In-vehicle Navigation Technology Considering Traffic Safety: A Systematic Literature Review
-
摘要: 随着社会经济发展,交通安全受到的重视程度越来越高,也要求传统的车载导航技术从时间最短的单一效率目标,转向交通效率与安全的综合优化。但现有研究仍存在数据维度不全、用户需求适配性低、多目标权衡难度大等问题,难以适配未来智能交通体系下的大规模应用场景。采用系统性文献综述方法,选取51篇核心非综述文献,围绕数据来源、交通安全水平度量及预测方法、考虑安全的寻路方法、技术验证这4个关键研究问题展开分析,总结领域研究现状与核心需求,为未来智能交通环境下导航技术的发展提供参考与建议。研究发现:数据来源层面,现有研究多依赖单一数据源,且未充分考虑交通场景中的实时、微观特征。采用的安全水平度量及预测方法则多缺乏对不同类型道路单元的因素差异的考虑,以及对于交通运行特征变化趋势的探究,且受数据统计难度与聚合逻辑复杂性影响,难以实现客观度量。考虑安全的寻路方法方面,多数研究将多目标简化为单目标进行优化,但其权重确定缺乏客观依据且动态适配能力不足;而基于最优前沿的寻路方法虽无需权重调整,却在实际求解中面临预设参数限制、计算效率偏低等问题。技术验证方面,真实路测的可靠性最优,但受成本约束难以大规模开展;基于真实数据的推演与交通仿真可有效降低测试成本,却存在实时动态交互信息缺失、与真实交通状况偏差较大等缺陷;主观感受验证虽能补充用户反馈维度信息,仍需权衡样本量、受试者类型带来的成本与有效性问题。针对后续研究,建议聚焦以下4个方向:①建立未来交通信息环境下导航关键数据体系;②在安全水平预测中融入实时交通态势推演;③结合驾驶人异质化驾驶风格与个性化需求,优化寻路技术;④融合大语言模型等新技术,以为导航技术提供智能交互能力支撑。Abstract: With socioeconomic development, traffic safety receives increasing attention. This trend has driven traditional in-vehicle navigation technologies to shift from a single efficiency-oriented objective (minimizing travel time) toward a comprehensive optimization of traffic efficiency and safety. However, existing studies still suffer from limitations such as incomplete consideration of data dimensions, low adaptability to user needs, and difficulties in multi-objective trade-offs, which hinder their applicability in large-scale scenarios under future intelligent transportation systems. To address these gaps, this study adopts a systematic literature review approach and analyzes 51 core non-review publications. It focuses on four key research questions: data sources, traffic safety level measurement and prediction methods, safety-aware routing approaches, and technical validation strategies. The review synthesizes the current state of research and identifies core demands in the field, providing references and recommendations for the future development of navigation technologies in intelligent transportation environments. The findings indicate that, in terms of data sources, most existing studies rely on a single data source and fail to adequately capture real-time and microscopic traffic characteristics. Regarding safety level measurement and prediction, many approaches lack differentiation among various types of road units and do not sufficiently explore the evolutionary trends of traffic operational characteristics; moreover, due to challenges in data collection and the complexity of aggregation logic, achieving objective safety quantification remains difficult. For safety-aware routing methods, most studies simplify multi-objective problems into single-objective optimization, where the determination of objective weights lacks objective foundations and sufficient dynamic adaptability; although Pareto-front-based methods avoid explicit weight assignment, they face practical challenges such as reliance on preset parameters and relatively low computational efficiency. In terms of technical validation, real-world field tests provide the highest reliability but are constrained by high costs and limited scalability; simulations and data-driven scenario replay based on real data can effectively reduce testing costs, yet they often lack real-time interactive dynamics and may deviate from actual traffic conditions; subjective evaluation can supplement user perception and feedback, but trade-offs among sample size, participant characteristics, cost, and validity must be carefully balanced. Based on these insights, future research is recommended to focus on four major directions: ① establishing key navigation-related data framework under future traffic information environments. ②Integrating real-time traffic state inference into safety level prediction. ③Incorporating heterogeneous driving styles and personalized user needs to enhance routing techniques. ④Leveraging emerging technologies such as large language models to provide intelligent interaction and decision-support capabilities for next-generation navigation systems.
