基于多核学习的速度估计

Chao Wei, Jianli Xiao, Yuncai Liu
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引用次数: 3

摘要

交通状态识别是智能交通系统的核心任务之一。为了正确识别交通流的状态,必须准确地获得交通速度。在上海,大多数工业环路检测器(ILDs)以单回路方式安装。这些ild只能检测流量、饱和度等参数,而不能检测速度。如果能够准确地挖掘交通流与车速之间的关系,就可以直接利用流量数据得到车速。本研究的目的是利用多核支持向量回归(MKL-SVR)算法对交通速度与流量之间的关系进行建模,从而准确地估计出交通速度。对多项式拟合算法、BP神经网络算法、支持向量回归算法和mkl -支持向量回归算法进行了大量的实验评价。实验结果表明,MKL-SVR具有最好的鲁棒性。
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Speed estimation based on multiple kernel learning
Traffic state identification is one of the core missions of Intelligent Transportation Systems. In order to correctly identify the state of traffic flow, the traffic speed must be obtained accurately. In Shanghai, most of the industrial loop detectors (ILDs) are installed in a single loop way. These ILDs can only detect the parameters of flow, saturation, etc., but the speed can not be detected. If the relationship between the traffic flow and speed can be mined accurately, we can obtain the speed using the flow data directly. The purpose of this study is to use multiple kernel support vector regression (MKL-SVR) algorithm to model the relationship between the traffic speed and flow, then estimate the speed accurately. Extensive experiments have been performed to evaluate the performances of the four algorithms: polynomial fitting algorithm, BP neural networks, SVR and MKL-SVR. The experimental results show that MKL-SVR has the best and most robust performances.
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