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Accessing Data from Multiple Sources Through Context-Aware Access Control

机译:通过上下文感知访问控制访问来自多个来源的数据

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With the proliferation of cloud-based data and services, accessing data from distributed cloud environments and consequently providing integrated results to the users has become a key challenge, often involving large processing overheads and administrative costs. The traditional, spatial, temporal and other context-sensitive access control models have been applied in different environments in order to access such data and information. Recently, fog-based access control models have also been introduced to overcome the latency and processing issues by moving the execution of application logic from the cloud-level to an intermediary-level through adding computational nodes at the edges of the networks. These existing access control models mostly have been used to access data from centralized sources. However, we have been encountering rapid changes in computing technologies over the last few years, and many organizations need to dynamically control context-sensitive access to cloud data resources from distributed environments. In this article, we propose a new generation of fog-based access control approach, combining the benefits of fog computing and context-sensitive access control solutions. We first formally introduce a general data model and its associated policy and mapping models, in order to access data from distributed cloud sources and to provide integrated results to the users. In particular, we present a unified set of fog-based access control policies with the aim of reducing administrative burdens and processing overheads. We then introduce a unified data ontology together with its reasoning capability by realizing our formal approach. We demonstrate the applicability of our proposal through a prototype testing and several case studies. Experiment results demonstrate the good performance of our approach with respect to our earlier context-sensitive access control approach.
机译:随着基于云的数据和服务的扩散,访问来自分布式云环境的数据并因此向用户提供集成结果已成为一个关键挑战,通常涉及大的处理开销和管理成本。在不同的环境中应用了传统的,空间,时间和其他上下文敏感的访问控制模型,以便访问此类数据和信息。最近,还引入了基于雾的访问控制模型来克服延迟和处理问题,通过在网络的边缘中添加计算节点来将应用程序逻辑从云级移动到中间级来克服延迟和处理问题。这些现有的访问控制模型主要用于访问集中源的数据。但是,我们一直遇到过去几年计算技术的快速变化,许多组织需要动态控制来自分布式环境的云数据资源的上下文敏感访问。在本文中,我们提出了新一代基于迷雾的访问控制方法,相结合了雾计算和上下文敏感的访问控制解决方案的好处。我们首先正式地介绍了一般数据模型及其相关的策略和映射模型,以便从分布式云源访问数据并向用户提供集成结果。特别是,我们展示了一组统一的基于迷人的访问控制策略,目的是减少管理负担和处理开销。然后,我们通过实现正式方法将统一的数据本体论与其推理能力一起介绍。我们通过原型测试和几种案例研究展示了我们提案的适用性。实验结果表明我们对早期背景敏感的访问控制方法的良好性能。

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