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Collaborative Control of Lane Changing for Autonomous Vehicles in High-Density Heterogeneous Traffic Flow 高密度异构交通流下自动驾驶汽车变道协同控制
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-12-11 DOI: 10.1049/itr2.70124
Yan Liu, Jiaqi Ding

To solve the problem of lane changing cooperative control of autonomous vehicles in high-density heterogeneous traffic flow, by analyzing the characteristics of the mandatory lane changing behavior of autonomous vehicles, a dual-lane utility calculation model based on driving style was established, and a lane changing cooperative control game strategy was proposed. Through joint simulation experiments using VISSIM and MATLAB, the results indicate that, in mixed driving environments, the driving style-based game model significantly enhances lane changing performance compared to the traditional MOBIL model and ordinary game models. On average, the lane changing position is advanced by approximately 100 m, and the delay is reduced by 4 s. Meanwhile, safety distance thresholds of 80 m and 50 m were set for aggressive and conservative drivers, respectively, effectively balancing safety and efficiency. Furthermore, by analyzing the interactive effects between the initial position of lane changing vehicles and driver styles, it was found that aggressive drivers need to abandon lane changing when their initial position is within the range of [0, 80] m, while conservative drivers can ensure safety even when their initial position is within [0, 50] m.

为解决高密度异构交通流下自动驾驶汽车的变道协同控制问题,通过分析自动驾驶汽车强制变道行为的特点,建立了基于驾驶风格的双车道效用计算模型,提出了一种变道协同控制博弈策略。通过VISSIM和MATLAB的联合仿真实验,结果表明,在混合驾驶环境下,基于驾驶风格的博弈模型与传统的美孚模型和普通博弈模型相比,显着提高了变道性能。换道位置平均提前约100米,延迟减少4秒。同时,对进攻型驾驶员和保守型驾驶员分别设置80 m和50 m的安全距离阈值,有效地平衡了安全和效率。进一步,通过分析变道车辆初始位置与驾驶员风格之间的交互作用,发现进攻型驾驶员在初始位置[0,80]m范围内需要放弃变道,而保守型驾驶员在初始位置[0,50]m范围内也能保证安全。
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引用次数: 0
Development of Deep Neural Network—Decision Tree Hybrid Control Strategy for Regenerative Braking in Electric Vehicles 电动汽车再生制动深度神经网络决策树混合控制策略研究
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-12-11 DOI: 10.1049/itr2.70127
Omer Ergun, Erkin Dincmen, Ilyas Istif

Optimizing regenerative braking in dual-motor electric vehicles (EVs) is critical for extending driving range but presents a complex high-speed control problem. This study proposes a novel, real-time control strategy by training a hybrid deep neural network–decision tree (DNN–DT) model on an optimal dataset generated by offline dynamic programming (DP) considering seven key characteristic variables: road grade, friction coefficient, vehicle load distribution, velocity, braking rate, battery state of charge, and total braking torque. This hybrid methodology combines the high-accuracy, non-linear mapping of DNNs with the interpretability of DTs. The model was validated in a 14-DOF Simulink environment against two reference strategies (fixed-ratio and baseline) across four different scenarios (UDDS, NYCC, WLTP), including interpolation and extrapolation tests. Key experimental results show the hybrid model accurately tracks the DP-optimal torques (average R20.97$R^2 approx 0.97$) and consistently outperforms the reference methods, achieving a 1.26% to 5.06% reduction in net SOC loss. This energy saving translates to a practical gain of 90–383 meters per cycle. Crucially, the model's average inference time of 2.3 ms confirms its computational efficiency and feasibility for real-time implementation on a standard vehicle control unit (VCU).