-
表 1 纳入和排除规则
Table 1. Inclusion and exclusion rules
纳入规则 排除规则 1.研究主题必须是将交通安全考虑到车载导航技术中
2.研究以车辆的车载导航为主体,包括描述车辆行驶安全状态的安全指数与车载导航技术
3.必须提出1种算法或量化方法,而不是评论性的文献1.排除不研究或只研究交通安全指数或车载导航优化系统的文献
2.排除船舶、航空等非道路的考虑安全的车载导航优化系统
3.排除以犯罪、传染病安全、危险品运输、现金运输等特殊角度考虑的交通安全指数
4.排除只研究自行车、行人相关的考虑安全的车载导航优化系统
5.排除综述性、评论文章、商业广告、意见等表 2 所涉及研究中路网要素信息数据使用概况
Table 2. Road network data used in relevant study
要素类型 要素信息 路段 路段长度、行程时间;路段限速;几何线形、路段曲率、坡度;路面摩擦、路面质量;车道数及宽度;道路等级;交通信号标志 交叉口 转弯处可见性;进路数量;控制方法 表 3 所涉及研究中实时交通运行数据使用概况
Table 3. Real-time traffic operation data used in relevant study
交通流类型 交通运行信息 宏观 实时行程时间;平均速度;路线速度、加速度波动;交通流量;交通流密度;拥堵程度 微观 车辆平均速度及波动;车辆加速度及波动;车辆行驶方向、变道;碰撞时间(time to collision,TTC)、后侵入时间(post encroachment time,PET) -
[1] SOHRABI S, WENG Y M, DAS S, et al. Safe route-finding: a review of literature and future directions[J]. Accident Analysis & Prevention, 2022, 177: 106816. [2] HUANG H L, WEI Y L, HAN C Y, et al. Travel route safety estimation based on conflict simulation[J]. Accident Analysis & Prevention, 2022, 171: 106666. [3] HOSEINZADEH N, ARVIN R, KHATTAK A J, et al. Integrating safety and mobility for pathfinding using big data generated by connected vehicles[J]. Journal of Intelligent Transportation Systems, 2020, 24(4): 404-420. doi: 10.1080/15472450.2019.1699077 [4] MOSTAFA S M, HABASHY S M, SALEM S A. A new framework for multi-objective route planning in smart cities[C]. 8th International Conference on Advanced Intelligent Systems and Informatics 2022, Cairo, Egypt: Springer, 2023. [5] PAGE M J, MCKENZIE J E, BOSSUYT P M, et al. The PRISMA 2020 statement: an updated guideline for reporting systematic reviews[J]. International Journal of Surgery, 2021, 88: 105906. doi: 10.1016/j.ijsu.2021.105906 [6] SOHRABI S, LORD D. Navigating to safety: Necessity, requirements, and barriers to considering safety in route finding[J]. Transportation Research Part C: Emerging Technologies, 2022, 137: 103542. doi: 10.1016/j.trc.2021.103542 [7] HE Z, QIN X. Incorporating a safety index into pathfinding[J]. Transportation Research Record: Journal of the Transportation Research Board, 2017, 2659(1): 63-70. doi: 10.3141/2659-07 [8] PEŠIĆ D, ŠELMIĆ M, MACURA D, et al. Finding optimal route by two-criterion fuzzy Floyd's algorithm—case study Serbia[J]. Operational Research, 2020, 20(1): 119-138. doi: 10.1007/s12351-017-0319-4 [9] KRUMM J, HORVITZ E. Risk-aware planning: methods and case study on safe driving routes[C]. 29th AAAI Conference on Artificial Intelligence, San Francisco, USA: AAAI, 2017. [10] KINGSBURY H, HARRIS D, DURDIN P. Journey optimisation by safest route[C]. 1st Australasian Road Safety Conference, Gold Coast, Australia: ARRB, 2015. [11] SARRAF R, MCGUIRE M P. A data driven approach for safe route planning[J]. International Journal of Applied Geospatial Research, 2018, 9(1): 1-18. [12] HAYES S, WANG S, DJAHEL S. Personalized road networks routing with road safety consideration: a case study in Manchester[C]. 