Road roughness is a very important road condition for the infrastructure, as the roughness affects both the safety and ride comfort of passengers. The roads deteriorate over time which means the road roughness must be continuously monitored in order to have an accurate understand of the condition of the road infrastructure. In this paper, we propose a machine learning pipeline for road roughness prediction using the vertical acceleration of the car and the car speed. We compared well-known supervised machine learning models such as linear regression, naive Bayes, k-nearest neighbor, random forest, support vector machine, and the multi-layer perceptron neural network. The models are trained on an optimally selected set of features computed in the temporal and statistical domain. The results demonstrate that machine learning methods can accurately predict road roughness, using the recordings of the cost approachable in-vehicle sensors installed in conventional passenger cars. Our findings demonstrate that the technology is well suited to meet future pavement condition monitoring, by enabling continuous monitoring of a wide road network.
翻译:道路粗糙是基础设施非常重要的道路条件,因为粗糙既影响乘客的安全,也影响乘客的舒适度;道路逐渐恶化,这意味着必须不断监测道路粗糙度,以便准确了解道路基础设施的状况;在本文件中,我们提出利用汽车垂直加速和汽车速度来预测道路粗糙度的机械学习管道;我们比较了众所周知的受监督的机器学习模式,如线性回归、天真贝耶斯、K最近邻、随机森林、辅助矢量机和多层感应神经网络;这些模型经过了在时间和统计领域计算的最佳选择的一套特征的培训;结果显示,机器学习方法能够准确预测道路粗度,使用常规客车内安装的可成本接近的车辆传感器的录音记录;我们的调查结果表明,通过对宽广的公路网络进行持续监测,这种技术非常适合今后的路面状况监测。