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Prediction of short-term average vehicular velocity considering weather factors in urban VANET environments

机译:考虑城市华丽环境的天气因素,预测短期平均车辆速度

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Recently, accurate prediction of short-term traffic flow is crucial to proactive traffic management systems in ITS; however, the drivers need the average vehicular velocity more than traffic flow while driving. The drivers could change the path immediately according to the average vehicular if the average velocity of the next road segment is predicable. In this paper a neural network is used for prediction of average velocity, besides vehicles can collect the average velocity of current road segment to adjust the predicted average velocity of the next road segment. The collected average velocity is acquired from neighbor vehicles through VANET. There is no research considering the impact of weather factors on the average vehicular velocity previously. An example of weather condition affects the velocity, it is always low vehicular velocity on rainy day or in fog. In this paper, the proposed prediction considers the weather factors that include temperature, humidity and rainfall. This research is focus on urban VANET environments of Taipei in Taiwan, and the results show that the prediction of average velocity considering weather factors is more accurate than that without considering weather factors.
机译:最近,对短期交通流量的准确预测对于其主动交通管理系统至关重要;但是,驾驶员需要在驾驶时的平均车辆速度超过交通流量。如果下一道路段的平均速度是可预定的,则驱动器可以根据平均车辆立即改变路径。在本文中,神经网络用于预测平均速度,除了车辆可以收集电流道路段的平均速度以调节下一道路段的预测平均速度。通过VANET从邻居车辆中获取收集的平均速度。考虑到天气因素对先前平均车辆速度的影响没有研究。天气状况的一个例子会影响速度,雨天或雾中总是低的车辆速度。在本文中,所提出的预测考虑了包括温度,湿度和降雨的天气因素。本研究专注于台湾台北城市Vanet环境,结果表明,考虑到天气因素的情况更准确,预测平均速度更准确。

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