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Coordinated Dynamic Control of Multi-Subarea Perimeter Based on Three-Dimensional Macroscopic Fundamental Diagram 基于三维宏观基本图的多分区周界协调动态控制
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-19 DOI: 10.1049/itr2.70169
Xiaojuan Lu, Jiamei Zhang, Qingling He, Changxi Ma

The three-dimensional macroscopic fundamental diagram (3D-MFD) provides a novel approach to characterize the complex interactions between cars and buses in multimodal urban networks, offering particular value for designing efficient bimodal perimeter control strategies. In this study, a perimeter control strategy for cars is implemented by regulating the transfer flow rate at subregion boundaries, while bus numbers are dynamically adjusted through optimized dispatch frequencies. A multimodal traffic system state equation integrating both car and bus dynamics is constructed. Building on operational state factors for both modes, a passenger mode choice model based on the Logit model is established. With the dual objectives of maximizing the overall passenger arrival rate and minimizing total network energy consumption, an integrated multimodal traffic control framework (I-MPC) is developed using model predictive control (MPC). The comparative analysis against the no boundary control (NBC) method, the MPC-based boundary control method for private cars (C-MPC), and the bus scheduling optimization method (B-MPC) demonstrates that the proposed I-MPC method achieves outstanding performance across multiple key metrics, including passenger arrival efficiency, network energy consumption, and average bus occupancy rate, thereby enabling the optimized allocation and efficient utilization of traffic resources. Moreover, the method maintains reasonable bus occupancy levels while significantly enhancing passenger comfort and reducing overall system energy consumption.

三维宏观基本图(3D-MFD)提供了一种新的方法来表征多式联运城市网络中汽车和公交车之间复杂的相互作用,为设计有效的双峰周界控制策略提供了特殊的价值。在本研究中,通过调节分区域边界的转移流速率来实现汽车的周界控制策略,而通过优化调度频率来动态调整公交车数量。建立了集车、客车动力学于一体的多模式交通系统状态方程。以两种模式的运行状态因素为基础,建立了基于Logit模型的乘客模式选择模型。以旅客总到达率最大化和路网总能耗最小化为双重目标,采用模型预测控制(MPC)方法,构建了综合多模式交通控制框架(I-MPC)。通过与无边界控制(NBC)方法、基于mpc的私家车边界控制方法(C-MPC)和公交调度优化方法(B-MPC)的对比分析,表明本文提出的I-MPC方法在乘客到达效率、网络能耗和公交平均入住率等多个关键指标上都取得了优异的成绩,从而实现了交通资源的优化配置和高效利用。此外,该方法在保持合理的公交入住率的同时,显著提高了乘客舒适度,降低了整个系统的能耗。
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引用次数: 0
Deadline-Adherent Edge AI for Intelligent Vehicles: Real-Time Obstacle and Traffic Light Detection Using Quantized YOLOv8n on Jetson Orin Nano 基于Jetson Orin Nano的量化YOLOv8n实时障碍物和红绿灯检测
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-16 DOI: 10.1049/itr2.70135
Saranya M, Archana N, Rishi Koushik G

Reliable and time-bounded perception systems are necessary for autonomous vehicles' (AVs') safe navigation, especially at intersections. In this work, a post-training quantized you only look once (YOLOv8n) model for real-time obstacle and traffic light recognition is implemented on the NVIDIA Jetson Orin Nano. The system, which is integrated with the robot operating system 2 (ROS 2) framework, analyzes stereo input from a ZED 2i camera using soft real-time scheduling theory, taking worst-case execution time (WCET), jitter, and slack into account. Despite the workload surpassing the traditional schedulability constraints under earliest deadline first (EDF) and rate monotonic scheduling (RMS), empirical evaluation across 423 daytime urban frames reveals that 98.11% of inferences fulfil a 150 ms soft deadline. The results show minimal thermal drift, low jitter, consistent slack margins, and bounded deadline violations (<30 ms). Further analysis incorporates fixed-priority scheduling, CPU core affinity, and a deadline penalty model to assess safety implications in AV decision loops. While extreme conditions such as night driving or adverse weather were not included, future work will extend to these scenarios. Overall, the findings validate the feasibility of deploying a probabilistically schedulable, timing-aware perception pipeline for integration into intelligent transport systems (ITS) and edge AI platforms.

