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基于EEMD-PE-LSTM的高速公路路段交通状态预测方法OA北大核心

EEMD-PE-LSTM Based Traffic State Prediction Method for Freeway Section

中文摘要英文摘要

高速公路网络的快速发展与交通需求的多样化,使得交通拥堵、道路承载能力瓶颈、道路设计优化等问题愈发凸显,严重制约了出行者的出行体验和交通管理部门的服务效能.因此为了精准量化交通条件与气象条件对交通流参数预测性能的增益,本文构建基于集合经验模态分解(ensemble empirical modal decomposi-tion,EEMD)、排列熵(permutation entropy,PE)和长短期记忆神经网络(long short-term memory,LSTM)的高速公路路段交通流参数组合预测模型.研究运用EEMD算法分解平均行驶速度序列,通过PE算法筛选整合分解后的分量,并对交通和气象数据进行时空匹配和特征分组,识别出最具影响力的因子及其相互作用模式,结合滑动时间窗策略,动态调整输入配置;以LSTM网络为核心,经迭代优化确定最优的历史序列长度和特征组合,进而得到目标路段平均行驶速度最优值;同时,提出区域特性导向的交通状态判定机制,即采用路段平均行驶速度85%分位数作为常态速度基准.以湖北省某高速公路为例,实证结果显示:预测精度方面,相较于单一的LSTM模型,组合预测模型的平均绝对误差显著降低73.4%;运算效率方面,较EEMD-LSTM模型提升67%;特别是在滑动时间窗长度为40 min时,组合模型在各类出行场景及多样化特征的输入下,均保持最低预测误差,展现出良好的稳定性和鲁棒性;此外,纳入交通条件的模型相较于仅依赖历史速度序列的模型,预测误差范围降低了约60%,凸显了交通因素在速度预测中的关键作用.本研究可为交通管理部门在交通高峰期、特殊活动、交通事故突发等期间提供科学的管理决策支持.

The rapid development of the highway network and the diversification of traffic demand have made traf-fic congestion,road carrying capacity bottlenecks,road design optimization and other issues more and more promi-nent.This seriously restricts the travelling experience of travelers and the service effectiveness of traffic manage-ment departments.To accurately quantify the gain of traffic conditions and weather conditions on the prediction per-formance of traffic flow parameters,we a combined prediction model of traffic flow parameters of highway sections construct based on the ensemble empirical modal decomposition(EEMD),permutation entropy(PE)and long short-term memory(LSTM).The study applies the EEMD algorithm to decompose the average travelling speed se-quence,screens and integrates the decomposed components through the PE algorithm and proposes to perform spa-tio-temporal matching and feature grouping of the traffic and weather data to identify the most influential factors and their interaction modes;combined with the sliding time window strategy,the input configurations are dynami-cally adjusted.With the LSTM network as the core,the optimal history sequence length and feature combination are determined by iterative optimizations,and then the optimal value of the average driving speed of the target road sec-tion is obtained.At the same time,the regional characteristic-oriented traffic state determination mechanism is pro-posed,i.e.,the 85%quartile of the average driving speed of the road section is adopted as the normal speed bench-mark.Taking a highway in Hubei Province as a case study,the empirical results show that:in terms of prediction ac-curacy,compared with a single LSTM model,the average absolute error of the combined prediction model is signifi-cantly reduced by 73.4%;in terms of computational efficiency,it is improved by 67%compared with the EEMD-LSTM model.Especially when the length of the sliding time window is 40 min,the combined model main-tains the lowest prediction error under various types of travelling scenarios and diversified feature inputs,showing good stability and robustness.In addition,the model incorporating traffic conditions reduces the prediction error range by about 60%compared to the model relying only on historical speed sequences,highlighting the key role of traffic factors in speed prediction.This study can provide scientific management decision support for traffic manage-ment departments during peak traffic periods,special events,and traffic accident emergencies.

张开瑞;陆由;吕能超

武汉理工大学智能交通系统研究中心 武汉 430063湖北省智慧交通研究院有限公司 武汉 430051武汉理工大学智能交通系统研究中心 武汉 430063

交通工程

交通工程高速公路交通状态预测集合经验模态分解排列熵长短期记忆神经网络

traffic engineeringfreewaytraffic state predictionensemble empirical modal decompositionpermuta-tion entropylong short-term memory

《交通信息与安全》 2025 (1)

85-96,12

国家自然科学基金项目(52472366)、湖北省自然科学基金项目(2024AFD408)、湖北省重点研发计划项目(2024BAB051)资助

10.3963/j.jssn.1674-4861.2025.01.008

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