优化双电机电动汽车的再生制动系统是提高电动汽车续驶里程的关键,但也存在复杂的高速控制问题。该研究通过在离线动态规划(DP)生成的最优数据集上训练混合深度神经网络决策树(DNN-DT)模型,提出了一种新颖的实时控制策略,该模型考虑了七个关键特征变量:道路坡度、摩擦系数、车辆负载分布、速度、制动率、电池状态和总制动扭矩。这种混合方法结合了dnn的高精度、非线性映射和dt的可解释性。该模型在14自由度Simulink环境中针对四种不同场景(UDDS、NYCC、WLTP)的两种参考策略(固定比率和基线)进行了验证,包括插值和外推测试。关键实验结果表明,混合模型准确地跟踪了dp最优扭矩(平均r2≈0.97$ R^2 约0.97$),并且始终优于参考方法,实现净SOC损失降低1.26%至5.06%。这种节能转化为每次循环实际增益90-383米。重要的是,该模型的平均推理时间为2.3 ms,证实了其计算效率和在标准车辆控制单元(VCU)上实时实现的可行性。
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引用次数: 0
Dynamic Graph Convolutional Recurrent Network With Temporal Self-Attention for Accurate Traffic Flow Prediction 具有时间自关注的动态图卷积循环网络用于交通流的精确预测
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-12-05 DOI: 10.1049/itr2.70118
Xin Li, Yongsheng Qian, Junwei Zeng, Minan Yang, Futao Zhang

Accurate traffic flow prediction is essential for the effective management of Intelligent Transportation Systems (ITS). However, traditional methods based on static graph structures often fail to address the complex and nonlinear spatiotemporal dependencies in evolving traffic conditions. To address this challenge, we propose a Dynamic Graph Convolutional Recurrent Network with Temporal Self-Attention (DGCRN-TSA), which integrates a temporal attention mechanism to jointly capture dynamic spatial topologies and long-range temporal patterns. The model incorporates a graph generation module that adaptively learns time-varying adjacency matrices from traffic signals and introduces a trend-aware attention module enhanced by residual-guided decomposition for distinguishing between normal and anomalous traffic behaviours. Experiments on real traffic datasets confirm that DGCRN-TSA achieves superior performance in both short- and medium-to-long-term forecasts. Notably, it reduces MAE by 19.4% on PeMS04 and improves MAPE by 12.2% on PeMS08. The model also ensures high prediction accuracy with strong computational efficiency and an inference speed comparable to AGCRN. DGCRN-TSA offers an efficient and reliable solution for dynamic spatiotemporal modelling and large-scale real-time traffic prediction.

准确的交通流预测是智能交通系统有效管理的基础。然而,传统的基于静态图结构的方法往往不能解决复杂的非线性时空依赖关系。为了解决这一挑战,我们提出了一个具有时间自注意的动态图卷积循环网络(DGCRN-TSA),它集成了一个时间注意机制,以共同捕获动态空间拓扑和长期时间模式。该模型结合了一个图形生成模块,该模块可自适应地从交通信号中学习时变邻接矩阵,并引入了一个趋势感知注意力模块,该模块通过残差引导分解增强,用于区分正常和异常交通行为。在真实交通数据集上的实验证实,DGCRN-TSA在短期和中长期预测方面都取得了优异的表现。值得注意的是,它使PeMS04的MAE降低了19.4%,使PeMS08的MAPE提高了12.2%。该模型具有较强的计算效率和与AGCRN相当的推理速度,保证了较高的预测精度。DGCRN-TSA为动态时空建模和大规模实时交通预测提供了高效可靠的解决方案。
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引用次数: 0
Optimal Route Choice and Charging Strategy for Connected and Autonomous Electric Vehicles Under Mixed Traffic Flow Considering Multiple Objectives 混合交通流下考虑多目标的网联与自动驾驶电动汽车最优路径选择与充电策略
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-12-05 DOI: 10.1049/itr2.70126
Xiaolong Zuo, Jun Bi, Yongxing Wang

The effective management of connected and autonomous electric vehicle (CAEV) fleets is critical for realising their potential to create safer and more efficient urban transportation systems. As CAEVs increasingly share the road with conventional vehicles, a primary challenge is to optimise their operations within this mixed-traffic reality. This study tackles the joint problem of route selection and charging scheduling for multiple CAEVs by developing a multi-objective optimisation model. The framework is designed to minimise a holistic cost function comprising energy consumption, travel time, charging service fees and penalties for violating user-specified time windows. Critically, the model incorporates real-world complexities, including time-of-use electricity pricing, partial charging strategy and the stochastic queuing delays introduced by non-connected vehicles at charging stations. We adapt the non-dominated sorting genetic algorithm III (NSGA-III) to efficiently solve this complex optimisation problem. The proposed model is demonstrated through a case study using an actual road network from Beijing, China. The results indicate that the proposed model can reduce charging service fees by up to 96% and travel time by 33% when compared to conventional scheduling methods. These findings can offer significant insights for policymakers and platform operators aiming to formulate effective CAEV travel and charging policies in heterogeneous traffic environments.

