论文标题

保留电动汽车的机器学习:一项调查

Privacy Preserving Machine Learning for Electric Vehicles: A Survey

论文作者

Sani, Abdul Rahman, Hassan, Muneeb Ul, Gao, Longxiang, Chen, Jinjun

论文摘要

近年来,个人用户对现代电动汽车(EV)的兴趣呈指数增长。 EV具有两个主要组成部分,它们与传统车辆不同,首先是其环境友好性,其次是由于现代信息和通信技术(ICT),因此这些车辆的互连能力。这两个功能在电动汽车的发展中都起着关键作用,学术界和行业人士都在努力为电动汽车网络开发现代协议。所有这些相互作用,无论是从能源的角度还是从交流的角度来看,都每天都会产生大量数据。为了使从电动汽车收集的数据中获得最大的收益,研究工作强调了用于各种EV应用的机器/深度学习技术。这种相互作用非常富有成果,但它在收集,存储和培训车辆数据期间的隐私泄漏也引起了批判性关注。因此,在开发电动汽车的机器/深度学习技术的同时,确保它们能够抵御私人信息泄漏和攻击也是至关重要的。在本文中,我们首先讨论了有关电动汽车和隐私保护技术的基本背景,然后使用机器学习技术简要概述了电动汽车中的隐私保护。特别是,我们还专注于对电动汽车中隐私技术整合的深入审查,并强调了电动汽车中不同的应用程序方案。除此之外,我们还提供了一项非常详细的调查,对现代电动汽车使用的有关隐私机器/深度学习技术的当前作品。最后,我们提出了某些研究问题,关键挑战和未来的研究方向,用于在电动汽车中保护隐私保护的研究人员。

In the recent years, the interest of individual users in modern electric vehicles (EVs) has grown exponentially. An EV has two major components, which make it different from traditional vehicles, first is its environment friendly nature because of being electric, and second is the interconnection ability of these vehicles because of modern information and communication technologies (ICTs). Both of these features are playing a key role in the development of EVs, and both academia and industry personals are working towards development of modern protocols for EV networks. All these interactions, whether from energy perspective or from communication perspective, both are generating a tremendous amount of data every day. In order to get most out of this data collected from EVs, research works have highlighted the use of machine/deep learning techniques for various EV applications. This interaction is quite fruitful, but it also comes with a critical concern of privacy leakage during collection, storage, and training of vehicular data. Therefore, alongside developing machine/deep learning techniques for EVs, it is also critical to ensure that they are resilient to private information leakage and attacks. In this paper, we begin with the discussion about essential background on EVs and privacy preservation techniques, followed by a brief overview of privacy preservation in EVs using machine learning techniques. Particularly, we also focus on an in-depth review of the integration of privacy techniques in EVs and highlighted different application scenarios in EVs. Alongside this, we provide a a very detailed survey of current works on privacy preserving machine/deep learning techniques used for modern EVs. Finally, we present the certain research issues, critical challenges, and future directions of research for researchers working in privacy preservation in EVs.

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