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A Novel Attention-Weighted VMD-LSSVM Model for High-Accuracy Short-Term Traffic Prediction 高精度短期流量预测中一种新的注意力加权VMD-LSSVM模型
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-26 DOI: 10.1049/itr2.70144
Jixiao Jiang, Anastasia Feofilova, Ivan Topilin, Chunguang Liu

To improve the management and operational efficiency of Intelligent Transportation Systems (ITS), address the nonlinear complexity of short-term traffic flow, mitigate the issue of significant noise in traffic flow datasets, and tackle the challenges in determining parameters for Support Vector Machines (SVM) and Long Short-Term Memory (LSTM) networks, this paper proposes a short-term traffic flow prediction model based on Variational Mode Decomposition (VMD) and Least Squares Support Vector Machine (LSSVM) integrated with an attention mechanism. Multiple intrinsic mode functions (IMFs) decomposed by VMD are input into the LSSVM model, and the parameters and weights of the model are automatically adjusted using the attention mechanism. Experimental results on the Italian highway traffic flow dataset show that the prediction accuracy of the VMD-LSSVM-Attention model is improved by an average of about 38.6% compared with the traditional VMD-SVM, VMD-LSTM-Attention, VMD-LSSVM and LSSVM-Attention models, and the model is more stable. Furthermore, in generalisation validation experiments on the Rotterdam and Madrid datasets, the model improved prediction accuracy by 5.17% to 20.97% compared to the best-performing advanced models. This model provides a prediction method for the traffic flow prediction module in the intelligent transportation system (ITS) architecture.

为了提高智能交通系统(ITS)的管理和运行效率,解决短期交通流的非线性复杂性,减轻交通流数据集中的显著噪声问题,并解决支持向量机(SVM)和长短期记忆(LSTM)网络参数确定方面的挑战,提出了一种基于变分模态分解(VMD)和最小二乘支持向量机(LSSVM)并结合注意机制的短期交通流预测模型。将VMD分解的多个内禀模式函数(IMFs)输入到LSSVM模型中,利用注意机制自动调整模型的参数和权重。在意大利高速公路交通流数据集上的实验结果表明,与传统的VMD-SVM、VMD-LSTM-Attention、VMD-LSSVM和LSSVM-Attention模型相比,VMD-LSSVM- attention模型的预测精度平均提高了约38.6%,并且模型更加稳定。此外,在鹿特丹和马德里数据集的泛化验证实验中,与性能最好的先进模型相比,该模型的预测精度提高了5.17%至20.97%。该模型为智能交通系统(ITS)体系结构中的交通流预测模块提供了一种预测方法。
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引用次数: 0
Integrated-Hybrid Framework for Connected Vehicles Micro- and Macroscopic Highway Merging Control Using Combined Data-and-Model-Driven Approaches 基于数据驱动和模型驱动相结合的互联车辆微宏观公路合流控制集成-混合框架
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-21 DOI: 10.1049/itr2.70149
Masoud Pourghavam, Moosa Ayati

This paper presents an integrated hybrid reinforcement learning–model predictive control (RLMPC) framework for autonomous highway systems, unifying macroscopic traffic flow regulation and microscopic on-ramp merging control. At the macroscopic level, a ramp metering (RM) controller based on a data-driven model predictive control (MPC) formulation using second-order Q-learning is implemented in the METANET environment on a benchmark three-segment freeway without the need for explicit traffic models. The RLMPC RM learns optimal flow regulation directly from closed-loop data, achieving enhanced system performance, constraint satisfaction and smooth control compared to common RM algorithms such as ALINEA, MPC and deep RL. At the microscopic level, an RLMPC merging controller manages autonomous on-ramp manoeuvres in which an ego vehicle enters the mainline approximately 160 m before the merge point and completes the manoeuvre 50 m downstream while interacting with surrounding vehicles. In this phase, when a collision risk arises, the MPC takes control; otherwise, the reinforcement learning (RL) policy operates, combining model-based safety with learning-based efficiency and yielding superior overall performance. Evaluations under varied traffic conditions show that implementing RM at the macroscopic level significantly improves microscopic on-ramp merging performance. Relative to the no-RM baseline, the framework achieves a 34.5% reduction in merge time under slow traffic conditions, eliminates collision events and moderately enhances overall efficiency and driving comfort.