联网和自动驾驶电动汽车(CAEV)车队的有效管理对于实现其创造更安全、更高效的城市交通系统的潜力至关重要。随着自动驾驶汽车越来越多地与传统车辆共享道路,在这种混合交通现实中优化其操作是一个主要挑战。本文通过建立多目标优化模型,解决了多辆自动驾驶汽车的路径选择和充电调度问题。该框架旨在最大限度地降低整体成本函数,包括能源消耗、出行时间、收取服务费和违反用户指定时间窗口的处罚。关键是,该模型结合了现实世界的复杂性,包括使用时间电价、部分充电策略以及充电站未联网车辆引入的随机排队延迟。我们采用非支配排序遗传算法III (NSGA-III)来有效地解决这一复杂的优化问题。最后,以中国北京的实际路网为例,对所提出的模型进行了验证。结果表明,与传统调度方法相比,该模型可减少96%的收费服务费和33%的行程时间。这些发现可以为决策者和平台运营商在异构交通环境中制定有效的自动驾驶汽车出行和收费政策提供重要见解。
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引用次数: 0
UMD-NOIR: Unified Multiscale Diffusion Model for Navigation-Orientated Image Restoration 面向导航图像恢复的统一多尺度扩散模型
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-12-05 DOI: 10.1049/itr2.70110
Maria Siddiqua, Samir Brahim Belhaouari, Muneer Raza

Image restoration is essential for vision-based navigation, surveillance, and remote sensing, yet real-world images are often degraded by haze, fog, rain, snow, clouds, and underwater turbidity. Existing methods are typically tailored to single degradations or narrow domains, limiting their generalisation in complex environments with overlapping effects. We introduce UMD-NOIR, a unified multiscale diffusion model for navigation-orientated image restoration that integrates a Transformer-enhanced UNet into a denoising diffusion probabilistic model. The architecture incorporates multiscale channel and spatial attention together with a gated deconvolutional feed-forward network, enabling robust feature aggregation, spatially aware enhancement, detail recovery, and structural consistency. A hybrid loss combining Huber and perceptual terms further improves sharpness, colour accuracy, and perceptual fidelity. Quantitative evaluations against 13 state-of-the-art diffusion and transformer-based models show that UMD-NOIR achieves an average peak signal-to-noise ratio (PSNR) of 28.07 dB, structural similarity index measure (SSIM) of 0.888, and mean absolute error (MAE) of 0.032 across ground, aerial, and marine degradations. Generalisation is validated on five unseen datasets (DAWN, RESIDE, RICE, LSUI, and CDD-11), demonstrating adaptability to real-world and composite degradations. No-reference assessments further yield NIQE = 3.91 and PIQE = 20.85 on haze images, confirming perceptual realism. Downstream evaluations with YOLOv11 highlight improvements in classification, detection, and segmentation, while ablation studies verify the importance of multiscale processing, attention mechanisms, and hybrid loss in achieving consistent gains.

图像恢复对于基于视觉的导航、监视和遥感至关重要,但现实世界的图像经常受到雾霾、雾、雨、雪、云和水下浑浊的影响。现有的方法通常针对单一降解或狭窄的领域,限制了它们在具有重叠效应的复杂环境中的泛化。我们介绍了UMD-NOIR,一种用于导航图像恢复的统一多尺度扩散模型,它将变压器增强的UNet集成到去噪扩散概率模型中。该体系结构将多尺度通道和空间关注与门控反卷积前馈网络结合在一起,实现了鲁棒的特征聚合、空间感知增强、细节恢复和结构一致性。结合Huber和感知术语的混合损失进一步提高了清晰度,色彩准确性和感知保真度。对13个最先进的扩散和基于变压器的模型的定量评估表明,UMD-NOIR在地面、空中和海洋退化方面的平均峰值信噪比(PSNR)为28.07 dB,结构相似性指数(SSIM)为0.888,平均绝对误差(MAE)为0.032。在五个未见过的数据集(DAWN、residency、RICE、LSUI和CDD-11)上验证了泛化,展示了对现实世界和复合退化的适应性。无参考评估进一步得出雾霾图像的NIQE = 3.91和PIQE = 20.85,证实了感知真实感。使用YOLOv11的下游评估强调了分类、检测和分割方面的改进,而消融研究验证了多尺度处理、注意机制和混合损失在实现一致增益方面的重要性。
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引用次数: 0
A Rolling Optimisation Approach for High-Speed Railway Crew Rostering 高速铁路班组编组的滚动优化方法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-12-02 DOI: 10.1049/itr2.70120
Wenjian Zhong, Boliang Lin, Zheng Gao

