陈喜群,男,长聘教授,博士生导师,浙江大学智能交通研究所所长,智慧交通浙江省工程研究中心副主任。荣获自然科学基金优秀青年科学基金,中国科协“青年人才托举工程”、浙江省杰出青年基金、浙江省特聘专家等。2004-2015年,曾先后在清华大学土木工程系交通研究所、美国加州大学伯克利分校PATH研究所、美国马里兰大学土木与环境工程系、美国马里兰国家交通中心学习和工作。研究领域包括交通运输管理、共享出行、交通流建模与仿真优化、智能交通系统等。担任世界交通运输大会交通管理与出行服务学科主席,美国土木工程师学会大中华分会理事,管理科学与工程学会理事,Transportation Research Part C: Emerging Technologies副主编,IEEE Transactions on Intelligent Vehicles副主编,Nature合作期刊npj Sustainable Mobility and Transport编委,Cell合作期刊The Innovation学术编辑,交通运输系统工程与信息编委,交通运输研究编委。主持国家自然科学基金项目4项、国家重点研发计划课题1项、浙江省自然科学基金杰出青年基金1项、重点项目1项。在Nature Sustainability、Patterns、The Innovation、Management Science、Manufacturing & Service Operations Management (M&SOM)、Transportation Science、Transportation Research Part B、IEEE Transactions on Intelligent Transportation Systems、Transportation Research Part C/D/E/F等期刊发表SCI/SSCI论文130余篇,研究成果相继被遴选为Nature正刊研究亮点,Nature Sustainability研究专报、Patterns期刊封面论文、Patterns作者专访。由Springer出版英文专著1部,参编3部。授权国家发明专利13件。获中国智能交通协会科技创新领军人才奖、中国交通运输协会科技创新青年奖、IEEE国际智能交通学会最佳博士论文奖、国内外学术会议最佳论文奖8项。通讯地址:浙江省杭州市余杭塘路866号浙江大学紫金港校区建筑工程学院安中大楼B828,邮编310058 教育经历:2008/09 - 2013/01,清华大学土木工程系,博士2011/09 - 2012/08,加州大学伯克利分校交通研究所,博士生联合培养2004/08 - 2008/07,清华大学土木工程系,本科 工作经历:2022/05 - 至今,浙江大学智能交通研究所,所长2022/05 - 2023/08,浙江大学伊利诺伊大学厄巴纳香槟校区联合学院,副院长2021/09 - 至今,浙江大学-阿里巴巴数字交通创新应用中心,副主任2021/07 - 至今,智慧交通浙江省工程研究中心,副主任2021/01 - 至今,浙江大学建筑工程学院智能交通研究所,长聘教授,博士生导师2018/10 - 2022/05,浙江大学建筑工程学院土木工程系,副系主任2015/03 - 2020/12,浙江大学建筑工程学院智能交通研究所,“百人计划”研究员,博士生导师2014/07 - 2015/06,美国马里兰大学土木与环境工程系,副研究员(Research Associate)2013/10 - 2015/02,美国马里兰国家交通中心,科研主任(Research Director)2012/07 - 2014/06,美国马里兰大学土木与环境工程系,助理研究员(Faculty Research Assistant) 招生计划(欢迎联系咨询,发送个人简历至chenxiqun@zju.edu.cn)2024-2025年拟招收博士后 1 名,年薪不低于30万元,研究方向包括但不限于共享出行、交通大数据、仿真优化、交通运输管理,按照学校统一规定,欢迎相关学科的优秀青年博士、博士生咨询2024-2025年拟招收博士研究生1-2名(道路与交通工程学术学位博士研究生、交通运输工程专业学位博士研究生),硕士研究生2-3名(道路与交通工程学术学位、交通运输工程专业学位),研究方向包括但不限于交通运输管理、共享出行、交通规划与管理、智能交通系统、管理科学与工程、运筹与优化、系统工程,欢迎校内外优秀勤奋的本科生、研究生加入交通数据与仿真优化课题组(Transportation Data & Simulation Optimization Laboratory, TDSO Lab)攻读学位,共同致力于研究和解决区域与城市出行行为、供需平衡、状态估计、态势预测、仿真优化、交通政策、管理决策、交通管控等问题2024-2025年招收本科生3-4名,包括本科毕业设计、交通科技竞赛、国创、省创、SRTP、挑战杯等科研训练项目主讲课程交通系统分析,本科生专业课交通大数据分析,研究生专业学位课交通运输工程科学与技术前沿,博士生专业学位课代表性科研项目主持,国家自然科学基金优秀青年科学基金项目,71922019,共享出行交通管理,2020/01-2022/12主持,国家自然科学基金面上项目,72171210,政府监管背景下网约共享出行行为建模与多平台管理优化,2022/01-2025/12主持,国家自然科学基金面上项目,71771198,基于移动互联大数据的网约共享出行供需演化机理与调控策略优化,2018/01-2021/12主持,国家自然科学基金青年科学基金项目,51508505,面向城市交通通道仿真的交通流建模与组织优化,2016/01-2018/12主持,国家重点研发计划课题,2018YFB1600904,城市多模式交通系统耦合机制与主动调控技术,2019/03-2021/12主持,中国科协青年人才托举工程,2018QNRC001,交通运输工程,2018/01-2020/12主持,浙江省杰出青年基金项目,LR17E080002,融合移动互联大数据的交通态势演化机理与管控方法,2017/01-2020/12主持,浙江省自然科学基金重点项目,LZ23E080002,智慧城市网约共享出行多方博弈均衡与动态仿真优化,2023/01-2025/12参与,国家科技创新2030—“新一代人工智能” 重大项目,2020AAA0107401,结构自适应自演化的高级机器学习方法研究,2021/01-2023/12参与,国家自然科学基金外国资深学者研究基金团队项目,72350710798,可持续智慧城市公共交通运力共享下的客货智能管理系统,2024/01-2026/12参与,国家自然科学基金委员会与欧洲城市化联合研究计划合作研究项目,71961137005,城市公共管理与服务革新:新型的城市移动管理与政策、2019/03-2022/02参与,国家自然科学基金国际(地区)合作与交流项目,72111540273,电动与共享交通:设施规划、 系统管理与政策制订,2022/01-2023/12代表性论文Xia Y., Liao C., Chen X.*, et al. 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