论文标题

SmartShuttle:基于模型的设计和评估,以解决智能城市中的第一英里和最后一英里问题的自动班车

SmartShuttle: Model Based Design and Evaluation of Automated On-Demand Shuttles for Solving the First-Mile and Last-Mile Problem in a Smart City

论文作者

Gelbal, Sukru Yaren, Aksun-Guvenc, Bilin, Guvenc, Levent

论文摘要

本报告介绍了俄亥俄州立大学的SmartShuttle子项目的最终项目报告。这是一个为期两年的项目,由俄亥俄州立大学自动驾驶实验室引入的统一,可扩展和可复制的自动驾驶体系结构已进一步开发,以不同的车辆进行了复制,并在不同的车辆尺寸之间进行缩放。该项目的第一年也进行了有限的规模示范。使用的架构在第二个项目年内进一步开发,包括基于参数空间的低级控制器设计,感知方法和数据收集。感知传感器和其他相关的车辆数据在第二个项目年内收集。我们的方法更改为在硬件中的模拟环境中使用软AV进行概念验证测试。我们的第二年工作也从基于GPS和LIDAR的SLAM转换为GPS,并使用先前构造的LiDAR地图在地理围栏区域中进行了匹配。还创建了一个示例激光映射。感知传感器和其他收集的数据和示例激光映射作为数据集共享,作为项目的进一步结果。

The final project report for the SmartShuttle sub-project of the Ohio State University is presented in this report. This has been a two year project where the unified, scalable and replicable automated driving architecture introduced by the Automated Driving Lab of the Ohio State University has been further developed, replicated in different vehicles and scaled between different vehicle sizes. A limited scale demonstration was also conducted during the first year of the project. The architecture used was further developed in the second project year including parameter space based low level controller design, perception methods and data collection. Perception sensor and other relevant vehicle data were collected in the second project year. Our approach changed to using soft AVs in a hardware-in-the-loop simulation environment for proof-of-concept testing. Our second year work also had a change of localization from GPS and lidar based SLAM to GPS and map matching using a previously constructed lidar map in a geo-fenced area. An example lidar map was also created. Perception sensor and other collected data and an example lidar map are shared as datasets as further outcomes of the project.

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