提出了一种集成的混合强化学习模型预测控制(RLMPC)框架,统一了宏观交通流调节和微观匝道入路合并控制。在宏观层面上,基于数据驱动模型预测控制(MPC)公式的匝道计量(RM)控制器使用二阶q -学习,在METANET环境中实现了基准三段高速公路,而不需要明确的交通模型。RLMPC RM直接从闭环数据中学习最优流量调节,与ALINEA、MPC和deep RL等常见RM算法相比,实现了更高的系统性能、约束满足和平滑控制。在微观层面上,RLMPC合并控制器管理自动入匝道机动,其中自我车辆在合并点前约160米进入干线,并在与周围车辆相互作用的同时完成下游50米的机动。在这个阶段,当出现碰撞风险时,MPC将接管控制权;否则,强化学习(RL)策略将基于模型的安全性与基于学习的效率相结合,并产生卓越的整体性能。在不同交通条件下的评价表明,在宏观层面实施RM可以显著提高微观匝道入路合流性能。相对于无rm基线,该框架在慢速交通条件下实现了34.5%的合并时间减少,消除了碰撞事件,适度提高了整体效率和驾驶舒适性。
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引用次数: 0
A Highway Litter Detection Method Based on Multi-scale Feature Fusion and Dynamic Feature Enhancement 基于多尺度特征融合和动态特征增强的公路垃圾检测方法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-21 DOI: 10.1049/itr2.70141
Changlu Guo, Yecai Guo, Songbin Li

To address the issues of missed detections, false positives and feature degradation in road debris detection caused by small and irregular targets, this study proposes a novel framework integrating multi-scale feature fusion and dynamic feature enhancement mechanisms. It also constructs a dedicated road debris dataset to fill the gap in public benchmark datasets in this field. Firstly, a cross-layer connection-optimized feature fusion network is designed in the neck network, addressing the limitation of insufficient fusion of shallow and deep features in existing methods, realizing efficient linkage between shallow texture features and deep semantic information, and significantly improving the detection capability for small targets. Secondly, a context-aware anchor attention module integrating reparameterized convolution and adaptive weight allocation is embedded into the backbone network. Compared with traditional fixed receptive field convolution, it can dynamically enhance target features and suppress background interference, effectively solving the problem of feature degradation in complex environments. Thirdly, an improved spatial pyramid fast pooling module based on global pooling and Ghost convolution is proposed, overcoming the defect of prone detail loss in traditional max-pooling and preserving key information of small-sized road debris to the greatest extent. Finally, a weighted fusion loss function integrating corner distance loss, focal loss, cross-scale correlation loss and CIoU loss is designed, breaking the limitation of insufficient attention to irregular targets in a single loss function and enhancing the model's adaptability to complex scenes. Experimental results show that the framework outperforms existing mainstream methods in road debris detection scenarios, achieving a precision of 91.5%, a recall of 82.0% and an mAP50 of 88.7%.

为了解决道路碎片检测中由于小目标和不规则目标导致的漏检、误报和特征退化问题,本研究提出了一种融合多尺度特征融合和动态特征增强机制的框架。并构建了专用的道路碎片数据集,填补了该领域公共基准数据集的空白。首先,在颈部网络中设计了一种跨层连接优化的特征融合网络,解决了现有方法对浅层和深层特征融合不足的局限,实现了浅层纹理特征与深层语义信息的高效联动,显著提高了对小目标的检测能力;其次,在骨干网中嵌入一个融合了重参数化卷积和自适应权重分配的上下文感知锚点注意力模块;与传统的固定感受野卷积相比,它可以动态增强目标特征,抑制背景干扰,有效解决复杂环境下的特征退化问题。第三,提出了一种基于全局池化和Ghost卷积的改进空间金字塔快速池化模块,克服了传统最大池化容易丢失细节的缺陷,最大限度地保留了小尺寸道路碎片的关键信息。最后,设计了一个积分角距损失、焦点损失、跨尺度相关损失和CIoU损失的加权融合损失函数,突破了单一损失函数对不规则目标关注不足的局限,增强了模型对复杂场景的适应能力。实验结果表明,该框架在道路碎片检测场景中优于现有主流方法,准确率为91.5%,召回率为82.0%,mAP50为88.7%。
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引用次数: 0
LSTM-Based Centralized/Decentralized Controller Design for Vehicular Platooning 基于lstm的车辆队列集中/分散控制器设计
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-20 DOI: 10.1049/itr2.70151
Ryota Nakai, Kazumune Hashimoto, Xun Shen, Shigemasa Takai

