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Identifying patterns under both normal and abnormal traffic conditions for short-term traffic prediction

机译:识别正常和异常交通状况下的模式以进行短期交通预测

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Abstract: In this paper we propose a model for accurate traffic prediction under both normal and abnormal conditions. The model is based on the identification of the traffic patterns shown under both normal and abnormal conditions using the density-based clustering algorithm DBSCAN, and the use of different prediction models for each separate cluster that represents a traffic pattern. The k- Nearest Neighbor and the Support Vector Regression algorithms from the machine learning field and the ARIMA model from time series analysis were trained and tested. Preliminary experimental results indicate that the proposed model outperforms typical traffic prediction models from the relevant literature in terms of prediction accuracy under both normal and abnormal conditions.
机译:摘要:在本文中,我们提出了一种用于在正常和异常情况下进行准确交通预测的模型。该模型基于使用基于密度的聚类算法DBSCAN识别在正常和异常情况下显示的流量模式,以及对代表流量模式的每个单独群集使用不同的预测模型。训练和测试了来自机器学习领域的k最近邻算法和支持向量回归算法以及来自时间序列分析的ARIMA模型。初步实验结果表明,该模型在正常和异常情况下的预测准确性均优于相关文献中的典型交通预测模型。

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