论文标题
保存电动汽车效用高的查询机制的隐私
A privacy preserving querying mechanism with high utility for electric vehicles
论文作者
论文摘要
由于对可持续未来的认识越来越多,电动汽车(EV)越来越受欢迎。但是,由于与电动汽车的充电站相比,范围焦虑症的收费站少,因此在寻找可用充电站的旅程中的查询数量中起着重要作用。另一方面,在各种类型的分析中使用个人数据的使用正在以前所未有的速度增加。因此,侵犯隐私的风险也在飙升。地理独立性是正式位置隐私作为当地差异隐私的概括的标准之一。但是,考虑到潜在的效用损失的含义,必须仔细校准噪声。在本文中,我们引入了近似地理独立性(AgeOI),该性能使电动汽车能够混淆单个查询位置,同时确保它们保持在感兴趣的首选领域。这是至关重要的,因为旅程通常对QoS的急剧下降很敏感,QoS的额外距离很高。我们应用Ageoi和虚拟数据生成来保护电动汽车在旅途中的隐私并保留QoS。分析见解和实验用于证明很高比例的电动汽车免费获得隐私,并且由隐私生成引起的公用事业损坏很小。使用迭代贝叶斯更新,我们的方法允许对充电站占用率进行私人且高度准确的预测,而无需披露查询位置和车辆轨迹,这对于前所未有的交通拥堵场景和有效的路线规划至关重要。
Electric vehicles (EVs) are gaining popularity due to the growing awareness for a sustainable future. However, since there are disproportionately fewer charging stations than EVs, range anxiety plays a major role in the rise in the number of queries made along the journeys to find an available charging station. On the other hand, the use of personal data in various types of analytics is increasing at an unprecedented rate. Hence, the risks of privacy violation are also surging. Geo-indistinguishability is one of the standards for formalising location privacy as a generalisation of the local differential privacy. However, the noise has to be carefully calibrated considering the implications of potential utility-loss. In this paper, we introduce approximate geo-indistinguishability (AGeoI) which allows the EVs to obfuscate the individual query-locations while ensuring that they remain within their preferred area of interest. It is vital because journeys are often sensitive to a sharp drop in QoS, which has a high cost for the extra distance to be covered. We apply AGeoI and dummy data generation to protect the privacy of EVs during their journeys and preserve the QoS. Analytical insights and experiments are used to demonstrate that a very high percentage of EVs get privacy for free and that the utility-loss caused by the privacy-gain is minuscule. Using the iterative Bayesian update, our method allows for a private and highly accurate prediction of charging station occupancy without disclosing query locations and vehicle trajectories, which is vital in unprecedented traffic congestion scenarios and efficient route-planning.