可靠和有时限的感知系统对于自动驾驶汽车的安全导航是必要的,尤其是在十字路口。在这项工作中,在NVIDIA Jetson Orin Nano上实现了一个用于实时障碍物和红绿灯识别的训练后量化(YOLOv8n)模型。该系统集成了机器人操作系统2 (ROS 2)框架,利用软实时调度理论分析ZED 2i摄像机的立体声输入,考虑了最坏情况执行时间(WCET)、抖动和松弛。尽管在最早截止日期优先(EDF)和速率单调调度(RMS)下,工作量超过了传统的可调度性约束,但对423个白天城市框架的实证评估表明,98.11%的推理满足150毫秒的软截止日期。结果显示最小的热漂移,低抖动,一致的松弛裕度和有限的截止日期违规(<;30毫秒)。进一步的分析结合了固定优先级调度、CPU核心亲缘性和最后期限惩罚模型,以评估自动驾驶决策循环中的安全影响。虽然不包括夜间驾驶或恶劣天气等极端情况,但未来的工作将扩展到这些情况。总体而言,研究结果验证了部署概率可调度、时间感知感知管道的可行性,该管道可集成到智能交通系统(ITS)和边缘人工智能平台中。
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引用次数: 0
A Biologically Inspired Intelligent and Energy Efficient Route Optimization Clustering Algorithm for Internet of Vehicles (IoV) 一种基于生物启发的智能节能车联网路径优化聚类算法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-16 DOI: 10.1049/itr2.70170
Ghassan Husnain, Wisal Zafar, Abid Iqbal, Abuzar Khan, Ali S. Alzahrani, Mohammed Al-Naeem

The swift evolution from vehicular ad hoc networks (VANETs) to the Internet of Vehicles (IoV) landscape has posed substantial routing optimization challenges regarding high mobility, dynamic topologies and intermittent connectivity. Conventional routing protocols such as AODV, DSR and GPSR are often unable to cater to the requirements of the IoV environment as they can result in latency, control overhead and overall scalability. To help tackle these limitations, this work proposes COANET (crayfish optimization algorithm-based route optimization for IoV networks), which is an innovative bio-inspired framework based on the crayfish optimization algorithm (COA). COANET's core utilized the crayfish behaviours of foraging, competition and summer resort to allow the dynamic balancing of exploration and exploitation during routing decisions. We implement these behaviours as explicit algorithmic operators and provide reproducible specifications to support replication. The framework is supported by energy-aware clustering, hybrid exploration-exploitation and multi-metric optimization to optimize latency, energy efficiency and packet delivery. To validate COANET, simulation performance results show that COANET, as compared to traditional protocols, improves the packet delivery ratio by 15–20% while reducing end-to-end delay by 30% and energy efficiency by 41.5%. Additionally, COANET reduced control overhead by 52.7% in both urban and highway scenarios, thus affirming its robustness and ability to scale for next-generation IoV Systems.

从车辆自组织网络(vanet)到车联网(IoV)的快速发展,对高移动性、动态拓扑和间歇性连接的路由优化提出了重大挑战。传统的路由协议,如AODV、DSR和GPSR通常无法满足车联网环境的要求,因为它们可能导致延迟、控制开销和整体可扩展性。为了帮助解决这些限制,本研究提出了基于小龙虾优化算法的IoV网络路由优化(COANET),这是一个基于小龙虾优化算法(COA)的创新生物启发框架。COANET的核心利用了小龙虾觅食、竞争和避暑的行为,在路线决策过程中实现了探索和利用的动态平衡。我们将这些行为实现为显式算法运算符,并提供可复制的规范来支持复制。该框架由能量感知集群、混合勘探开发和多度量优化来支持,以优化延迟、能源效率和数据包传输。为了验证COANET,仿真性能结果表明,与传统协议相比,COANET的分组传输率提高了15-20%,端到端延迟降低了30%,能源效率降低了41.5%。此外,在城市和高速公路场景中,COANET将控制开销降低了52.7%,从而证实了其稳健性和下一代车联网系统的扩展能力。
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引用次数: 0
Deep Learning Approaches for Effective Fog Detection 有效雾检测的深度学习方法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-10 DOI: 10.1049/itr2.70160
Olatz Iparraguirre, Frank A. Ricardo, Alfonso Brazalez, Diego Borro

