重型车辆驾驶行为识别与燃油经济性评价

IF 4.4 2区 工程技术 Q2 BUSINESS
Lin Fang , Hongjie Li , Yingchao Zheng , Xinggang Luo
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引用次数: 0

摘要

驾驶重型车辆本身就是一种能源密集型的交通工具,对交通运输的节能减排具有重要意义。虽然已有研究承认驾驶行为对油耗的影响,并使用统计方法对其进行分析,但通过定制和差异化策略来改善驾驶员行为以进一步促进生态驾驶的研究却很少。考虑到现实世界和实时监测场景,本研究提出了一个离线培训和在线服务框架,为减少HDV出行中的燃油消耗提供具体和可量化的策略。在离线阶段,采用Toeplitz逆协方差聚类(TICC)算法对历史HDV数据进行分割和识别。在这种行为识别的基础上,我们整合了多种因素来源,开发了一个将它们与燃料消耗联系起来的模型,并对它们的贡献进行了定性分析。在在线服务阶段,经过训练的TICC模型绘制并识别出行过程中的实时驾驶行为。同时,一个多目标反事实解释模型生成了考虑个性化油耗降低需求的反馈策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driving behavior recognition and fuel economy evaluation for heavy-duty vehicles
Driving Heavy-Duty Vehicles (HDVs) is inherently energy-intensive, making it significant for energy conservation and emission reduction in transportation. While prior research has acknowledged the influence of driving behavior on fuel consumption and analyzed it using statistical approaches, limited attention has been given to refining drivers' behavior through tailored and differentiated strategies to further promote eco-driving. Considering real-world and real-time monitoring scenarios, this study proposes an offline training and online service framework to provide specific and quantifiable strategies for reducing fuel consumption in HDV trips. During the offline phase, the Toeplitz Inverse Covariance Clustering (TICC) algorithm is employed to segment and recognize driving behaviors using historical HDV data. Building upon this behavior recognition, we integrate multiple sources of factors to develop a model linking them to fuel consumption and conduct a qualitative analysis of their contributions. In the online service phase, the trained TICC model maps and identifies real-time driving behaviors during trips. Meanwhile, a multi-objective counterfactual explanation model generates feedback strategies that consider personalized requirements for fuel consumption reduction.
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来源期刊
CiteScore
7.10
自引率
8.30%
发文量
175
期刊介绍: Research in Transportation Business & Management (RTBM) will publish research on international aspects of transport management such as business strategy, communication, sustainability, finance, human resource management, law, logistics, marketing, franchising, privatisation and commercialisation. Research in Transportation Business & Management welcomes proposals for themed volumes from scholars in management, in relation to all modes of transport. Issues should be cross-disciplinary for one mode or single-disciplinary for all modes. We are keen to receive proposals that combine and integrate theories and concepts that are taken from or can be traced to origins in different disciplines or lessons learned from different modes and approaches to the topic. By facilitating the development of interdisciplinary or intermodal concepts, theories and ideas, and by synthesizing these for the journal''s audience, we seek to contribute to both scholarly advancement of knowledge and the state of managerial practice. Potential volume themes include: -Sustainability and Transportation Management- Transport Management and the Reduction of Transport''s Carbon Footprint- Marketing Transport/Branding Transportation- Benchmarking, Performance Measurement and Best Practices in Transport Operations- Franchising, Concessions and Alternate Governance Mechanisms for Transport Organisations- Logistics and the Integration of Transportation into Freight Supply Chains- Risk Management (or Asset Management or Transportation Finance or ...): Lessons from Multiple Modes- Engaging the Stakeholder in Transportation Governance- Reliability in the Freight Sector
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