Secure Adaptive Context-Aware ABE for Smart Environments

S. Inshi, Rasel Chowdhury, Hakima Ould-Slimane, C. Talhi
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Abstract

Predicting context-aware activities using machine-learning techniques is evolving to become more readily available as a major driver of the growth of IoT applications to match the needs of the future smart autonomous environments. However, with today’s increasing security risks in the emerging cloud technologies, which share massive data capabilities and impose regulation requirements on privacy, as well as the emergence of new multiuser, multiprofile, and multidevice technologies, there is a growing need for new approaches to address the new challenges of autonomous context awareness and its fine-grained security-enforcement models. The solutions proposed in this work aim to extend our previous LCA-ABE work to provide an intelligent, dynamic creation of context-aware policies, which has been achieved through deploying smart-learning techniques. It also provides data consent, automated access control, and secure end-to-end communications by leveraging attribute-based encryption (ABE). Moreover, our policy-driven orchestration model is able to achieve an efficient, real-time enforcement of authentication and authorization (AA) as well as federation services between users, service providers, and connected devices by aggregating, modelling, and reasoning context information and then updating consent accordingly in autonomous ways. Furthermore, our framework ensures that the accuracy of our algorithms is above 90% and their precision is around 85%, which is considerably high compared to the other reviewed approaches. Finally, the solution fulfills the newly imposed privacy regulations and leverages the full power of IoT smart environments.
面向智能环境的安全自适应上下文感知ABE
使用机器学习技术预测上下文感知活动正在发展成为物联网应用增长的主要驱动力,以满足未来智能自主环境的需求。然而,随着当今新兴云技术的安全风险日益增加,这些技术共享大量数据功能并对隐私提出监管要求,以及新的多用户、多配置文件和多设备技术的出现,越来越需要新的方法来应对自主上下文感知及其细粒度安全执行模型的新挑战。本工作中提出的解决方案旨在扩展我们之前的LCA-ABE工作,以提供通过部署智能学习技术实现的上下文感知策略的智能、动态创建。它还通过利用基于属性的加密(ABE)提供数据同意、自动访问控制和安全的端到端通信。此外,我们的策略驱动的编排模型能够通过聚合、建模和推理上下文信息,然后以自主的方式相应地更新同意,在用户、服务提供商和连接的设备之间实现高效、实时的身份验证和授权(AA)以及联合服务的实施。此外,我们的框架确保我们的算法的准确率在90%以上,精度在85%左右,与其他审查的方法相比,这是相当高的。最后,该解决方案满足了新实施的隐私法规,并充分利用了物联网智能环境的全部功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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