Cooperative adaptive cruise control, also known as vehicular platooning, has gained significant interest for its ability to enhance fuel efficiency and comfort in vehicle operations. This study proposes novel control strategies for vehicular platooning based on long short-term memory (LSTM) neural networks. By learning temporal dependencies in vehicle behaviour, the proposed LSTM-based controllers improve string stability within the platoon, particularly under varying velocity patterns of the lead vehicle. Two distinct frameworks are investigated: centralized and decentralized control models. The centralized model makes use of the states of all vehicles within the platoon, whereas the decentralized model focuses on the states of only a limited number of preceding vehicles. Simulation experiments demonstrate that both the centralized and decentralized LSTM controllers significantly outperform traditional, non-LSTM-based controllers in minimizing cumulative inter-vehicle error. This study contributes a novel controller training methodology that integrates LSTM-based architectures with optimal control principles, offering improved adaptability and flexibility in real-time platoon management.

协作自适应巡航控制,也被称为车辆队列控制,因其提高燃油效率和车辆运行舒适性的能力而受到广泛关注。提出了一种基于长短期记忆(LSTM)神经网络的车辆队列控制策略。通过学习车辆行为的时间依赖性,所提出的基于lstm的控制器提高了串在队列中的稳定性,特别是在领先车辆的不同速度模式下。研究了两个不同的框架:集中式和分散式控制模型。集中式模型利用队列中所有车辆的状态,而分散式模型只关注前面有限数量车辆的状态。仿真实验表明,集中式和分散式LSTM控制器在最小化累积车辆间误差方面都明显优于传统的非LSTM控制器。本研究提出了一种新的控制器训练方法,该方法将基于lstm的体系结构与最优控制原理相结合,提高了实时排管理的适应性和灵活性。
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引用次数: 0
Study on Intersection Delay Prediction Based on Spatiotemporal Graph Convolutional Network Using Delay Big Data 基于时延大数据的时空图卷积网络交叉口时延预测研究
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-14 DOI: 10.1049/itr2.70143
Bohang Liu, Yahang Wang, Jiashun Wu, Chenglin Wei, Huiyao Gao

Road intersections are the key nodes in urban road networks, and their operational efficiency affects the dynamic balance of regional traffic flow. However, classical intersection delay models are unable to quickly and efficiently predict large-scale intersection delays. This paper proposes a spatiotemporal graph convolutional network (STGCN) intersection delay prediction model based on delay big data. By introducing a temporal attention mechanism, the model can capture key temporal information and enhance the ability to model the spatio-temporal evolution law of intersection delays. First, based on traffic platform delay big data, external factor data, and road network structure, the historical delay matrix, the external factor matrix, and intersection adjacency matrix are constructed, respectively. Next, the graph convolutional network (GCN) is used to extract spatial features of intersection delay. A temporal attention mechanism is then introduced to assign weights to different time steps, thereby enhancing the model's perception of critical time steps. Finally, the temporal convolutional network (TCN) is employed to extract temporal features of intersection delay, which are used to predict future intersection delays. Experimental results show that, compared with the optimal benchmark model STGCN, the proposed model reduces the MAE, RMSE, and MAPE metrics by 3.80%, 2.75%, and 4.23%, respectively. This study on intersection delay prediction using a STGCN based on delay big data not only improves the efficiency of intersection delay prediction but also provides a theoretical basis for traffic management departments to formulate measures.This study focuses on the delay prediction problem of intersections, key nodes in urban road networks. Aiming at the deficiency that classical models are difficult to efficiently predict the delays of large-scale intersections, a STGCN model based on delay big data is proposed. This model constructs the historical delay matrix, the external factor matrix and the intersection adjacency matrix, uses the GCN to extract spatial features, combines the temporal attention mechanism to enhance the perception of key periods, and then uses the TCN to mine temporal features to achieve delay prediction. Experiments show that, compared with the optimal benchmark model STGCN, its MAE, RMSE, and MAPE indicators are reduced by 3.80%, 2.75%, and 4.23%, respectively, providing theoretical support for improving the efficiency of intersection delay prediction and traffic management decision-making.

