YOLOTransfer-DT: An Operational Digital Twin Framework with Deep and Transfer Learning for Collision Detection and Situation Awareness in Urban Aerial Mobility

Nan Lao Ywet, A. A. Maw, T. Nguyen, Jae-Woo Lee
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Abstract

Urban Air Mobility (UAM) emerges as a transformative approach to address urban congestion and pollution, offering efficient and sustainable transportation for people and goods. Central to UAM is the Operational Digital Twin (ODT), which plays a crucial role in real-time management of air traffic, enhancing safety and efficiency. This study introduces a YOLOTransfer-DT framework specifically designed for Artificial Intelligence (AI) training in simulated environments, focusing on its utility for experiential learning in realistic scenarios. The framework’s objective is to augment AI training, particularly in developing an object detection system that employs visual tasks for proactive conflict identification and mission support, leveraging deep and transfer learning techniques. The proposed methodology combines real-time detection, transfer learning, and a novel mix-up process for environmental data extraction, tested rigorously in realistic simulations. Findings validate the use of existing deep learning models for real-time object recognition in similar conditions. This research underscores the value of the ODT framework in bridging the gap between virtual and actual environments, highlighting the safety and cost-effectiveness of virtual testing. This adaptable framework facilitates extensive experimentation and training, demonstrating its potential as a foundation for advanced detection techniques in UAM.
YOLOTransfer-DT:利用深度学习和迁移学习实现城市空中交通碰撞检测和态势感知的实用数字孪生框架
城市空中交通(UAM)是解决城市拥堵和污染问题的一种变革性方法,为人员和货物提供高效、可持续的运输。运行数字孪生系统(ODT)是 UAM 的核心,它在空中交通的实时管理、提高安全和效率方面发挥着至关重要的作用。本研究介绍了专为模拟环境中的人工智能(AI)培训而设计的 YOLOTransfer-DT 框架,重点关注其在现实场景中体验式学习的实用性。该框架的目标是增强人工智能培训,特别是在利用深度学习和迁移学习技术开发对象检测系统方面,该系统采用视觉任务进行主动冲突识别和任务支持。所提出的方法结合了实时检测、迁移学习和新颖的环境数据提取混合过程,并在现实模拟中进行了严格测试。研究结果验证了在类似条件下使用现有深度学习模型进行实时物体识别的有效性。这项研究强调了 ODT 框架在缩小虚拟环境与实际环境之间差距方面的价值,突出了虚拟测试的安全性和成本效益。这一适应性强的框架有利于进行广泛的实验和培训,证明了其作为 UAM 先进检测技术基础的潜力。
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