients of determination (R2). However, the best models included pavement age, accumulated traffic volume (∑TV) and construction quality factor (CQF) with R2 equal to 0.63. It was also found that the effects of pavement distresses and patching was significant at a-level < 0.05. The patching effect on pavement roughness was found higher than the effect of other pavement distresses. Practical implications The presented results and methods in this paper could be used in the future predictions of pavement roughness and help the decision-makers to estimate M&R needs. The work focused on establishing IRI prediction models and applying these models to the PMS to help decision-makers choose the best M & R options. Originality/value To develop sound pavement roughness models, it is essential to collect roughness data using automated procedures. However, applying these procedures in developing countries faces several difficulties such as the high price and operation costs of roughness equipment and lack of technical experience. The advantage of using IRI values taken from smartphones is that the roughness evaluation survey may be expanded to cover the full road network at a cheaper cost than with automated instruments. Therefore, if the roughness survey covers more roads, the prediction model’s accuracy will be improved.
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来源期刊
Journal of Engineering Design and Technology
Journal of Engineering Design and Technology ENGINEERING, MULTIDISCIPLINARY-
CiteScore
6.50
自引率
21.40%
发文量
67
期刊介绍: - Design strategies - Usability and adaptability - Material, component and systems performance - Process control - Alternative and new technologies - Organizational, management and research issues - Human factors - Environmental, quality and health and safety issues - Cost and life cycle issues - Sustainability criteria, indicators, measurement and practices - Risk management - Entrepreneurship Law, regulation and governance - Design, implementing, managing and practicing innovation - Visualization, simulation, information and communication technologies - Education practices, innovation, strategies and policy issues.
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