Tahsin Baykal, Fatih Ergezer, Serdal Terzi̇
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摘要

公路路面状况是保证交通安全的重要因素。道路路面的状况根据道路的气候条件而变化。为了根据气象因素记录道路路面的变化,在路面和道路气象信息站都安装了传感器。在智能交通系统范围内,利用传感器获取的数据,可以建立道路管理信息系统,实时观察道路路面状况。有了这些传感器数据,可以用不同的人工智能方法来估计路面状况。从而为决策者根据干、湿、结冰路面状况采取预防措施提供了重要信息。本研究的目的是基于气象参数对路面状况进行估计。为此,人们开发了深度学习模型。气温(tmp)、露点温度(dwp)、风速(sknt)、风向(drct)、阵风(gust)、路面传感器温度(tfs)和路面传感器状态(cond)参数被用于65966个数据集。准确度被用于深度学习模型的评估。因此,评价,确定最佳模型的精度值为0.88。此外,对最佳模型的检验集计算各类别的准确率、查全率、查准率和f1分值。
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Derin Öğrenme Yöntemi Kullanılarak Meteorolojik Parametrelere Dayalı Karayolu Kaplama Yüzey Durumunun Tahmini
The condition of the pavement surface on highways is an important factor in ensuring traffic safety. The condition of the road pavements varies according to the climatic conditions of the road. To record the variability of road pavements according to meteorological factors, both sensors placed in the pavement and road meteorology information stations are installed on the roadsides. Within the scope of intelligent transportation systems, the establishment of road management information systems and the status of the road pavement in real-time can be observed with the data obtained from the sensors. With these sensor data, the road surface condition can be estimated with different artificial intelligence methods. Thus, important information is provided for decision-makers in taking precautions according to the dry, wet, and icy road surface condition. In this study, it is purposed to estimate the road surface condition based on meteorological parameters. For this purpose, deep learning models have been developed. Air temperature (tmp), dew point temperature (dwp), wind speed (sknt), wind direction (drct), wind gust (gust), pavement sensor temperature (tfs), and pavement sensor condition (cond) parameters were used in 65966 datasets. Accuracy was used in the evaluation of deep learning models. Consequently, the evaluation, the accuracy value of the best model was determined as 0.88. In addition, accuracy, recall, precision, and F1-score values of each class were calculated for the test set of the best model.
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