High-speed railway operations rely on various crew members. Among them, onboard mechanics are responsible for monitoring train systems and handling in-transit faults, bearing long working hours and critical safety responsibilities. However, they have received limited attention in existing crew rostering research, particularly those residing outside the base depot city. Additionally, the crew rostering plan often requires adjustments during execution, due to foreseeable disruptions such as leave requests, training courses, and additional tasks. Yet, these practical issues are often ignored, with adjustments mainly made manually and without a systematic correction approach. To address these gaps, this paper first proposes a hybrid service pattern and a mathematical model to design more reasonable crew routes and provide more convenient task arrangements for onboard mechanics. Following this, a rolling optimisation model is introduced to address foreseeable disruptions during the execution of the rostering plan, aiming to minimise plan modifications while maintaining balanced workloads. The relationship between the two models is sequential, with the crew route information obtained from the first model serving as partial input for the second model. A real-world case study based on data from the Qingdao EMU Depot in China is conducted to validate the effectiveness of the proposed models, with Gurobi used for solving. The computational results show that the crew routes are well assessed and balanced in terms of both operational costs and work convenience. Furthermore, the rolling optimisation model achieves a significantly lower modification-to-disruption ratio than the manual approach, ensuring greater robustness against disruptions. It further improves workload balance, reduces commuting costs, and prevents overwork, offering a practical and efficient solution for real-world planning.

高速铁路的运行依赖于各种各样的机组人员。其中,车载机械师负责监控列车系统和处理途中故障,承担长时间工作和关键的安全责任。然而,他们在现有的机组人员名册研究中得到的关注有限,特别是那些居住在基地补给城市以外的人员。此外,由于休假请求、培训课程和其他任务等可预见的中断,船员名册计划经常需要在执行过程中进行调整。然而,这些实际问题往往被忽视,调整主要是手工进行的,没有系统的纠正方法。针对这些不足,本文首先提出了一种混合服务模式和数学模型,设计更合理的乘员路线,为船上机械师提供更方便的任务安排。在此之后,引入滚动优化模型来解决在执行调度计划期间可预见的中断,旨在最大限度地减少计划修改,同时保持平衡的工作负载。两个模型之间的关系是顺序的,从第一个模型获得的乘员路线信息作为第二个模型的部分输入。基于中国青岛动车组车辆段的数据进行了实际案例研究,以验证所提出模型的有效性,并使用Gurobi进行求解。计算结果表明,机组路线在运行成本和工作便利性方面都得到了很好的评估和平衡。此外,滚动优化模型比手动方法实现了更低的修改与中断比率,确保了对中断的更强鲁棒性。它进一步改善了工作负载平衡,降低了通勤成本,并防止过度工作,为现实世界的规划提供了实用而高效的解决方案。
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引用次数: 0
Efficient Merging at Work Zones to Support Emergency Response in Mixed Traffic Environments: A Reward Weight Adjustment Method for Multi-Agent Reinforcement Learning 混合交通环境下支持应急响应的工作区域有效合并:一种多智能体强化学习的奖励权调整方法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-11-29 DOI: 10.1049/itr2.70121
Fatemeh Bandarian, Saeedeh Ghanadbashi, Abdollah Malekjafarian, Fatemeh Golpayegani

