何庆, 刘震, 马青松. 双一流新工科背景下交通类通识课程“大数据与智能交通”的多实验教学设计[J]. 实验科学与技术, 2024, 22(1): 114-120. DOI: 10.12179/1672-4550.20220464
引用本文: 何庆, 刘震, 马青松. 双一流新工科背景下交通类通识课程“大数据与智能交通”的多实验教学设计[J]. 实验科学与技术, 2024, 22(1): 114-120. DOI: 10.12179/1672-4550.20220464
HE Qing, LIU Zhen, MA Qingsong. Multi Experiment Teaching Design of “Big Data and Intelligent Transportation” for Transportation General Course under the Background of Double First-class New Engineering[J]. Experiment Science and Technology, 2024, 22(1): 114-120. DOI: 10.12179/1672-4550.20220464
Citation: HE Qing, LIU Zhen, MA Qingsong. Multi Experiment Teaching Design of “Big Data and Intelligent Transportation” for Transportation General Course under the Background of Double First-class New Engineering[J]. Experiment Science and Technology, 2024, 22(1): 114-120. DOI: 10.12179/1672-4550.20220464

双一流新工科背景下交通类通识课程“大数据与智能交通”的多实验教学设计

Multi Experiment Teaching Design of “Big Data and Intelligent Transportation” for Transportation General Course under the Background of Double First-class New Engineering

  • 摘要: 为响应创新驱动发展、“交通强国”等一系列国家战略号召,实现新工科、双一流教学改革目标,交通运输领域亟须培养一批实践与创新兼优、具备国际竞争力的高素质复合型新工科人才,交通运输专业传统课程体系亟待调整。以新型交通类通识课程“大数据与智能交通”为例,以提升交通运输专业学生实践能力、创新能力、计算机能力等素质为目标,对课程提出新要求,为培养交通运输行业需要的高素质复合型新工科人才建立坚实基础。将传统交通运输工程与大数据技术有机结合,开展多实验教学,每组实验均采用实际案例,并使用多源数据,包括列车旅行时间估计的时空数据、轨道扣件状态分类的二维图像数据以及地铁内噪声的一维音频数据等,有效提高学生创新实践能力。

     

    Abstract: In response to a series of national strategic calls, such as innovation-driven development and “Strong Transportation Country”, and aiming to achieve the goal of reform in new engineering and double first-class teaching, there is a great need in the transportation field to cultivate a group of high-quality composite new technical talents with high practical ability, innovation, and international competitiveness. Therefore, the traditional course of the transportation specialty needs to be adjusted urgently. Taking the transportation general course “Big Data and Intelligent Transportation” as an example, aiming at improving the practical ability, innovation ability, computer ability and other abilities of students majoring in transportation, this paper puts forward new requirements in the course content to lay a foundation for training high-quality composite new engineering talents to meet the needs of the transportation industry. The traditional transportation engineering is combined with the big data technology to carry out the multiple experimental teaching. Each group of experiments adopts actual cases, and uses multi-source data, including space-time data of train travel time estimation, two-dimensional image data of track fastener state classification, and one-dimensional audio data of subway noise, so as to effectively improve students’ innovation and practice ability.

     

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