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Filling Missing Values in Spatial-temporal Data Collected from Traffic Sensors

机译:填充从交通传感器收集的时空数据中的缺失值

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Intelligent transportation systems (ITS) are critical to any smart city strategy. They are used to optimize the flow of urban traffic which in turn leads to a reduction in time spent traveling. In order for ITS to work properly, sensors that collect real-time traffic flow information from streets and highways are required so the ITS can know the current state of the traffic. However, such sensors are prone to failures and network faults. This poses a serious hindrance when performing data analysis and knowledge extraction on sensor data due to the fact that such data is composed of noisy and missing values. In this work, we benchmark several deep learning based methods for filling missing values in a dataset collected from 2013 to 2015 in the city of Oporto, Portugal. The dataset is composed of readings of 26 sensors that measure traffic information in 5 minute intervals. Around 12% of all values are missing.
机译:智能交通系统(ITS)对于任何智能城市战略都是至关重要的。它们可用于优化城市交通流量,进而减少旅行时间。为了使ITS正常工作,需要从街道和高速公路收集实时交通流信息的传感器,以便ITS可以了解交通的当前状态。但是,这样的传感器容易出现故障和网络故障。由于这样的数据由噪声值和缺失值组成的事实,这在对传感器数据执行数据分析和知识提取时构成了严重的障碍。在这项工作中,我们对几种基于深度学习的方法进行了基准测试,这些方法用于在2013年至2015年葡萄牙波尔图市收集的数据集中填充缺失值。该数据集由26个传感器的读数组成,这些传感器每5分钟测量一次交通信息。所有值中约有12%缺失。

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