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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
Safety-Critical Kinematically-Executable Overtake Planning via Contingency Path-Speed Iterative Algorithm for Automated Valet Parking* 基于应急路径-速度迭代算法的代客泊车安全临界运动可执行超车规划*
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-08 DOI: 10.1049/itr2.70140
Wei Han, Bo Leng, Peizhi Zhang, Lu Xiong

Autonomous driving has emerged as a highly topical subject within the realm of intelligent transportation systems. Automated valet parking (AVP) represents one of the initial mass-production application scenarios. However, motion planning in AVP confronts a series of formidable challenges. These challenges include a constricted movement space, vehicles parked in violation of regulations, and vehicles that intrude suddenly. In response to these issues, this article devises a safety-critical, kinematically executable overtaking planning system for AVP through a contingency path-speed iterative algorithm. A path-speed iterative optimisation framework is adopted, taking into full account both the curvature constraint and the contour constraint. The prediction probability of dynamic obstacles is incorporated into the quadratic optimisation problem, presented in the form of either soft or hard constraints. Furthermore, a contingency path-speed iterative planner is formulated to address the multi-modal predictions and the interframe probability transfer that occur during the overtaking process in parking lots. Numerical simulations (conducted on the Carla simulator with a 10 Hz planning cycle) across four complex AVP scenarios demonstrate that the proposed algorithm outperforms the baseline Baidu Apollo EM Planner. On-road experiments (deployed on a mass-produced MCU) further validate that the algorithm maintains real-time performance (average computation time < 10 ms) and reduces speed oscillation by over 50% compared to the baseline, while ensuring kinematically executable trajectories (max steering wheel angle limited to 389°). These results confirm the proposed algorithm significantly enhances overtaking safety, executability, and efficiency for AVP.

自动驾驶已经成为智能交通系统领域的一个热门话题。自动代客泊车(AVP)代表了最初的量产应用场景之一。然而,AVP的运动规划面临着一系列严峻的挑战。这些挑战包括狭窄的活动空间、违规停放的车辆以及突然闯入的车辆。针对这些问题,本文采用偶发路径-速度迭代算法,设计了一种安全关键型、运动可执行的AVP超车规划系统。采用路径速度迭代优化框架,充分考虑曲率约束和轮廓约束。将动态障碍物的预测概率纳入到二次优化问题中,以软约束或硬约束的形式呈现。此外,针对停车场超车过程中出现的多模态预测和车架间概率转移问题,建立了应急路径-速度迭代规划器。四种复杂AVP场景的数值模拟(在Carla模拟器上以10 Hz规划周期进行)表明,所提出的算法优于基准百度Apollo EM Planner。道路实验(部署在大规模生产的MCU上)进一步验证了该算法保持实时性能(平均计算时间<; 10毫秒),与基线相比减少了50%以上的速度振荡,同时确保了运动学可执行轨迹(最大方向盘角度限制在389°)。结果表明,该算法显著提高了AVP超车的安全性、可执行性和超车效率。
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引用次数: 0
Integrating Berthing Plan and Container Transshipment at the Sea-Rail Intermodal Terminal 海铁联运码头泊位规划与集装箱转运的整合
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-07 DOI: 10.1049/itr2.70123
Weite Pan, Baicheng Yan, Li Wang, Xiaoning Zhu

The adoption of positioning, tracking and communication technologies in modern ports enables real-time monitoring of vessel arrivals, container movements and equipment status, while automated technologies help ensure operations adhere more closely to schedules. These capabilities allow ports to implement more intelligent and dynamic planning and scheduling strategies. Building on this technological foundation, this paper investigates a comprehensive operation optimization approach that integrates the berth allocation (BAP) and container transshipment problem at a port terminal within a sea-rail intermodal transportation system. The study focuses on berth and quay crane allocation on the quayside, as well as container storage and train operation scheduling on the landside, with components interconnected through the flow of import intermodal containers. A mathematical programming model is developed and a variable neighbourhood search algorithm is proposed, with its performance compared against GUROBI and other heuristic algorithms. Numerical experiments are conducted to demonstrate the effectiveness of the proposed heuristic approach. Furthermore, the impacts of quayside equipment deployment and rail yard operational capacity are analysed to provide managerial insights for improving container terminal operations.

