用时:19ms

汽车行业报告-PDF版

您的当前位置:首页 > 汽车交通
  • 中国汽车工业协会:2019年中国汽车工业经济运行报告(72页).pdf

    1 20192019 年年中国中国汽车工业汽车工业经济运行报告经济运行报告 中国汽车工业协会 2019 年,我国经济继续保持了总体平稳、稳中有进的态势,但随着国内外经济形势风险与挑战不断增多,特别是中.

    发布时间2019-12-02 72页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 360营销学院:2019年汽车大数据报告(82页).pdf

    感谢您下载包图网平台上提供的PPT作品,为了您和包图网以及原创作者的利益,请勿复制、传播、销售,否则将承担法律责任!包图网将对作品进行维权,按照传播下载次数进行十倍的索取赔偿!汽车大数据报告逆市上扬,.

    发布时间2019-12-02 82页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 3D科学谷:2019年3D打印与新能源汽车白皮书1.0(60页).pdf

    3D科学谷白皮书系列白皮书赞助方:Sponsors:3D打印与新能源汽车白皮书1.0White Paper of 3D Printing and New Energy VehicleVersion I.

    发布时间2019-12-02 60页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 智能车联:2019年北京市自动驾驶车辆道路测试报告(34页).pdf

    “通过搭载先进传感器等装置,运用人工智能等新技术,具有自动驾驶功能,逐步成为智能移动空间和应用终端的新一代汽车。智能汽车通常又称为智能网联汽车、自动驾驶汽车等”

    发布时间2019-12-02 34页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 北京车驰合众科技有限公司:2019中国汽配流通行业产业互联网发展研究报告(45页).pdf

    中国汽配流通行业发展现状. 4(一)市场规模.41、制造领域. 42、后市场领域. 6(二)市场业态.81、传统业态. 82、互联网背景下的新业态.93、渠道结构的演变.10(三)企业数量. 10(四.

    发布时间2019-12-02 45页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 赛迪:2019年氢能及燃料电池产业演进与投资价值分析白皮书(44页).pdf

    2019年 氢能及燃料电池产业演进与投资价值分析白皮书 2019年2月 2 目录 燃料电池定义及发展演进 第一章 第二章 第三章 第四章 第五章 氢能及燃料电池产业链分析 全球氢能及燃料电池产业发展现.

    发布时间2019-12-02 44页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 海马云大数据:2019年二手车市场观察报告(16页).pdf

    从而形成二手车市场的大流通格局,无疑促进二手车消费市场潜力进一步释放。

    发布时间2019-12-02 16页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • Petfood Industry:2019年北美宠物食品市场趋势报告(英文版)(31页).pdf

    美国宠物护理支出明细2019年总支出:753.8亿美元(估算)2018年总支出:725.6亿美元

    发布时间2019-12-02 31页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 阿里云研究中心:2019汽车数字化转型白皮书(25页).pdf

    C中国电动汽车百人会汽车数字化转型白皮书2.0AI时代下的汽车业数字化变革4043前言2017年6月,汽车年销量不足10万的特斯拉,市值超过百万销量的通用与宝马汽车; 2018年,已经有超过70万台搭.

    发布时间2019-12-02 25页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 罗兰贝格:步入存量时代中国客车企业的五大致胜要素(2019)(17页).pdf

    步入存量时代中国客车企业的五大致胜要素2019年六月罗兰贝格聚焦研究综述贸易摩擦加剧、全球分工重塑致使全球与中国经济增速将持续走弱。受此影响,中国出行需求的总量增长将同步放缓,客车市场“存量竞争”的时.

    发布时间2019-12-02 17页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 中汽中心:2019智能汽车车载通讯软件测评报告(46页).pdf

    智能智能汽车汽车车载通讯软件测评报告车载通讯软件测评报告 目录目录 1.项目概况. 1 1.1 背景 . 1 1.2 目的及意义 . 2 2.测试策略. 3 2.1 测试说明 . 4 2.2 功能测.

