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首页> 外文期刊>Computer-Aided Civil and Infrastructure Engineering >Convolutional neural networks for pavement roughness assessment using calibration-free vehicle dynamics
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Convolutional neural networks for pavement roughness assessment using calibration-free vehicle dynamics

机译:使用无需校准车辆动态的路面粗糙度评估卷积神经网络

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摘要

Road roughness is a measure of how uncomfortable a ride is, and provides an important indicator for the needs of roadway maintenance or repavement, which is closely tied to the state and federal budget prioritization. As such, accurate and timely monitoring of deteriorating road conditions and following maintenance are essential to improve the overall ride quality on the road. Various technologies, including vehicle-mounted laser profiling systems, have been developed and adopted for road roughness (e.g., IRI-International Roughness Index) measurement; however, their high cost limits their use. While recent advances in smartphone technologies allow us to use their embedded accelerometers for road roughness monitoring, the complicated process of necessary vehicle calibration hinders the widespread use of the technology in the actual practices. In this work, a deep learning IRI estimation method is proposed with the goal of using anonymous (i.e., calibration-free) vehicles and their responses measured by smartphones as road roughness sensors. A state-of-the-art deep learning algorithm (i.e., CNN-convolutional neural network) and multimetric vehicle dynamics data (i.e., accelerometer, gyroscope), possibly measured by drivers' smartphones, are employed for the purpose. Optimized CNN architecture and data configuration have been investigated to achieve the best performance. The efficacy of the proposed method has been numerically validated using real road IRI information (i.e., Speedway, Tucson, AZ), real driving speed profiles, and four different types of vehicle data with associated uncertainties.
机译:道路粗糙度是一种乘坐乘坐的令人不安的衡量标准,并为道路维护或重新进展提供了重要指标,这与国家和联邦预算优先级密切相关。因此,准确和及时监测恶化的道路条件和以下维护对于提高道路上的整体乘坐质量至关重要。已经开发和采用了包括车载激光分析系统在内的各种技术,用于道路粗糙度(例如,IRI-International粗糙度指数)测量;然而,他们的高成本限制了它们的使用。虽然智能手机技术的最近进步允许我们使用他们的嵌入式加速度计进行道路粗糙度监测,但是必要的车辆校准的复杂过程阻碍了该技术在实际实践中的广泛使用。在这项工作中,提出了一种深入学习的IRI估计方法,其目的是使用匿名(即校准)车辆及其智能手机测量的反应作为道路粗糙度传感器。为目的采用最先进的深度学习算法(即,CNN卷积神经网络)和多函数车辆动力学数据(即,加速度计,陀螺仪),可能是由司机智能手机测量的。已经研究了优化的CNN架构和数据配置以实现最佳性能。使用真正的道路IRI信息(即Speedway,Tucson,AZ),实际驾驶速度配置文件和具有相关不确定性的四种不同类型的车辆数据,已经进行了数控验证了该方法的功效。

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