Merging behaviours in work zones pose significant traffic management challenges due to lane closures that create bottlenecks and increase accident risk. In mixed traffic environments involving emergency vehicles (EVs), connected automated vehicles (CAVs), and human-driven vehicles, addressing these challenges becomes more complex. EVs, in particular, require priority movement to minimize response times, but their movement is often hindered by traditional traffic management strategies. While previous merging strategies have shown promising results in managing traffic flow, they fail to account for the unique challenges posed by different vehicle types in work zone environments. In this paper, we propose a new reward weight adjustment method for multi-agent proximal policy optimization based CAVs in work zone for emergency vehicles (MAPPO-WEV). The proposed method improves EV's response times without compromising travel time of other vehicles. MAPPO-WEV introduces a dynamic reward weighting mechanism that adjusts the importance weight of speed, headway, and merging behaviour based on the type and number of vehicles. This approach allows EVs to travel more freely while maintaining safety in mixed traffic conditions. The simulation results of MAPPO-WEV show significant improvements in both travel times and waiting times of EVs by 25% and 33% respectively compared to the Baseline method.

由于车道关闭造成瓶颈并增加事故风险,工作区域的合并行为给交通管理带来了重大挑战。在涉及应急车辆(ev)、联网自动驾驶车辆(cav)和人类驾驶车辆的混合交通环境中,应对这些挑战变得更加复杂。特别是电动汽车,需要优先移动以最大限度地减少响应时间,但它们的移动经常受到传统交通管理策略的阻碍。虽然以前的合并策略在管理交通流量方面显示出了令人鼓舞的结果,但它们未能考虑到工作区域环境中不同类型车辆所带来的独特挑战。本文提出了一种新的基于多智能体近端策略优化的工作区域自动驾驶汽车(MAPPO-WEV)的奖励权重调整方法。该方法在不影响其他车辆行驶时间的前提下,提高了电动汽车的响应时间。MAPPO-WEV引入了一种动态奖励加权机制,可以根据车辆的类型和数量调整速度、车头时距和合并行为的重要性权重。这种方法可以让电动汽车在混合交通条件下更自由地行驶,同时保持安全。仿真结果表明,与Baseline方法相比,MAPPO-WEV方法的电动汽车行驶时间和等待时间分别提高了25%和33%。
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引用次数: 0
TBBOcc: A Lightweight Twin-Branch Binarized Network for Efficient 3D Semantic Occupancy Prediction in Autonomous Driving TBBOcc:一种轻量级的双分支二值化网络,用于自动驾驶中有效的三维语义占用预测
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-11-29 DOI: 10.1049/itr2.70122
Yichen Zhang, Junyi Geng

The safety decisions of autonomous driving systems rely on the accurate understanding of 3D scenes, and the existing 3D occupancy prediction (OCC) models are difficult to meet the requirements of in-vehicle deployment due to their high computational complexity and a large number of parameters. Traditional methods (e.g., OccWorld, FlashOcc) rely on full-precision floating-point operations and dense 3D convolution, resulting in hundreds of millions of model parameters. In this paper, we propose a lightweight two-branch binarization network, TBBOcc, to break through the bottleneck of ‘efficiency-accuracy’ trade-off through multi-technology co-optimization. First, we design two-branch binarized feature extraction, using channel compression and hyperbolic tangent relaxation activation function to alleviate the problem of vanishing binarized gradient, which reduces the computation amount while retaining the key geometrical information; second, we improve the EfficientViM module by integrating state space modeling and a two-dimensional normalization strategy, which enhances the ability of global temporal feature modeling; and lastly, we introduce a dynamic temporal fusion mechanism, combining binocular depth estimation with deformable BEV pooling to capture the spatio-temporal evolution laws. Experiments show that TBBOcc achieves 39.1% mean intersection over union (mIoU) on the Occ3D-nuScenes validation set with 32.8 M parameter counts and 164.8 G FLOPs, which reduces the amount of parameters by 26.6%, computation by 33.7%, and improves the accuracy by 3.3% compared with the baseline model FlashOcc. Especially, it performs well in dynamic obstacles (e.g., pedestrians, traffic cones) and complex scenes. In this paper, binarization computation is introduced into the 3D OCC task for the first time, which provides an efficient and reliable technical path for real-time environment sensing for autonomous driving.