    发布时间2019-12-02 46页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 58车:2019年城镇汽车市场消费趋势报告(64页).pdf

    在整个汽车行业增速趋于稳定时,反而是去抢夺市场份额的好机会。无论冬天怎么寒冷,仍有松、柏、竹、梅傲然挺立

    发布时间2019-12-02 64页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 能源与交通创新中心:中国传统燃油汽车退出时间表研究(2019)(142页).pdf

    于2018年1月共同启动了“中国石油消费总量控制和政策研究” 项目 (简称油控研究项目) ,促进石油资源安全、高效、绿色、低碳的可持续开发和利用,助力中国跨越“石油时代”,

    发布时间2019-12-02 142页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 联网自动驾驶汽车高速公路 (CAVH):大规模自动驾驶系统 (ADS) 部署的愿景和发展报告 (2019)(英文版)(42页).pdf

    Connected Automated Vehicle Highway (CAVH): A Vision and Development Report for Large-Scale Automated Driving System (ADS) Deployment Version 1.0 Working Committee of Automated Driving China Highway and Transportation Society June 2019 I Copyright Statement The copyright of this report belongs to the Working Committee of Automated Driving of China Highway and Transportation Association and is protected by law. Where the texts or viewpoints of this report are reproduced, extracted or used in other ways, the source shall be indicated as Source: Working Committee of Automated Driving of China Highway and Transportation Association. Those who violate the above statement will be investigated for legal responsibility. III Contributors Publication Agency: Working Committee on Automated Driving, China Highway and Transportation Society Contributing Institutes: 1. Institute on Internet of Mobility, Southeast University and University of Wisconsin-Madison 2. Southeast University 3. Tsinghua University 4. Beihang University 5. Beijing Jiaotong University 6. Beijing University of Technology 7. Traffic Management Research Institute, Ministry of Public Security Contributing Authors: 1. Yang CHENG 2. Yuan ZHENG 3. Huachun TAN 4. Jianbo YI 5. Xu QU 6. Shen LI 7. Shuyan HE 8. Qiang TU 9. Haijian LI 10. Zhenlong LI 11. Yongming HE 12. Zhihong YAO 13. Yangxin LIN 14. Yanjin LI 15. Tengfei YUAN 16. Haoran WU 17. Fan DING 18. Danya YAO 19. Shanglu HE 20. Haiyang GU 21. Zhijun CHEN 22. Kegang ZHAO 23. Yikang RUI 24. Fan YANG 25. Jian ZHANG 26. Dazhi JIANG 27. Jun BI IV 28. Yuanli GU 29. Steven PARKER 30. Shawn LEIGHT 31. Peter JIN 32. David NOYCE 33. Soyoung (Sue) AHN 34. Jianqiang WANG 35. Yugong LUO 36. Shengbo LI 37. Mingyuan BIAN 38. Guizhen YU 39. Guangquan LU 40. Daxin TIAN 41. Haiyang YU 42. Li LI 43. Jianming HU 44. Wenjie LU 45. Min WANG 46. Wei SUN 47. Jianhua YUAN 48. Zhigang XU 49. Siyuan GONG Advisory Committee of Experts: 1. Mengyong WENG 2. Song PANG 3. Bin RAN 4. Keqiang LI 5. Yunpeng WANG 6. Yi ZHANG 7. Changjun WANG 8. Xiaohui SHI 9. Xiangmo ZHAO 10. Shanzhi CHEN 11. Jinquan ZHANG 12. Ling JIN 13. Guangsu SHANG 14. Xiaojing WANG 15. Yanqing CEN 16. Gang WANG 17. Bo NIU 18. Yongjian ZHONG V Introduction Intelligent Transportation Systems (ITS) has been considered instrumental methods to alleviate traffic congestions and improve traffic safety when the construction of new infrastructure or capacity increase are not viable. With the rapid development of artificial intelligence, mobile internet, big data, and other innovative information technologies, the next generation of ITS will feature the Automated Driving System (ADS) technologies and become the essential approach to ultimately address traffic problems. The vehicle-based ADS solutions are lead by Google, Tesla, Uber, and Baidu. Vehicle-based ADS systems use onboard high-resolution sensors to detect real-time driving conditions, and use on-board edge computing and Artificial Intelligence (AI) algorithms for driving decision making and vehicle control to achieve automated driving. The main limitations of the vehicle-based technologies are the high concentration of onboard technologies and sensors, which make the large-scale deployment of technologies financially and societally difficult. The industry has come to realize that the large-scale deployment of ADS needs to take advantage of intelligent road infrastructure. Vehicle-based ADS sensing and computing systems can also be deployed along intelligent infrastructures to achieve ADS for all vehicles with less intensive resource deployment on the vehicle end compared with the vehicle-based approach. The interaction and coupling between the intelligent road infrastructures and intelligent vehicles have the potentials of facilitating or even replacing vehicle-based ADS technologies in large-scale deployment. Under such vehicle-infrastructure integration paradigm, the development of the Connected Automated Vehicle Highway (CAVH) technologies will take the advantage of the rapid development and commercialization of ADS technologies, next-generation wireless communication, artificial intelligence(AI), Internet of Things (IoT), Cloud and Edge computing, Electric Vehicles and highway electrification, smart sensor and infrastructure, smart city, and other technologies to achieve ADS in large scales. The CAVH approach can also enable deep integration across different industrial sectors, including information technologies, intelligent manufacturing, transportation and logistics, and automobile industries to establish cross-industry ecosystems and supply chains for new