2020 IEEE International Smart Cities Conference (ISC2), Piscataway, USA: IEEE, 2020. [13] TAKENO R, SEKI Y, SANO M, et al. A route navigation system for reducing risk of traffic accidents[C]. IEEE 5th Global Conference on Consumer Electronics, Kyoto, Japan: IEEE, 2016. [14] JIANG S, ZHANG Y L, LIU R, et al. Data-driven optimization for dynamic shortest path problem considering traffic safety[J]. IEEE Transactions on Intelligent Transportation Systems, 2022, 23(10): 18237-18252. doi: 10.1109/TITS.2022.3165757 [15] SOLÉ L, SAMMARCO M, DETYNIECKI M, et al. Towards drivers'safety with multi-criteria car navigation systems[J]. Future Generation Computer Systems, 2022, 135: 1-9. [16] RAMOS J M A M, ALMEIDA V G J, SANTANA H, et al. User-centered analysis of a safe bus routing strategy[J]. Journal of Internet Services and Applications, 2023, 14(1): 84-94. doi: 10.5753/jisa.2023.3075 [17] KOZIEVITCH N P, MORALES C H G, AGNER L R N, et al. Safetrip: suggested itineraries to reduce accident risk factors[C]. 18th Simpósio Brasileiro de Sistemas de Informação (SBSI), Curitiba, Brasil: Sociedade Brasileira de Computação(SBC), 2022. [18] LIU Q, KUMAR S, MAGO V. SafeRNet: safe transportation routing in the era of Internet of vehicles and mobile crowd sensing[C]. 14th IEEE Annual Consumer Communications & NetworkingConference(CCNC), LasVegas, USA: IEEE, 2017. [19] CHANDRA S. Safety-based path finding in urban areas for older drivers and bicyclists[J]. Transportation Research Part C: Emerging Technologies, 2014, 48: 143-157. doi: 10.1016/j.trc.2014.08.018 [20] ABDELRAHMAN A, HASSANEIN H S, ABU-ALI N. iRouteSafe: personalized cloud-based route planning based on risk profiles of drivers[C]. 2019 IEEE Globecom Workshops (GC Wkshps), Waikoloa, USA: IEEE, 2019. [21] SAHNOON I, SHAWKY M, AL-GHAFLI A. Integrating traffic safety in vehicle routing solution[C]. The AHFE 2017 International Conference on Human Factors in Transportation, Los Angeles, USA: Springer, 2017. [22] DIJKSTRA A. Assessing the safety of routes in a regional network[J]. Transportation Research Part C: Emerging Technologies, 2013, 32: 103-115. doi: 10.1016/j.trc.2012.10.008 [23] LIAO X L, ZHOU T, WANG X, et al. Driver route planning method based on accident risk cost prediction[J]. Journal of Advanced Transportation, 2022(1): 5023052. [24] DHOLAPURIYA A, MALLAH A, SINGH Y, et al. Optimal safe route recommendation by examining roadside accident attributes[J]. Journal of Information Technology, 2019, 7(1): 29-33. [25] 章诗琪, 魏斐斐, 范馨月. 受天气与交通事故影响的安全路线选择模型[J]. 计算机工程与应用, 2021, 57(10): 246-251.ZHANG S Q, WEI F F, FAN X Y. Model of secure routes selection influenced by weather and traffic accidents[J]. Computer Engineering and Applications, 2021, 57(10): 246-251. (in Chinese) [26] BRITO M, SANTOS C, MARTINS B S, et al. Context-aware multi-modal route selection service for urban computing scenarios[J]. Ad Hoc Networks, 2024, 161: 103525. doi: 10.1016/j.adhoc.2024.103525 [27] FU C, SAYED T. Bayesian dynamic extreme value modeling for conflict-based real-time safety analysis[J]. Analytic Methods in Accident Research, 2022, 34: 100204. doi: 10.1016/j.amar.2021.100204 [28] GHOUL T, SAYED T, FU C. Real-time safest route identification: examining the trade-off between safest and fastest routes[J]. Analytic Methods in Accident Research, 