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Travel time prediction for highway network based on the ensemble empirical mode decomposition and random vector functional link network

机译:基于集合经验模式分解和随机向量功能链路网络的公路网络旅行时间预测

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摘要

Travel time prediction supplies data support for the management and operation of the highway network. To deal with this problem, a model based on ensemble empirical mode decomposition and random vector functional link network is proposed in this paper. Ensemble empirical mode decomposition is firstly employed to decompose the complex travel time data series into several simple functions, which are then represented by the same number of random vector functional link networks. Finally, the outputs of all networks are combined by linear addition as the prediction results. A historical travel time data series ( from 1 August 2016 to 1 November 2016) of two highways in China is investigated by the proposed models. For comparison, five individual prediction models and their respective ensemble variants are implemented for the same task. The results show that the proposed model outperforms all the other models in terms of symmetric mean absolute percentage error and normalized root mean square error. As for computational speed, the proposed model ranks the first among all the ensemble models. Moreover, the ensemble empirical mode decomposition is better than the empirical mode decomposition. The Friedman statistical test also confirms the results of the comparison. Experimental results reveal that the proposed model reaches the best overall performance and is a very promising model for complex travel time prediction. (C) 2018 Elsevier B.V. All rights reserved.
机译:旅行时间预测为高速公路网络的管理和运营提供数据支持。为了解决这个问题,本文提出了一种基于集合经验模式分解和随机向量功能链路网络的模型。首先采用集合经验模式分解来将复杂的旅行时间数据序列分解为几个简单功能,然后由相同数量的随机向量功能链路网络表示。最后,通过作为预测结果的线性添加来组合所有网络的输出。历史旅行时间数据系列(2016年8月1日至2016年11月1日)中国的两条高速公路被拟议的模型调查。为了比较,为相同的任务实现了五种单独的预测模型及其各自的集合变体。结果表明,该模型在对称均值百分比误差和归一化根均方误差方面优于所有其他模型。至于计算速度,所提出的模型在所有集合模型中排名第一。此外,集合经验模式分解优于经验模式分解。 Friedman统计测试还证实了比较结果。实验结果表明,拟议的模型达到了最佳的整体性能,是复杂旅行时间预测的非常有希望的模型。 (c)2018 Elsevier B.v.保留所有权利。

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