道路交叉口是城市道路网络的关键节点,其运行效率影响着区域交通流的动态平衡。然而,经典的交叉口延迟模型无法快速有效地预测大规模的交叉口延迟。提出了一种基于时延大数据的时空图卷积网络(STGCN)交叉口时延预测模型。该模型通过引入时间注意机制,捕捉关键时间信息,增强了对交叉口延误时空演化规律的建模能力。首先,基于交通平台时延大数据、外部因素数据和路网结构,分别构建历史时延矩阵、外部因素矩阵和交叉口邻接矩阵。其次,利用图卷积网络(GCN)提取交叉口延迟的空间特征。然后引入时间注意机制,为不同的时间步长分配权重,从而增强模型对关键时间步长的感知。最后,利用时间卷积网络(TCN)提取交叉口延迟的时间特征,用于预测未来的交叉口延迟。实验结果表明,与最优基准模型STGCN相比,该模型的MAE、RMSE和MAPE指标分别降低了3.80%、2.75%和4.23%。本研究利用基于延误大数据的STGCN进行交叉口延误预测,不仅提高了交叉口延误预测的效率,而且为交通管理部门制定措施提供了理论依据。本文主要研究城市道路网络中关键节点交叉口的延误预测问题。针对经典模型难以有效预测大规模交叉口延迟的不足,提出了一种基于延迟大数据的STGCN模型。该模型构建历史时延矩阵、外部因素矩阵和交叉口邻接矩阵,利用GCN提取空间特征,结合时间注意机制增强关键时期感知,再利用TCN挖掘时间特征实现时延预测。实验表明,与最优基准模型STGCN相比,其MAE、RMSE和MAPE指标分别降低了3.80%、2.75%和4.23%,为提高交叉口延误预测和交通管理决策效率提供了理论支持。
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引用次数: 0
An Improved Rapidly-Exploring Approach to Off-Road Path Planning by Leveraging Dynamic Velocity Constraints and Trajectory Smoothing 基于动态速度约束和轨迹平滑的改进快速探索越野路径规划方法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-12 DOI: 10.1049/itr2.70148
Jiang Song, Shucai Xu, Chun Feng, Liqun Peng

Off-road path planning and navigation often struggle with complex challenges, such as diverse surface conditions that demand adaptability, stability-sensitive vehicle dynamics on low-adhesion terrain, and the persistent trade-off between real-time performance and path quality. To address these challenges, an improved rapidly-exploring random tree (IRRT) algorithm is developed to adjust the dynamic exploration domain considering the vehicle's design speed and local terrain features, which can affect vehicle's operational stability, thereby increasing path feasibility and environmental adaptability. Furthermore, a nonlinear model predictive controller (NMPC) is deployed in the lower layer of the proposed RRT path planning framework, smoothing the generated path and enhancing ride comfort through terrain-aware adjustments. Both a 100 × 100 meter simulated environment and a real-world 1:10 scale test site, featuring distinct terrain types, i.e., hard roads, natural terrain, and low hills, with obstacles. The results show that the proposed two-layer path planning framework, improved RRT algorithm integrating with NMPC, reduces path length by 6.9% and total turning angle by 12.3% compared to RRT, while maintaining a maximum curvature of 0.134 m1 (well within the safety limit of 0.2 m1) and improving ride comfort by 80.4%. On the other hand, although the computation time increases by 272.2%, the resulting gains in path quality and stability justify the trade-off. The proposed method demonstrates a viable solution for off-road vehicle navigation across diverse terrains, effectively balancing path feasibility, ride smoothness, and computational efficiency.