One of the primary challenges in ensuring road safety is effectively alerting drivers to adverse weather conditions, such as fog, which can severely impair visibility and increase the risk of accidents. Timely and accurate fog detection is crucial for providing drivers with the necessary warnings to adapt their driving behaviour and enhance safety. This paper presents a system designed to detect foggy scenarios and classify visibility levels, thereby enabling timely alerts for drivers to minimise the risks associated with reduced visibility. To achieve this, we have developed two new image datasets of road fog scenarios – Foggy-Ceit 2023 and an extension to the Foggy CityScapes – DBF dataset – featuring both real and synthetic fog. Additionally, we compare various algorithms developed using classical vision techniques and deep learning methods (vision transformers [ViT] and EfficientNet). Finally, eXplainable artificial intelligence techniques are utilised to provide visual explanations and evaluate the performance of these models.

确保道路安全的主要挑战之一是有效地提醒驾驶员注意不利的天气条件,例如雾,这可能严重损害能见度并增加事故风险。及时和准确的雾探测对于向驾驶员提供必要的警告,以调整他们的驾驶行为和提高安全至关重要。本文介绍了一种用于检测大雾场景和分类能见度水平的系统,从而为驾驶员提供及时警报,以最大限度地减少能见度降低带来的风险。为了实现这一目标,我们开发了两个新的道路雾场景图像数据集——Foggy- ceit 2023和雾城市景观的扩展——DBF数据集——包括真实雾和合成雾。此外,我们比较了使用经典视觉技术和深度学习方法(视觉变压器[ViT]和effentnet)开发的各种算法。最后,可解释的人工智能技术被用于提供视觉解释和评估这些模型的性能。
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引用次数: 0
Potential Collision Severity Prediction Based on Data Distribution-Preserving Resampling 基于数据保持分布重采样的潜在碰撞严重程度预测
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-09 DOI: 10.1049/itr2.70163
Lan Zhao, Yuanyuan Ren, Xuelian Zheng, Xiansheng Li, Jianfeng Xi, Lei Shi, Yanhui Fan

The majority of existing research on collision severity focuses on post-collision severity, which is not conducive to collision prevention. This paper proposes a novel method for predicting the severity of potential collisions, aiming to establish a prediction model to predict the potential consequences of collisions before they occur, providing a basis for quantifying driving risk. In developing this model, two key challenges are addressed: how to effectively characterise the severity of potential collisions and how to manage the class imbalance caused by the scarcity of severe collisions. To tackle the first challenge, we introduce a systematic approach to find the most representative features of potential collision severity. For the second challenge, we propose a distribution-preserving resampling method to address the class imbalance. This approach includes two techniques: Remove Redundant Under Sampling (RRUS) and Core Seed-based Synthetic Minority Oversampling Technique (CS-SMOTE), which transform the imbalanced dataset into a balanced one while preserving the distribution characteristics of the original dataset. Finally, using the National Highway Traffic Safety Administration (NHTSA) dataset and the XGBoost algorithm, a potential collision severity prediction model is developed. The results demonstrate that the model achieves a prediction accuracy of over 97.7%, outperforming comparison models developed using other classification algorithms.

