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Cloud-Assisted Real-Time Road Condition Monitoring System for Vehicles

机译:云辅助车辆实时路况监测系统

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摘要

Road infrastructure is the life line of the transportation industry and it should be monitored at regular intervals to ensure that it provides a smooth riding experience, safety to the passenger and causes less damage to the vehicles. Road conditions are affected by several factors such as weather conditions, accidents that have occurred, and regular wear and tear, hence it is difficult to monitor them in real-time. Previous research works on road monitoring systems can be broadly classified into three groups; the first group uses sensor data to detect road conditions based on a given threshold, the second employs a machine learning algorithm to acquire sensor data from the vehicle, while the third uses machine learning at the server then transmits the result back to the vehicle. The learning algorithms of groups two and three provide better results than group one. Group three yields the more accurate results, but at the cost of time. Therefore, in this paper, we propose a novel system that monitors road conditions in realtime by learning from the data obtained from built-in sensors of a smartphone that is mounted inside the vehicle. We have designed a lightweight learning algorithm that improves accuracy by interacting with the server and monitoring road conditions in real-time. The algorithm is based on k-means clustering and our experimental results show that it can classify road conditions based on the accelerometer data with 88.67% accuracy.
机译:道路基础设施是运输业的寿命,应定期监控,以确保它提供平稳的骑行经验,对乘客的安全性,并对车辆造成较少损坏。道路状况受到几个因素的影响,如天气条件,发生的事故,以及定期磨损和撕裂,因此很难实时监测它们。以前的道路监测系统的研究可以广泛分为三组;第一组使用传感器数据基于给定阈值来检测道路状况,第二个采用机器学习算法来获取来自车辆的传感器数据,而第三使用服务器的机器学习然后将结果发送回车辆。组二次和三组的学习算法提供比第一个的更好的结果。第三组产生更准确的结果,但在时间的成本上。因此,在本文中,我们提出了一种新颖的系统,其通过从安装在车内安装在车内的智能手机的内置传感器中获得的数据来实时监控道路状况。我们设计了一种轻量级学习算法,通过与服务器交互并实时监控道路条件来提高精度。该算法基于K-Means聚类,我们的实验结果表明它可以基于88.67 \%精度的加速度计数据对道路状况进行分类。

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