An IoMT-based Federated Learning Survey in Smart Transportation

Q3 Computer Science
K. G. Vani, M. P. K. Reddy
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引用次数: 0

Abstract

Internet of Medical Things (IoMT) is a technology that encompasses medical devices, wearable sensors, and applications connected to the Internet. In road accidents, it plays a crucial role in enhancing emergency response and reducing the impact of accidents on victims. Smart Transportation uses this technology to improve the efficiency and safety of transportation systems. The current Artificial Intelligence applications lack transparency and interpretability which is of utmost importance in critical transportation scenarios, such as autonomous vehicles, air traffic control systems, and traffic management systems. Explainable Artificial Intelligence (XAI) provides a clear, transparent explanation and actions. Traditional Machine Learning techniques have enabled Intelligent Transportation systems by performing centralized vehicular data training at the server where data sharing is needed, thus introducing privacy issues. To reduce transmission overhead and achieve privacy, a collaborative and distributed machine learning approach called Federated Learning (FL) is used. Here only model updates are transmitted instead of the entire dataset. This paper provides a comprehensive survey on the prediction of traffic using Machine Learning, Deep Learning, and FL. Among these, FL can predict traffic accurately without compromising privacy. We first present the overview of XAI and FL in the introduction. Then, we discuss the basic concepts of FL and its related work, the FL-IoMT framework, and motivations for using FL in transportation. Subsequently, we discuss the applications of using FL in transportation and open-source projects. Finally, we highlight several research challenges and their possible directions in FL
智能交通中基于 IoMT 的联合学习调查
医疗物联网(IoMT)是一项包含医疗设备、可穿戴传感器和与互联网连接的应用程序的技术。在道路交通事故中,它在加强应急响应和减少事故对受害者的影响方面发挥着至关重要的作用。智能交通利用这一技术来提高交通系统的效率和安全性。目前的人工智能应用缺乏透明度和可解释性,而这在关键的交通场景(如自动驾驶汽车、空中交通管制系统和交通管理系统)中至关重要。可解释人工智能(XAI)提供了清晰、透明的解释和操作。传统的机器学习技术是通过在需要共享数据的服务器上进行集中式车辆数据训练来实现智能交通系统的,因此会带来隐私问题。为了减少传输开销并实现隐私保护,我们采用了一种名为 "联合学习"(FL)的协作式分布机器学习方法。这里只传输模型更新而不是整个数据集。本文全面介绍了使用机器学习、深度学习和 FL 预测流量的方法。其中,FL 可以在不损害隐私的情况下准确预测流量。我们首先在引言中介绍了 XAI 和 FL 的概况。然后,我们讨论了 FL 的基本概念及其相关工作、FL-IoMT 框架以及在交通中使用 FL 的动机。随后,我们讨论了在交通和开源项目中使用 FL 的应用。最后,我们强调了 FL 领域的几项研究挑战及其可能的发展方向。
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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