Smartphone-Based Cost-Effective Pavement Performance Model Development Using a Machine Learning Technique with Limited Data

IF 2.7 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Infrastructures Pub Date : 2024-01-03 DOI:10.3390/infrastructures9010009
Samiulhaq Wasiq, A. Golroo
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Abstract

Road networks play a significant role in each country’s economy, especially in countries such as Afghanistan, which is strategically located in the international transit path from Europe to East Asia. In such a country, pavement performance models are fundamental for the pavement maintenance planning that provides high-quality infrastructure for transporting goods and travelers. However, due to the lack of a budget for pavement monitoring and maintenance in Afghanistan, transportation networks and pavement condition data have not been widely acquired for the development of a pavement performance model. The main aim of this study is to use a machine learning technique to, for the first time, develop a pavement performance model for Afghanistan that uses simple, cost-effective, and fairly accurate data—collected via smartphones—and that is based on a case study of over 550 km of Afghanistan’s highways. First, the current condition of Afghanistan’s road network is investigated using a smartphone. Then, collected data are prepared and analyzed so as to estimate the pavement condition index (PCI). Finally, a pavement performance model for PCI is developed using pavement age with an adequate coefficient of determination of 0.70 and successfully validated. It is concluded that the proposed approach is efficient and effective when developing a performance model in other developing countries encountering such data and budget limitations.
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利用有限数据的机器学习技术开发基于智能手机的经济高效路面性能模型
公路网在每个国家的经济中都发挥着重要作用,尤其是像阿富汗这样的国家,它位于从欧洲到东亚的国际过境通道上,地理位置十分重要。在这样的国家,路面性能模型是路面维护规划的基础,可为货物和旅客运输提供高质量的基础设施。然而,由于阿富汗缺乏用于路面监测和维护的预算,因此尚未广泛获取用于开发路面性能模型的交通网络和路面状况数据。本研究的主要目的是利用机器学习技术,通过智能手机收集简单、经济、相当准确的数据,并基于对阿富汗超过 550 公里高速公路的案例研究,首次为阿富汗开发出路面性能模型。首先,使用智能手机调查阿富汗公路网的现状。然后,对收集到的数据进行准备和分析,以估算路面状况指数(PCI)。最后,利用路面龄期开发了 PCI 路面性能模型,其确定系数为 0.70,并成功进行了验证。结论是,当其他发展中国家遇到此类数据和预算限制时,所建议的方法在开发性能模型方面是高效和有效的。
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来源期刊
Infrastructures
Infrastructures Engineering-Building and Construction
CiteScore
5.20
自引率
7.70%
发文量
145
审稿时长
11 weeks
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