在现代港口采用定位、跟踪和通信技术,可以实时监测船舶到达、集装箱移动和设备状态,而自动化技术有助于确保操作更紧密地遵守时间表。这些功能允许端口实现更智能、更动态的规划和调度策略。在此技术基础上,本文研究了海铁联运系统中港口码头的泊位分配与集装箱转运问题相结合的综合作业优化方法。研究的重点是码头侧的泊位和岸吊配置,以及陆地侧的集装箱存储和列车运行调度,通过进口多式联运集装箱的流动将组件连接起来。建立了一个数学规划模型,提出了一种可变邻域搜索算法,并将其性能与GUROBI和其他启发式算法进行了比较。数值实验验证了所提启发式方法的有效性。此外,分析了码头设备部署和铁路堆场运营能力的影响,为改善集装箱码头运营提供管理见解。
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引用次数: 0
Traffic Data Collection and Representation as National-Level Fundamental Diagrams for England 英国国家级基础图的交通数据收集与表示
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-06 DOI: 10.1049/itr2.70137
Zixuan Chai, Parth Deshpande, Xiaoxiang Na, David Cebon

Traffic congestion significantly affects speed, and thus energy consumption of heavy goods vehicles (HGVs). One of the ways of correlating traffic state with vehicle speed is fundamental diagrams (FDs). This study develops a methodology to collect national-level traffic data for England, integrate it with vehicle data, and use the data to construct FDs by type of road in England. Traffic counts and time-averaged traffic speed are obtained from the National Highways database and Road Traffic dataset, and space-averaged traffic speed data is obtained from HERE Maps. Missing entries are added using the temporal pattern of traffic flow, and outliers in the count data are filtered using spline-regression and unsupervised k-means clustering. Traffic data is classified by road types using information from HERE Maps. FDs are constructed for each type of road and validated using a separate test dataset from the National Highways database. The correlation between macroscopic traffic flow data and microscopic vehicle data is verified by validating the FDs with HGV speed data collected from on-board telematics systems. The results can be used to predict vehicle speed directly from traffic density using universal HGV FDs for England, that is useful for estimating energy consumption.

交通拥堵严重影响重型货车的行驶速度,进而影响其能耗。将交通状态与车速联系起来的方法之一是基本图(FDs)。本研究开发了一种收集英国国家级交通数据的方法,将其与车辆数据整合,并使用这些数据构建英国道路类型的fd。交通计数和时间平均交通速度数据来自国家公路数据库和道路交通数据集,空间平均交通速度数据来自HERE Maps。使用交通流的时间模式添加缺失条目,使用样条回归和无监督k-means聚类过滤计数数据中的异常值。交通数据根据HERE地图的信息按道路类型分类。为每种类型的道路构建fd,并使用来自国家公路数据库的单独测试数据集进行验证。宏观交通流数据与微观车辆数据之间的相关性通过对FDs与从车载远程信息处理系统收集的HGV速度数据进行验证来验证。该结果可用于使用英国通用HGV FDs直接从交通密度预测车辆速度,这对估计能源消耗是有用的。
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引用次数: 0
A Hybrid A*-APF Path Planning Method for Ships Entering the Berthing Waters 船舶进入靠泊水域的混合A*-APF路径规划方法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-05 DOI: 10.1049/itr2.70142
Zhuo Wen, Jinfen Zhang, Jiongjiong Liu, Wu Ning

Ship berthing is a critical and high-risk phase of navigation that requires highly precise path planning in environments with numerous obstacles. This paper presents a two-stage hybrid path planning approach designed to improve both safety and manoeuvrability during berthing operations. The first stage involves constructing an accurate environmental model based on berth characteristics. In the second stage, an enhanced A* algorithm is introduced with a directional consistency penalty to generate globally feasible paths with improved continuity. To further enhance local obstacle avoidan ce and edge-following capabilities, the artificial potential field method is applied. The resulting path is coupled with a ship dynamics model and a dynamic look-ahead strategy combined with PID control is employed to enable closed-loop heading and speed tracking. Simulation results show that the proposed method significantly enhances path smoothness and obstacle clearance. Specifically, the average heading change is reduced to 2.51° and the minimum obstacle distance increases from 15.12 to 39.04 m. This approach offers a practical and effective solution for autonomous berthing in constrained port environments.

