College of Metropolitan Transportation, Beijing University of Technology, Beijing 100124, China.
College of Artificial Intelligence and Automation, Beijing University of Technology, Beijing 100124, China.
Sensors (Basel). 2020 Jan 27;20(3):685. doi: 10.3390/s20030685.
Short-term traffic state prediction has become an integral component of an advanced traveler information system (ATIS) in intelligent transportation systems (ITS). Accurate modeling and short-term traffic prediction are quite challenging due to its intricate characteristics, stochastic, and dynamic traffic processes. Existing works in this area follow different modeling approaches that are focused to fit speed, density, or the volume data. However, the accuracy of such modeling approaches has been frequently questioned, thereby traffic state prediction over the short-term from such methods inflicts an overfitting issue. We address this issue to accurately model short-term future traffic state prediction using state-of-the-art models via hyperparameter optimization. To do so, we focused on different machine learning classifiers such as local deep support vector machine (LD-SVM), decision jungles, multi-layers perceptron (MLP), and CN2 rule induction. Moreover, traffic states are evaluated using traffic attributes such as level of service (LOS) horizons and simple if-then rules at different time intervals. Our findings show that hyperparameter optimization via random sweep yielded superior results. The overall prediction performances obtained an average improvement by over 95%, such that the decision jungle and LD-SVM achieved an accuracy of 0.982 and 0.975, respectively. The experimental results show the robustness and superior performances of decision jungles (DJ) over other methods.
短期交通状态预测已成为智能交通系统 (ITS) 中先进出行者信息系统 (ATIS) 的一个组成部分。由于其复杂的特性、随机和动态的交通过程,准确的建模和短期交通预测极具挑战性。该领域的现有工作采用了不同的建模方法,这些方法侧重于拟合速度、密度或流量数据。然而,这些建模方法的准确性经常受到质疑,因此,这些方法进行的短期交通状态预测存在过拟合问题。我们通过超参数优化,使用最先进的模型来解决这个问题,以准确地对短期未来交通状态进行建模。为此,我们专注于不同的机器学习分类器,如局部深度支持向量机 (LD-SVM)、决策丛林、多层感知机 (MLP) 和 CN2 规则归纳。此外,还使用交通属性(如服务水平 (LOS) 范围和不同时间间隔的简单条件-决策规则)来评估交通状态。我们的研究结果表明,通过随机扫描进行超参数优化可获得更好的结果。整体预测性能平均提高了 95%以上,其中决策丛林和 LD-SVM 的准确率分别达到 0.982 和 0.975。实验结果表明,决策丛林 (DJ) 的稳健性和优越性能优于其他方法。