scientific, technological, and industrial revolutions. CAVH extends the existing applications of Connected Automated Vehicle (CAV) technologies into system-wide integration between vehicles and infrastructure. The development and deployment of the CAVH-based ADS technologies could be classified as four different stages: Stage I, information exchange and interaction: establish the Vehicle to Infrastructure & Infrastructure to Vehicle (V2I & I2V) connectivity. Stage II, collaborative sensing, prediction, and decision-making: share and integrate the sensing and prediction results between vehicles and infrastructure and execute coordinated VI decision-making. Stage III, coordinated control: coordinate the real-time vehicle and infrastructure control with collaborative sensing, prediction, and decision-making results. Stage IV, vehicle-infrastructure integration: based on stage I, II and III, vehicles and infrastructure could achieve overall coordination and complete system functions to achieve global planning, control, and optimization of vehicle-infrastructure operations for ADS. The CAVH-based ADS uses the advanced sensor, network, computing, and control technologies, to achieve the comprehensive sensing for the road and traffic environment, and the wide range and large capacity data sharing between multiple systems facilitating different vehicles and different traffic automation system at various integration levels. Based on CAVH, automated driving systems can be constructed from three dimensions: vehicle automation, network interconnection, and system integration. Such systems can efficiently execute the essential automated driving functions of sensing, prediction, decision-making, and control, and eventually forms intelligent systems that can integrate, coordinate, control, manage, and optimize all vehicles, information services, facilities, equipment, intelligent traffic management, and control. The CAVH is composed of four key subsystems, including traffic management subsystem, smart roadside infrastructure subsystem, intelligent vehicle subsystem, and intelligent communication subsystem, and four key functional modules: sensing module, prediction module, decision-making module, and control module. From a generalized perspective, the CAVH system covers the CAV system and the intelligent road infrastructure system. That is, the intelligent network vehicles, the Internet of vehicles, the active traffic management systems, the automated highway systems, and transportation entities are all included. The advanced CAVH is a more advanced stage of CAVH, which further enhances the intelligence of road infrastructure, which therefore accelerates the commercialization of automated driving, and eventually, achieves the integrated development of vehicles and roads for the automated driving. Traditional technologies and industries are facing reconstruction and reengineering due to continuous innovations. As an emerging system, CAVH is bound to generate new technologies, industries, and businesses. The CAVH system covers automated vehicles, transportation environment, communication facilities, traffic management, and control system, and other entities, related to technologies of computer vision, communication, network security, vehicle collaboration with road, active control, human-vehicle-road-center collaborative service management, highway automation system, and system integration. These technologies are key to vehicle road collaborative automated driving toward commercialization. CAVH involves many industries, which are of multiple roles, complementing advantages, and prominent characteristics. Developing CAVH systems and promoting CAVH technology applications can advance the chip, software, information communication, data service, and other industry development and transformation, who are the suppliers of vehicle and infrastructure industries. The CAVH based automated driving ecosystem can enable the deployment of intelligent VII transportation and smart city solutions, a system of systems integration, and shared digital economy, to foster new economic growth. This report presents the strategic plans and development directions of key technologies in CAVH, analyzes the development trends and CAVH industry positioning, and puts forward suggestions for the development of CAVH that is suitable for China based on an in-depth understanding of the concepts and connotation of CAVH. IX Contents Copyright Statement . I Introduction . V Contents . IX 1 Automated Driving . 1 1.1 Connotation of Automated Driving . 1 1.1.1 Principle of Automated Driving . 1 1.1.2 Automated Driving Classification . 1 1.2 Concept of Vehicle-Road Cooperative Automated Driving . 3 1.2.1 Vehicle Automation . 4 1.2.2 Connectivity . 5 1.2.3 System Integration . 5 1.3 Development Level of Vehicle-Infrastructure Cooperative Automated Driving . 6 1.4 Key Sub-systems and Modules . 7 1.4.1 Key Sub-systems . 7 1.4.2 Key Modules . 8 2 Key Technology and Development Trend of CAVH. 11 2.1 Key Technology Analysis of CAVH . 11 2.1.1 Environment Sensing Technology . 11 2.1.2 Data Fusion and Prediction Technology . 11 2.1.3 Intelligent Decision Technology . 11 2.1.4 Control Execution Technology . 12 2.1.5 I2X and V2X Communication Technology . 12 2.1.6 Network Security Technology . 12 2.1.7 Collaborative Optimization Technology . 13 2.1.8 Integrated Optimization Technology for Transportation System . 13 2.2 Future Direction of CAVH . 13 2.2.1 Integrating High-Resolution and High-Reliability Positioning with RoadSide Unit based CAVH Applications . 13 2.2.2 Visual Recognition and LiDAR Becoming the Core of Sensing Technologies . 14 2.2.3 Cloud Platform Technologies . 14 2.2.4 Connected Automated Vehicle Technologies . 15 2.2.5 CAVH Traffic System Optimization Technologies . 15 3 Development Trend and Roles of CAVH . 17 3.1 Development Trend of CAVH . 17 3.1.1 Key Technologies and Infrastructures (Upstream) . 18 3.1.2 Intelligent Manufacturing and System Integration (Middle) . 21 3.1.3 Application Services and Value-Added Services (Downstream) . 22 3.1.4 CAVH Standardization . 24 3.2 Roles of Organizations, Agencies, and Enterprises in the Development of CAVH . 25 3.2.1 Government Agencies . 25 X 3.2.2 Industry . 25 3.2.3 Universities and Research Institutes . 26 3.2.4 Associations . 26 3.2.5 Financial Capital and Investment Institutions. 27 4 Policies and Suggestions . 29 4.1 Government . 29 4.1.1 Policies . 29 4.1.2 Standards. 29 4.1.3 Laws and Regulations . 29 4.2 Enterprises . 30 4.3 Universities and Research Institutes . 30 5 Terminology . 31 6 References . 33 Working Committee of Automated Driving, CHTS Development Report of CAVH (2019) 1 1 Automated Driving 1.1 Connotation of Automated Driving 1.1.1 Principle of Automated Driving Automated driving means that the vehicle senses the surrounding environment through the sensors onboard, makes control decisions based on the information collected and fused, and makes vehicle control decisions, including both longitudinal control and lateral control. The process of automated driving mainly includes three stages: information collection, information processing, and instruction execution. In the information collection stage, the automated vehicles detect the surrounding environment through the radar and camera mounted on the vehicle and collects information such as the position, speed, acceleration as well as pedestrians and vehicles nearby. Information processing stage: the autonomous vehicle transmits the collected information to the automotive electronic control unit (ECU) for analysis, calculation, and control decision. Instruction execution phase: the autonomous vehicle transmits the control decisions provided by the vehicles electronic control unit to the engine/motor management system and the electric power steering system (EPS) to achieve vehicle acceleration, deceleration, and steering operations. 1.1.2 Automated Driving Classification The SAE level of classification for automated driving is adopted in this report 1, as is shown in Figure 1 and Table 1. Figure 1 Automation Levels 1 Working Committee of Automated Driving, CHTS Development Report of CAVH (2019) 2 Table 1 Classification of Self-Driving Vehicles 1 NHTSA SAE The degree of automation Specific definition Driving performance Monitoring Take over Application scenes 0 0 No Automation Zero autonomy; the driver performs all driving tasks. Human driver Human driver Human driver None 1 1 Driver Assistance Vehicle is controlled by the driver, but some driving assist features may be included in the vehicle design. Human driver and vehicle Human driver Human driver Qualified scenes 2 2 Partial Automation Vehicle has combined automated functions, like acceleration and steering, but the driver must remain engaged with the driving task and monitor the environment at all times. Vehicle Human driver Human driver 3 3 Conditional Automation Driver is a necessity but is not required to monitor the environment. The driver must be ready to take control of the vehicle at all times with notice. Vehicle Vehicle Human driver 4 4 Highly Automation The vehicle is capable of performing all driving functions under certain conditions. The driver may have the option to control the vehicle. Vehicle Vehicle Vehicle Working Committee of Automated Driving, CHTS Development Report of CAVH (2019) 3 5 Fully Automation The vehicle is capable of performing all driving functions under all conditions. The driver may have the option to control the vehicle. Vehicle Vehicle Vehicle All scenes Level 0: The human driver does all the driving. Level 1: An Advanced Driver Assistance System (ADAS) on the vehicle can sometimes assist the human driver with either steering or braking/accelerating, but not both simultaneously. Level 2: An Advanced Driver Assistance System (ADAS) on the vehicle can itself actually control both steering and braking/accelerating simultaneously under some circumstances. The human driver must continue to pay full attention (“monitor the driving environment”) at all times and perform the rest of the driving task. Level 3: An Automated Driving System (ADS) on the vehicle can itself perform all aspects of the driving task under some circumstances. In those circumstances, the human driver must be ready to take back control at any t