现有的碰撞严重程度研究大多集中在碰撞后的严重程度上,不利于碰撞预防。本文提出了一种预测潜在碰撞严重程度的新方法,旨在建立预测模型,在碰撞发生前预测潜在后果,为量化驾驶风险提供依据。在开发这个模型的过程中,解决了两个关键挑战:如何有效地描述潜在冲突的严重性,以及如何管理由于严重冲突的稀缺性而导致的类不平衡。为了解决第一个挑战,我们引入了一种系统的方法来寻找潜在碰撞严重性的最具代表性的特征。对于第二个挑战,我们提出了一种保持分布的重采样方法来解决类不平衡问题。该方法包括两种技术:去除冗余采样(RRUS)和基于核心种子的合成少数过采样技术(CS-SMOTE),在保留原始数据集分布特征的同时,将不平衡数据集转化为平衡数据集。最后,利用美国国家公路交通安全管理局(NHTSA)数据集和XGBoost算法,建立了潜在碰撞严重程度预测模型。结果表明,该模型的预测准确率达到97.7%以上,优于使用其他分类算法开发的比较模型。
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引用次数: 0
Assessment of Highway Available Sight Distances Under Disability Glare Using a Field-of-View Model and Traffic-Signboard Recognition 基于视场模型和交通标志识别的残疾眩光下公路可用视距评估
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-05 DOI: 10.1049/itr2.70158
Hao Li, Jin Wang, Hongyang Zhai, Yun Hao, Yanyan Chen

Assessing available sight distances (ASDs) affected by disability glare on highways is essential for establishing a relationship among ASDs, sun ray variations, roadside occlusions, and the driver's field-of-view. This study proposes a novel disability-glare-coupled ASD (DG-ASD) assessment method for two-lane highways. The method involves simulating road glare using sun ray simulations and ray occlusion identification, evaluating ASDs through a gaze-based field-of-view model combined with a primary line-of-sight function, and quantifying the reduction in ASDs caused by disability glare. Three road datasets are analysed to validate the proposed method. The proposed ray occlusion algorithm reduced computation time by approximately 89.9%, and the efficiency of the proposed field-of-view model improved by 97.40%. On average, DG-ASDs were approximately 42 m shorter than ASDs without the influence of disability glare. The findings of this research contribute to enhancing intelligent navigation systems and roadside infrastructure by enabling timely alerts for insufficient ASDs caused by disability glare.This research assessing ASDs affected by disability glare on highways, and contributes to enhancing intelligent navigation systems and roadside infrastructure by enabling timely alerts for insufficient ASDs caused by disability glare.

评估高速公路上受残疾眩光影响的可用视距(asd)对于建立asd、太阳光线变化、路边遮挡和驾驶员视野之间的关系至关重要。本研究提出了一种新的双车道公路残障-眩光耦合ASD (DG-ASD)评估方法。该方法包括使用太阳光线模拟和光线遮挡识别模拟道路眩光,通过基于凝视的视场模型结合主要视线功能评估asd,并量化残疾眩光导致的asd减少。分析了三个道路数据集,验证了所提出的方法。提出的光线遮挡算法将计算时间缩短约89.9%,将视场模型的效率提高97.40%。平均而言,dg - asd比没有残疾眩光影响的asd短约42 m。这项研究的结果有助于提高智能导航系统和路边基础设施,使及时警报不足的自闭症由残疾眩光引起。本研究评估了高速公路上受残疾眩光影响的自闭症患者,并通过对残疾眩光导致的自闭症患者不足及时发出警报,有助于增强智能导航系统和路边基础设施。
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引用次数: 0
BGAR: A Dual-Channel Deep Learning Framework for Urban Expressway Traffic Accident Prediction 城市高速公路交通事故预测的双通道深度学习框架
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-04 DOI: 10.1049/itr2.70156
Xiuqi Zhang, Chonghao Zhang, Tao Wang, Yi Zhang, Linlin Zang

Accurate accident prediction is crucial for proactive safety management on urban expressways. However, its practical efficacy is hindered by several complex challenges, including the heterogeneity of causal data, the need to model the full temporal evolution of risk, and the synergistic, non-linear interactions between variables. To address these challenges, this study proposes BGAR, a dual-channel deep learning framework. The framework features a dual-channel architecture to disentangle static and dynamic data streams, a bidirectional GRU to model the complete risk lifecycle, and a multi-head attention mechanism to weigh critical factor combinations. Validated on a real-world expressway dataset, BGAR demonstrates superior predictive accuracy, outperforming the strongest of 12 established baseline models by 3% in terms of R2$R^{2}$. More importantly, it provides a diagnostic tool that translates forecasts into actionable control strategies. By pinpointing risk drivers, the framework enables a fundamental shift from reactive response to precise, proactive safety management, thus bridging the gap between prediction and prevention. The predictive target is the short-term accident count for the monitored corridor, enabling operators to quantify imminent risk levels in addition to identifying their drivers.