2023, 39: 100277. doi: 10.1016/j.amar.2023.100277 [29] TENG W, LAM W H K, TAM M L, et al. A reliability-based safest-path-finding algorithm in congested road networks with travel time uncertainties[C]. IEEE 25th International Conference on Intelligent Transportation Systems(ITSC), Macau, China: IEEE, 2022. [30] FELÍCIO S, HORA J, FERREIRA M C, et al. Handling openstreetmap georeferenced data for route planning[J]. Transportation Research Procedia, 2022, 62: 189-196. doi: 10.1016/j.trpro.2022.02.024 [31] TORKEY A, ZAKI M H, DAMATTY A A E. A spatiotemporal GIS-approach for evaluating the safety of EV trips during wildfires[J]. Journal of Transport Geography, 2025, 127: 104268. doi: 10.1016/j.jtrangeo.2025.104268 [32] EL-WAKEEL A S, NOURELDIN A, HASSANEIN H S, et al. iDriveSense: dynamic route planning involving roads quality information[C]. 2018 IEEE Global Communications Conference(GLOBECOM), Abu Dhabi, United Arab Emirates: IEEE, 2018. [33] 程泽阳, 孙凌霞, 丁恒, 等. 车路协同环境下道路交通安全研究进展[J]. 交通运输工程与信息学报, 2024, 22(3): 14-33.CHENG Z Y, SUN L X, DING H, et al. Research progress of road traffic safety in cooperative vehicle infrastructure environment[J]. Journal of Transportation Engineering and Information, 2024, 22(3): 14-33. (in Chinese) [34] GARG S, MITTAL A, SATHIYASUNTHARAM V. Deep learning based model to recommend safe route navigation system[C]. 2nd International Conference on Computational Intelligence, Communication Technology and Networking (CICTN), Ghaziabad, India: IEEE, 2025. [35] KATICHA S W, FLINTSCH G W. A kernel density empirical Bayes(KDEB)approach to estimate accident risk[J]. Accident Analysis & Prevention, 2023, 186: 107039. [36] 辛怡, 李刚, 邓有为, 等. 融合PCA-LPP与DBSCAN的道路交通事故分类及风险等级预测方法[J]. 交通信息与安全, 2023, 41(4): 44-54.XIN Y, LI G, DENG Y W, et al. Classifying road accidents and forecasting level of risk based on a combined PCA-LPP and DBSCAN method[J]. Journal of Transport Information and Safety, 2023, 41(4): 44-54. (in Chinese) [37] 赵国强, 谢李鑫. 一种考虑行程安全性的城市绿色路径规划算法[J]. 测绘技术装备, 2025, 27(1): 33-38.ZHAO G Q, XIE L X. An urban green path finding algorithm by considering travelling safety[J]. Geomatics Technology and Equipment, 2025, 27(1): 33-38. (in Chinese) [38] ALSHEREF F K. Route recommendation model Via an analytic hierarchy process (AHP)[J]. Journal of Advanced Research in Dynamical and Control Systems, 2019, 11(9): 17-24. doi: 10.5373/JARDCS/V11I9/20192768 [39] 庞劭荣, 张诗波, 罗龙浩, 等. 基于改进云组合赋权的智能网联驾驶场景安全性评价方法[J]. 交通信息与安全, 2023, 41(5): 35-42. doi: 10.3963/j.jssn.1674-4861.2023.05.004PANG S R, ZHANG S B, LUO L H, et al. A method for evaluating safety of driving scenes with intelligent connected vehicles based on an improved cloud combination weighting[J]. Journal of Transport Information and Safety, 2023, 41 (5): 35-42. (in Chinese) doi: 10.3963/j.jssn.1674-4861.2023.05.004 [40] 朱兴林, 陈梦瑶, 刘泓君, 等. 基于多源信息融合的城市快速路驾驶风险辨识与方法[J]. 交通运输工程与信息学报, 2025, 23(2): 110-121.ZHU X L, CHEN M Y, LIU H J, et al. Risk identification and method of urban-expressway driving based on multisource information fusion[J]. Journal of Transportation Engineering and Information, 2025, 23(2): 110-121. (in Chinese) -
下载: