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Kalman filter approach to traffic modeling and prediction,

机译:卡尔曼滤波方法用于交通建模和预测,

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Abstract: The objective of our work has been to develop and integrate prediction, control and optimization modules for use in highway traffic management. This is accomplished through the use of the Semantic Control paradigm, implementing a hybrid prediction/routing/control system, to model both macro-level as well a micro level. This paper addresses the design and operation of a Kalman filter that processes traffic sensor data in order to model and predict highway traffic volume. This data was given in the form of hourly traffic flow, and has been fit using a cubic spline method to allow observations at various time intervals. THe filter is augmented via the Method of Sage and Husa to identify the parameters of the system noise on-line, and to determine the dynamics of the traffic process iteratively to aid in the prediction of the future traffic. The results show a good ability to predict traffic flow at the sensors for several time periods in the future, as well as some noise rejection capabilities. !7
机译:摘要:我们的工作目标是开发和集成用于公路交通管理的预测,控制和优化模块。这是通过使用语义控制范式,实现混合预测/路由/控制系统来对宏级别和微观级别进行建模来实现的。本文介绍了卡尔曼滤波器的设计和操作,该滤波器处理交通传感器数据,以便对高速公路的交通流量进行建模和预测。该数据以每小时交通流量的形式给出,并已使用三次样条方法进行拟合以允许在不同时间间隔进行观察。通过Sage和Husa方法对滤波器进行增强,以在线识别系统噪声的参数,并迭代确定交通过程的动态性,以帮助预测未来的交通。结果显示出了很好的预测未来几个时间段传感器流量的能力,以及一些噪声抑制能力。 !7

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