准确的事故预测是城市高速公路主动安全管理的关键。然而,其实际效果受到几个复杂挑战的阻碍,包括因果数据的异质性,对风险的全时间演变建模的需要,以及变量之间的协同非线性相互作用。为了应对这些挑战,本研究提出了双通道深度学习框架BGAR。该框架具有双通道架构,用于分离静态和动态数据流,双向GRU用于模拟完整的风险生命周期,以及多头关注机制来权衡关键因素组合。在真实的高速公路数据集上验证,BGAR显示出卓越的预测准确性,在r2 $R^{2}$方面,比12个已建立的基线模型中最强的模型高出3%。更重要的是,它提供了一个诊断工具,将预测转化为可操作的控制策略。通过确定风险驱动因素,该框架实现了从被动应对到精确、主动安全管理的根本性转变,从而弥合了预测和预防之间的差距。预测目标是监控通道的短期事故数量,使运营商能够量化即将发生的风险水平,同时识别驾驶员。
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引用次数: 0
Revisiting Accessibility to Amenities: Equity Implications From Comparing Cumulative Opportunity Measure and Two-Step Floating Catchment Area Method 重新审视便利设施的可达性:比较累积机会法与两步浮动集水区法的公平意义
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-04 DOI: 10.1049/itr2.70165
Yue Chen, Shunping Jia, Steve O'Hern, Qi Xu

Evaluating the accessibility of amenities is fundamental to achieving equitable urban planning of cities. The cumulative opportunity measure (CO) and the two-step floating catchment area method (2SFCA) are widely used in previous studies. Although there is ongoing debate and discussion about the choice of method for measuring accessibility, the comparison between these two methods has not been thoroughly examined and differences in the spatial distribution of accessibility and the resulting equity from them have tended to be ignored. Here, we contrasted the similarities and differences in spatial accessibility in 12 different scenarios by using CO and 2SFCA, respectively. The scenarios considered the two models in two transportation modes, public transport (PT) and private car (PC), and six key urban services, company, education, healthcare, shopping, restaurant, and scenery, are thoroughly explored. Equity, between different housing price areas, was also evaluated by using the Gini coefficient and Palma ratio. The findings show that the spatial distributions of accessibility from CO are more related to the whole city structure, while the results from 2SFCA can better reflect the local characteristics and spatial heterogeneity. Regarding equity, PT accessibility is less equitable than PC under CO, but more equitable under 2SFCA. We also found that the accessibility and equity of PT are more susceptible to the chosen method compared to PC. This study can help planners understand accessibility and equity from different views and make adjustments of resources allocation in future planning.

评价便利设施的可及性是实现城市公平规划的基础。累积机会测度法(CO)和两步浮动集水区法(2SFCA)在以往的研究中被广泛采用。虽然关于可达性测量方法的选择一直存在争论和讨论,但这两种方法之间的比较并没有得到彻底的检验,可达性的空间分布差异和由此产生的公平性往往被忽视。本文采用CO和2SFCA对比了12种不同情景下空间可达性的异同点。在公共交通(PT)和私家车(PC)两种交通方式下,以及公司、教育、医疗、购物、餐饮和风景等六项关键城市服务中考虑两种模式的场景,进行了深入的探讨。利用基尼系数和帕尔马比率对不同房价区域间的公平性进行了评价。研究结果表明,CO可达性的空间分布与城市整体结构的关联性更强,而2SFCA的结果更能反映城市局部特征和空间异质性。在公平方面,在CO下,PT可及性不如PC可及性公平,而在2SFCA下,PT可及性更公平。我们还发现,与PC相比,PT的可及性和公平性更容易受到选择方法的影响。本研究可以帮助规划者从不同的角度理解可达性和公平性,并在未来的规划中调整资源配置。
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引用次数: 0
Dynamic Preference for Autonomous Driving: A Deep Reinforcement Learning Approach 自动驾驶动态偏好:一种深度强化学习方法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-04 DOI: 10.1049/itr2.70161
Jun Gu, Yang Wang, Shengfei Li, Ziang Lin, Naisi Zhang, Senqi Tan, Xiangyang Su