船舶靠泊是航行的关键和高风险阶段,需要在有许多障碍物的环境中进行高精度的路径规划。本文提出了一种两阶段混合路径规划方法,旨在提高靠泊作业的安全性和可操作性。第一阶段是基于泊位特征构建精确的环境模型。在第二阶段,引入了一种带有方向一致性惩罚的增强A*算法,以生成具有改进连续性的全局可行路径。为了进一步提高局部避障能力和边缘跟踪能力,采用了人工势场法。将得到的路径与船舶动力学模型相结合,采用动态前瞻策略结合PID控制实现航向和速度的闭环跟踪。仿真结果表明,该方法显著提高了路径的平滑性和越障性。具体而言,平均航向变化减小到2.51°,最小障碍距离从15.12 m增加到39.04 m。该方法为受限港口环境下的自主靠泊提供了一种实用有效的解决方案。
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引用次数: 0
The Impact of Transportation Technologies, Technological Exports, Trade Freedom and Trade Globalisation on Transport-Based CO2 Emissions in the Top 10 Emitter Countries 交通技术、技术出口、贸易自由和贸易全球化对十大排放国基于交通的二氧化碳排放的影响
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-05 DOI: 10.1049/itr2.70130
Erick Okoth, Azad Erdem, Tunahan Degirmenci, Cahit Sanver

High and medium technology exports play a crucial role in supporting economic growth, fostering international competition and potentially reducing carbon dioxide emissions through the adoption of advanced technologies. However, the environmental effects of such exports, particularly in the transportation sector, remain underexplored. This study addresses this gap by examining how transportation technologies, high and medium technology exports, trade freedom, and trade globalisation affect CO2 emissions from transportation. The analysis covers the ten countries with the highest transportation-related emissions over the period 1995–2020, employing augmented mean group (AMG) and common correlated effects (CCE) estimators. The results reveal heterogeneous effects across countries. Transportation technologies are found to increase emissions in Japan but reduce them in South Korea, the United States and Mexico. High and medium technology exports raise transportation emissions in China, France, Germany, the USA and the overall panel. Trade globalisation increases emissions in France, whereas it reduces them in Germany. These findings suggest that advancing transportation technologies, aligning trade openness with environmental goals and shifting exports toward higher technology products can support the reduction of transportation-related carbon emissions. Such measures are vital for progress toward the Sustainable Development Goals.

高新技术出口在支持经济增长、促进国际竞争和通过采用先进技术可能减少二氧化碳排放方面发挥着至关重要的作用。但是,这种出口的环境影响,特别是在运输部门的环境影响,仍然没有得到充分探讨。本研究通过考察运输技术、高新技术出口、贸易自由和贸易全球化如何影响运输产生的二氧化碳排放来解决这一差距。该分析涵盖了1995-2020年期间交通相关排放量最高的10个国家,采用了增强平均组(AMG)和共同相关效应(CCE)估计器。研究结果揭示了不同国家的不同效应。研究发现,交通技术增加了日本的排放量,但减少了韩国、美国和墨西哥的排放量。中高技术出口增加了中国、法国、德国、美国和整个面板的交通排放。贸易全球化增加了法国的排放量,却减少了德国的排放量。这些发现表明,提高运输技术、使贸易开放与环境目标保持一致以及将出口转向高技术产品,可以支持减少与运输相关的碳排放。这些措施对于实现可持续发展目标至关重要。
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引用次数: 0
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