自动驾驶系统的安全决策依赖于对3D场景的准确理解,现有的3D占用预测(OCC)模型计算复杂度高,参数多,难以满足车载部署的要求。传统的方法(如OccWorld, flashhocc)依赖于全精度浮点运算和密集的3D卷积,导致模型参数数以亿计。本文提出了一种轻量级的双分支二值化网络TBBOcc,通过多技术协同优化,突破了“效率-精度”权衡的瓶颈。首先,设计了两分支二值化特征提取,利用通道压缩和双曲正切松弛激活函数来缓解二值化梯度消失的问题,在保留关键几何信息的同时减少了计算量;其次,结合状态空间建模和二维归一化策略对effentvim模块进行改进,增强了全局时态特征建模能力;最后,我们引入了一种动态时间融合机制,将双目深度估计与可变形的BEV池相结合来捕捉时空演化规律。实验表明,在参数数为32.8 M、FLOPs为164.8 G的Occ3D-nuScenes验证集上,TBBOcc实现了39.1%的平均交联(mIoU),与基线模型FlashOcc相比,参数数量减少26.6%,计算量减少33.7%,准确率提高3.3%。特别是在动态障碍物(如行人、交通锥)和复杂场景中表现良好。本文首次将二值化计算引入到三维OCC任务中,为自动驾驶实时环境感知提供了高效可靠的技术路径。
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引用次数: 0
Collaborative Optimisation of Grey-Markov Modelling and Adversarial Meta-Learning for Resilient Intelligent Transportation Systems 弹性智能交通系统的灰色马尔可夫模型和对抗元学习协同优化
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-11-29 DOI: 10.1049/itr2.70119
Jingli Jia, Jiqiang Zhang, Yongfang Zhu

To enhance the robustness and interpretability of road-accident prediction under sparse, noisy, and dynamically evolving conditions, this study proposes a Multimodal Grey-Markov and Adversarial Meta-Learning (MGMC-AML) framework. The model integrates grey relational analysis for adaptive modality weighting, dynamic Markov state modelling for temporal-spatial transition learning, and adversarial meta-optimisation for rapid recovery from perturbations. A reinforcement-enhanced dynamic partitioning mechanism is introduced to maintain structural consistency of road-network topology during fluctuating traffic states. Extensive experiments on multi-source traffic and weather datasets demonstrate that the proposed framework achieves superior predictive performance, with a Mean Absolute Error (MAE) of 2.34 incidents per day, a Segmentation Consistency Index (SCI) of 0.85, and a Modular Q value of 0.78, while maintaining an attack-recovery time of 162 s. These results surpass state-of-the-art baselines, including LSTM, GNN, and Transformer models, confirming both its precision and resilience under adversarial or uncertain sensing conditions. The proposed approach offers a unified and reproducible framework that bridges uncertainty modelling, adaptive fusion, and robust optimisation, providing a theoretical and practical foundation for resilient traffic-risk forecasting in intelligent-transportation systems.

为了增强稀疏、噪声和动态变化条件下道路事故预测的鲁棒性和可解释性,本研究提出了一个多模态灰色马尔可夫和对抗元学习(MGMC-AML)框架。该模型集成了用于自适应模态加权的灰色关联分析,用于时空过渡学习的动态马尔可夫状态建模,以及用于从扰动中快速恢复的对抗性元优化。引入一种增强型动态分区机制,在交通状态波动时保持路网拓扑结构的一致性。在多源流量和天气数据集上进行的大量实验表明,所提出的框架具有优越的预测性能,平均绝对误差(MAE)为每天2.34个事件,分割一致性指数(SCI)为0.85,模块化Q值为0.78,同时保持了162秒的攻击恢复时间。这些结果超过了最先进的基线,包括LSTM、GNN和Transformer模型,证实了其在对抗或不确定传感条件下的精度和弹性。该方法提供了一个统一的、可重复的框架,将不确定性建模、自适应融合和稳健优化连接起来,为智能交通系统中弹性交通风险预测提供了理论和实践基础。
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引用次数: 0
Adaptive MPC-Based AEB Control Strategy with Dynamic Weight and Sampling Time Adjustment 基于mpc的动态权值和采样时间自适应AEB控制策略
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2025-11-28 DOI: 10.1049/itr2.70112
Liang Zhang, Bin Ma, Penghui Li