    发布时间2019-12-02 42页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 长安大学&中交兴路:2019年中国公路货运大数据报告(47页).pdf

    前前 言言 公路运输具有机动灵活、 适应性强等特点,普遍应用于我国货物运输的各种流转方式和环节,是我国国民经济发展的重要基础和加速生产要素流通、促进市场繁荣的重要保障。 统计数据显示, 截至 201.

    发布时间2019-12-02 47页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 飞思卡尔:2019车身电子的未来发展报告(17页).pdf

    AMPG车身电子系统工程团队汽车电子车身电子的未来发展223810141517目录1 简介2 网络3 超级集成4 功耗5 功能安全6 安防性7 结论1. 简介当今的驾驶员希望在其汽车中获得更高水平的舒.

    发布时间2019-12-02 17页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 宁波市汽车零部件产业协会:2019中国新能源汽车零部件加工及智能制造高层论坛报告(30页).pdf

    2019中国新能源汽车零部件加工及智能制造高层论坛宁波汽车及零部件产业蓬勃发展宁波汽车及零部件产业蓬勃发展2019年10月16日,宁波市汽车零部件产业协会01宁波汽车产业发展回顾宁波汽车产业发展回顾0.

    发布时间2019-12-02 30页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 2019锂电池电解液溶剂行业专题报告(18页).pdf

    锂电池电解液溶剂行业专题报告锂电池电解液溶剂行业专题报告 西南证券研究发展中心西南证券研究发展中心 2019年年4月月 1 锂离子电池工作原理图 锂离子电池组成部分 锂离子电池的优缺点 1 锂离子电池.

    发布时间2019-12-02 18页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • 中国自动驾驶仿真技术研究报告(2019)(110页).pdf

    摘要自动驾驶系统的计算机仿真是自动驾驶车辆测试和试验的基础关键技术,也是未来行业定义自动驾驶车辆相关开发与准入技术标准的基础工具。计算机仿真测试与真实物理测试互为补充,缺一不可。2019 中国自动驾驶.

    发布时间2019-12-02 110页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
  • AUVSI:2019无人驾驶汽车调研报告(13页).pdf

    2019 无人驾驶汽车调研报告2019 年 1 月1Perkins Coie LLP | AUSVI |2019 年 1 月目录执行摘要 . 2 主要结论 . 4 调研结果 . 5 调研方法与人口统计.

    发布时间2019-12-02 13页 推荐指数推荐指数推荐指数推荐指数推荐指数5星级
9268条  共464
前往
客服
商务合作
小程序
服务号
折叠