越野道路规划和导航经常面临复杂的挑战,例如需要适应性的不同地面条件,低附着地形上对稳定性敏感的车辆动力学,以及实时性能和路径质量之间的持续权衡。针对这些挑战,提出了一种改进的快速探索随机树(IRRT)算法,考虑车辆的设计速度和局部地形特征来调整动态探索域,从而提高路径可行性和环境适应性。此外,在RRT路径规划框架的下层部署了非线性模型预测控制器(NMPC),通过地形感知调整平滑生成的路径并提高乘坐舒适性。100 × 100米模拟环境和真实1:10比例尺测试场地,地形类型明显,有硬地、自然地形、低丘、障碍物。结果表明,基于NMPC的改进RRT算法的两层路径规划框架与RRT相比,路径长度减少了6.9%,总转弯角度减少了12.3%,最大曲率保持在0.134 m−1(完全在0.2 m−1的安全范围内),乘坐舒适性提高了80.4%。另一方面,尽管计算时间增加了272.2%,但由此带来的路径质量和稳定性方面的收益证明了这种权衡是合理的。该方法为越野车辆在不同地形上的导航提供了一种可行的解决方案,有效地平衡了路径可行性、平顺性和计算效率。
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引用次数: 0
Dynamic Intercity Ride-Sharing Optimisation Based on Two-Stage Information Feedback 基于两阶段信息反馈的城际拼车动态优化
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-10 DOI: 10.1049/itr2.70139
Cheng Wang, Shangyu Gao, Jin Jiang

Current approaches to intercity dynamic ride-sharing mainly adopt single-stage scheduling, where new orders are periodically batched and processed. Although effective, this strategy often causes heavy computation and delayed passenger feedback, limiting real-time applicability. To address these issues, we propose a novel two-stage information feedback framework combining coarse and fine scheduling. In the coarse stage, online scheduling (nearest insertion) promptly matches new orders with departed vehicles, while offline scheduling (best insertion) processes non-departed vehicles, thus providing passengers with staged and timely feedback. In the fine stage, assignments are further optimised through large neighbourhood search, with the triggering decision modelled as a Markov decision process and learned by deep Q-learning. This design reduces redundant computation while dynamically balancing feedback timeliness and scheduling efficiency. Unlike traditional methods, our framework is novel in integrating staged passenger feedback, hybrid heuristic optimisation and reinforcement learning-based control. Experiments on two real-world intercity carpooling datasets show that the method significantly reduces runtime and feedback delays while maintaining strong scheduling performance, demonstrating its potential as a practical solution for large-scale dynamic ride-sharing platforms.

目前城际动态拼车主要采用单阶段调度,新订单定期分批处理。这种策略虽然有效,但往往造成计算量大、乘客反馈延迟,限制了实时性。为了解决这些问题,我们提出了一种结合粗调度和精调度的两阶段信息反馈框架。在粗化阶段,在线调度(最近插入)将新订单与离开的车辆及时匹配,而离线调度(最佳插入)处理未离开的车辆,为乘客提供分阶段和及时的反馈。在精细阶段,通过大邻域搜索进一步优化分配,将触发决策建模为马尔可夫决策过程,并通过深度q学习进行学习。该设计在动态平衡反馈及时性和调度效率的同时减少了冗余计算。与传统方法不同,我们的框架在整合分阶段乘客反馈、混合启发式优化和基于强化学习的控制方面是新颖的。在两个真实的城际拼车数据集上进行的实验表明,该方法在保持较强调度性能的同时显著减少了运行时间和反馈延迟,证明了其作为大规模动态拼车平台的实用解决方案的潜力。
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引用次数: 0
XGBoost–LSTM Regional Traffic Congestion Ratio Prediction Integrating Spatio-Temporal and Weather Features 结合时空和天气特征的XGBoost-LSTM区域交通拥堵率预测
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-10 DOI: 10.1049/itr2.70145
Bohang Liu, Xudong Zhang, Chengcheng Liang, Tongchuang Zhang, Keyi Xiang