Deep reinforcement learning (DRL) based autonomous driving vehicles (ADVs) has attracted numerous researchers in recent years. Many DRL-based urban traffic scenarios ADVs have been studied. However, there still remains a notable gap in the literature regarding the incorporation of dynamic passenger preferences. For instance, the passenger dynamic preferences between safety, comfort and efficiency change as traffic changes. Existing researches often overlook the dynamic nature of passenger preferences, which can significantly impact the overall passenger experience. Therefore, to improve driving personality and efficiency, in this paper, we deal with the challenge of incorporating dynamic passenger preferences into ADVs using DRL. We propose an innovative DRL method that first leverages prior knowledge to reduce the preference space which can speed up the training process. Then we apply homotopy optimization to make DRL optimization problem gradually transition from non-preference to dynamic preference. We validate our approach utilizing a simulated merge environment. Experimental results show that our approach has faster convergence and better performance when dealing with dynamic preference.

近年来,基于深度强化学习(DRL)的自动驾驶汽车(ADVs)吸引了众多研究者的关注。许多基于drl的城市交通场景已经被研究过。然而,关于纳入动态乘客偏好的文献仍然存在显著的差距。例如,乘客在安全、舒适和效率之间的动态偏好会随着交通的变化而变化。现有的研究往往忽视了乘客偏好的动态性,而这对乘客的整体体验有着重要的影响。因此,为了提高自动驾驶汽车的驾驶个性和效率,本文采用DRL技术解决了将动态乘客偏好融入自动驾驶汽车的挑战。我们提出了一种创新的DRL方法,该方法首先利用先验知识来减小偏好空间,从而加快训练过程。然后应用同伦优化方法使DRL优化问题从非偏好逐步过渡到动态偏好。我们利用模拟的合并环境来验证我们的方法。实验结果表明,该方法在处理动态偏好时具有更快的收敛速度和更好的性能。
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引用次数: 0
Joint Optimisation of the Gate and Taxi Route During Peak Hours: A Fusion Algorithm of Adaptive Genetic and Artificial Bee Colony 高峰时段登机口与出租车路线联合优化:一种自适应遗传与人工蜂群融合算法
IF 2.5 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-01-31 DOI: 10.1049/itr2.70162
Fujun Wang, Dongqing Liu, Xiangyi Li, Wei Zhang, Hongfei Liu, Jun Bi

The joint optimisation of parking gates and taxiing time is critical in improving airport operation efficiency. However, there is a lack of effective solutions to this problem, especially during peak hours. This paper constructs a joint optimisation model for parking gate and taxiing route assignment based on column generation (CG). An artificial bee colony–adaptive genetic algorithm fusion is designed to solve the joint model considering CG characteristics and can operate in parallel. Then this paper uses the actual data from Beijing Capital International Airport (PEK) and Kunming Changshui International Airport (KMG) to verify the proposed method. It is proved that this study can effectively improve parking gate and taxiway utilisation compared with the actual allocation results and baseline algorithms. Meanwhile, in peak hours, this method can still give stable results at an acceptable time.

停车闸口与滑行时间的联合优化是提高机场运行效率的关键。然而,这一问题缺乏有效的解决方案,尤其是在高峰时段。本文建立了一个基于列生成(CG)的停车门与滑行路线分配联合优化模型。考虑CG特性,设计了一种人工蜂群自适应融合遗传算法求解联合模型,并可并行运行。然后利用北京首都国际机场(PEK)和昆明长水国际机场(KMG)的实际数据对本文提出的方法进行了验证。与实际分配结果和基线算法进行比较,证明本研究能有效提高泊车闸口和滑行道的利用率。同时,在高峰时段,该方法仍能在可接受的时间内给出稳定的结果。
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引用次数: 0
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IET Intelligent Transport Systems
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