Given that constant-parameter model predictive control (MPC)-based automatic emergency braking (AEB) systems are unable to simultaneously balance comfort, safety, and computational efficiency, this paper proposes an adaptive optimization strategy for MPC that adjusts weights and sampling times to address this issue. First, a three-level warning strategy based on a safety distance model is introduced. This strategy assesses the risk level during vehicle operation using an emergency coefficient and adaptively adjusts the sampling time. By analysing the correlation between relative distance, speed, and injury risk, weight adjustment rules based on injury risk are determined. Second, a fuzzy regulator is developed with the emergency coefficient, injury risk, and relative distance as inputs is developed to enable dynamic adjustment of weights and sampling time in response to operational conditions. Finally, an AEB control strategy is designed based on hierarchical control principles: the upper layer uses MPC to achieve multi-objective optimization, while the lower layer employs PID correction to track the desired acceleration. In the test scenarios, joint simulation experiments were conducted using CarSim and MATLAB/Simulink, and the results under four scenarios and operating conditions were analysed and compared. The results show that the proposed control strategy enhances comfort while ensuring AEB safety control, reducing the average braking distance deviation by 11.80% and the average acceleration deviation by 48.91%. These improvements are significant for enhancing AEB performance without hardware modifications.

针对基于恒参数模型预测控制(MPC)的自动紧急制动(AEB)系统无法同时平衡舒适性、安全性和计算效率的问题,本文提出了一种MPC自适应优化策略,通过调整权值和采样时间来解决这一问题。首先,介绍了一种基于安全距离模型的三级预警策略。该策略利用应急系数对车辆运行过程中的风险水平进行评估,并自适应调整采样时间。通过分析相对距离、速度和伤害风险之间的相关性,确定基于伤害风险的体重调整规则。其次,建立了以应急系数、伤害风险和相对距离为输入的模糊调节器,使权重和采样时间能够根据操作条件进行动态调整。最后,基于分层控制原理设计了AEB控制策略:上层采用MPC实现多目标优化,下层采用PID校正跟踪期望加速度。在测试场景中,利用CarSim和MATLAB/Simulink进行联合仿真实验,并对四种场景和工况下的结果进行分析比较。结果表明,该控制策略在保证AEB安全控制的同时,提高了车辆的舒适性,平均制动距离偏差降低11.80%,平均加速度偏差降低48.91%。这些改进对于在不修改硬件的情况下提高AEB性能具有重要意义。
{"title":"Adaptive MPC-Based AEB Control Strategy with Dynamic Weight and Sampling Time Adjustment","authors":"Liang Zhang,&nbsp;Bin Ma,&nbsp;Penghui Li","doi":"10.1049/itr2.70112","DOIUrl":"10.1049/itr2.70112","url":null,"abstract":"<p>Given that constant-parameter model predictive control (MPC)-based automatic emergency braking (AEB) systems are unable to simultaneously balance comfort, safety, and computational efficiency, this paper proposes an adaptive optimization strategy for MPC that adjusts weights and sampling times to address this issue. First, a three-level warning strategy based on a safety distance model is introduced. This strategy assesses the risk level during vehicle operation using an emergency coefficient and adaptively adjusts the sampling time. By analysing the correlation between relative distance, speed, and injury risk, weight adjustment rules based on injury risk are determined. Second, a fuzzy regulator is developed with the emergency coefficient, injury risk, and relative distance as inputs is developed to enable dynamic adjustment of weights and sampling time in response to operational conditions. Finally, an AEB control strategy is designed based on hierarchical control principles: the upper layer uses MPC to achieve multi-objective optimization, while the lower layer employs PID correction to track the desired acceleration. In the test scenarios, joint simulation experiments were conducted using CarSim and MATLAB/Simulink, and the results under four scenarios and operating conditions were analysed and compared. The results show that the proposed control strategy enhances comfort while ensuring AEB safety control, reducing the average braking distance deviation by 11.80% and the average acceleration deviation by 48.91%. These improvements are significant for enhancing AEB performance without hardware modifications.</p>","PeriodicalId":50381,"journal":{"name":"IET Intelligent Transport Systems","volume":"19 1","pages":""},"PeriodicalIF":2.5,"publicationDate":"2025-11-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://ietresearch.onlinelibrary.wiley.com/doi/epdf/10.1049/itr2.70112","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145619249","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":4,"RegionCategory":"工程技术","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
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IET Intelligent Transport Systems
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