Urban traffic prediction is of great significance for traffic management and optimisation. Although research on predicting indicators such as traffic flow and speed is relatively sufficient, research on forecasting congestion ratios in different urban regions remains inadequate. Based on traffic big data, this paper proposes a fusion regional congestion ratio prediction model integrating eXtreme gradient boosting tree (XGBoost) and long short-term memory (LSTM), which integrates multi-source features, including temporal, meteorological, and spatial factors. First, the XGBoost algorithm is used to model the historical congestion ratios and related features of each region, obtaining preliminary prediction results and extracting regional residual sequences; subsequently, the residual sequences are input into the LSTM network for error correction. Finally, the prediction results of the two stages are fused to obtain more refined regional congestion ratio predictions. Experimental results show that during peak hours on weekdays, taking Region 49 as an example, the MAE of the fusion model is 0.062, the mean absolute percentage error is below 30%, and the comprehensive prediction accuracy reaches up to 72%; under complex weather conditions, for the same region, the RMSE values of the fusion model are 0.048, 0.058, and 0.043, respectively, which are 37%–63% lower than those of the XGBoost model used alone. Feature ablation experiments further verify the key role of temporal, meteorological, and spatial features in improving prediction performance, among which spatial features contribute the most to performance optimisation. This study improves the research framework in the field of urban traffic prediction and provides a theoretical basis and methodological support for regional traffic management practices.

城市交通预测对交通管理和优化具有重要意义。虽然对交通流量和速度等预测指标的研究相对充分,但对不同城市区域拥堵率的预测研究还不够。基于交通大数据,提出了一种结合极端梯度提升树(XGBoost)和长短期记忆(LSTM)的融合区域拥堵率预测模型,该模型融合了时间、气象、空间等多源特征。首先,利用XGBoost算法对各区域的历史拥塞率及相关特征进行建模,获得初步预测结果并提取区域残差序列;然后将残差序列输入LSTM网络进行纠错。最后,将两个阶段的预测结果进行融合,得到更精细的区域拥堵率预测结果。实验结果表明,在工作日高峰时段,以49区为例,融合模型的MAE为0.062,平均绝对百分比误差在30%以下,综合预测精度达到72%;在复杂天气条件下,对于同一地区,融合模型的RMSE值分别为0.048、0.058和0.043,比单独使用XGBoost模型的RMSE值低37% ~ 63%。特征消融实验进一步验证了时间、气象和空间特征对提高预测性能的关键作用,其中空间特征对性能优化贡献最大。本研究完善了城市交通预测领域的研究框架,为区域交通管理实践提供了理论基础和方法支持。
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引用次数: 0
Signal Timing and CAV Trajectory Joint Control Under Mixed Vehicular Environments With Hierarchical Proximal Policy Optimisation 混合车辆环境下的信号配时与CAV轨迹联合控制
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-10 DOI: 10.1049/itr2.70147
Zongyuan Wu, Decai Wang, Mengxin Qiu, Gen Li, Wenxuan Li, Yadan Yan

This paper proposes a novel Signal-Vehicle Cooperative Control framework (SVCC-HPPO) based on the improved Hierarchical Proximal Policy Optimisation (H-PPO) algorithm to jointly optimise traffic signal timing and Connected and Autonomous Vehicle (CAV) trajectories under mixed vehicular environments with both CAVs and Human-Driven Vehicles (HDVs). A hierarchical hybrid action space is designed to effectively constrain CAV acceleration and signal timing adjustments while explicitly accounting for car-following dynamics near intersections, enabling flexible exploration within physical limits. The hybrid actor-critic architecture facilitates simultaneous optimisation of discrete and continuous actions through parallel actors guided by a global critic, balancing optimization effectiveness with training stability. A multi-objective reward function simultaneously minimises vehicle delay and fuel consumption and maximises ride comfort. The core improvement involves a layered entropy regularisation strategy within the H-PPO algorithm, which separately manages discrete and continuous entropy to enhance exploration efficiency and stability across hybrid action dimensions. Real-world intersections evaluation results demonstrate that SVCC-HPPO significantly outperforms benchmark methods TRANSYT and DRL-based algorithms, achieving reductions of up to 46.3% in delay, 59.5% in queue length, and 52.9% in fuel consumption, alongside a 177.4% improvement in average speed. Performance gains are further enhanced with shorter optimisation intervals and higher CAV penetration rates.

