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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Short-Term Traffic Speed Forecasting Based on Data Recorded at Irregular Intervals
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Short-Term Traffic Speed Forecasting Based on Data Recorded at Irregular Intervals

机译:基于不规则间隔记录数据的短期交通速度预测

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摘要

Recent growth in demand for proactive real-time transportation management systems has led to major advances in short-time traffic forecasting methods. Recent studies have introduced time series theory, neural networks, and genetic algorithms to short-term traffic forecasting to make forecasts more reliable, efficient, and accurate. However, most of these methods can only deal with data recorded at regular time intervals, which restricts the range of data collection tools to presence-type detectors or other equipment that generates regular data. The study reported here is an attempt to extend several existing time series forecasting methods to accommodate data recorded at irregular time intervals, which would allow transportation management systems to obtain predicted traffic speeds from intermittent data sources such as Global Positioning System (GPS). To improve forecasting performance, acceleration information was introduced, and information from segments adjacent to the current forecasting segment was adopted. The study tested several methods using GPS data from 480 Hong Kong taxis. The results show that the best performance in terms of mean absolute relative error is obtained by using a neural network model that aggregates speed information and acceleration information from the current forecasting segment and adjacent segments.
机译:对主动实时交通管理系统的需求的最近增长导致短时交通预测方法的重大进步。最近的研究已将时间序列理论,神经网络和遗传算法引入到短期流量预测中,以使预测更加可靠,高效和准确。但是,这些方法中的大多数只能处理以固定时间间隔记录的数据,这将数据收集工具的范围限制为存在型检测器或其他生成常规数据的设备。此处报告的研究是尝试扩展几种现有的时间序列预测方法,以适应以不规则的时间间隔记录的数据,这将使运输管理系统能够从诸如全球定位系统(GPS)之类的间歇数据源获得预测的行车速度。为了提高预测性能,引入了加速度信息,并采用了与当前预测分段相邻的分段的信息。这项研究使用来自480辆香港出租车的GPS数据测试了几种方法。结果表明,通过使用神经网络模型来获得平均绝对相对误差方面的最佳性能,该模型将来自当前预测段和相邻段的速度信息和加速度信息进行汇总。

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