本文提出了一种基于改进的分层近端策略优化(H-PPO)算法的新型信号-车辆协同控制框架(SVCC-HPPO),用于在混合车辆环境下联合优化交通信号配时和连接和自动驾驶车辆(CAV)轨迹。分层混合行动空间的设计有效地约束了自动驾驶汽车的加速和信号定时调整,同时明确地考虑了交叉口附近的车辆跟随动力学,从而在物理限制下实现了灵活的探索。混合参与者-评论家架构通过由全局评论家指导的并行参与者促进离散和连续行动的同时优化,平衡优化有效性和训练稳定性。多目标奖励功能同时最小化车辆延迟和燃料消耗,并最大化乘坐舒适性。核心改进涉及H-PPO算法中的分层熵正则化策略,该策略分别管理离散和连续熵,以提高混合操作维度的勘探效率和稳定性。实际十字路口评估结果表明,SVCC-HPPO显著优于TRANSYT和基于drl的基准算法,延迟减少46.3%,队列长度减少59.5%,燃油消耗减少52.9%,平均速度提高177.4%。更短的优化间隔和更高的CAV渗透率进一步增强了性能收益。
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引用次数: 0
Physical Parameters Estimation Using Roadside Monocular Vision 基于路边单目视觉的物理参数估计
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-09 DOI: 10.1049/itr2.70138
Nijia Zhang, Mingfeng Lu, Shoutong Yuan, Chen Liu, Yan Wang, Zhen Yang, Canjie Zhu, Ziyi Chen, Shuai Zhang, Feng Zhang, Ran Tao, Weidong Hu, Xiongjun Fu

Roadside sensing is an important part of intelligent traffic management systems (ITMSs) for collecting and processing information. In order to better assess and maintain the stability and safety of objects in traffic scenes, all types of basic information are required. This paper proposes a monocular vision-based object parameter measurement and geolocation method to address the problems of high cost and limited information dimension of traditional roadside sensors. Object detection and geometric transformation mapping are combined to achieve efficient estimation of key physical parameters with input of monocular images, and global navigation satellite system (GNSS) information is further incorporated to obtain geolocation of the target. In the method, after the key target is recognized by the neural network-based object detection algorithm, the pixel-level 2D image information is mapped to a series of 3D spaces based on the construction of a geometric model, which leads to further computation of various physical parameters, realizing multi-parameter estimation under one method. The method overcomes the dependence on fixed environments or known references and is highly applicable to non-cooperative scenes. The effectiveness of the method is shown via the experiments in multiple real scenes.

路边传感是智能交通管理系统(ITMSs)中收集和处理信息的重要组成部分。为了更好地评估和维护交通场景中物体的稳定性和安全性,需要各类基础信息。针对传统路边传感器成本高、信息维度有限的问题,提出了一种基于单目视觉的目标参数测量与定位方法。将目标检测与几何变换映射相结合,以单眼图像为输入,实现关键物理参数的高效估计,并进一步结合全球卫星导航系统(GNSS)信息,获得目标的地理位置。该方法通过基于神经网络的目标检测算法识别出关键目标后,在构建几何模型的基础上,将像素级二维图像信息映射到一系列三维空间中,进一步计算各种物理参数,实现一种方法下的多参数估计。该方法克服了对固定环境或已知参考的依赖,非常适用于非合作场景。通过多个真实场景的实验验证了该方法的有效性。
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引用次数: 0
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IET Intelligent Transport Systems
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