Leveraging Fog Computing for Geographically Distributed Smart Cities

Rasha S. Gargees
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Abstract

Recently, the emergence of smart cities (SC), where data streams come from various geographically distributed places, has posed new challenges. Cloud Computing provides excellent services for smart cities, such as powerful computation and storage. However, processing the geographically distributed data using cloud computing only is not an ideal solution in some cases. Additionally, moving all the big raw data to the remote cloud is another challenge for cloud computing since there will be shortcomings in terms of delay and high bandwidth consumption. A solution that allows fog-to-cloud or fog-to-fog communication can address these limitations as fogs are typically located locally near the data sources. However, the questions related to the efficient frameworks design, workload distribution, cost, and various key technologies and communication challenges remain. To this end, this research investigates the impact of fog, employing our proposed architecture, on the efficient utilization and management of resources in highly distributed systems through experiments. The comparison showed that fog computing reduces the cost in terms of time and resource utilization. Additionally, the collaboration of autonomous agents locally (within one fog) or globally (across multiple fogs and cloud) supports scalability and automation. It also facilitates large-scale data processing across various real-world distributed locations.
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利用雾计算实现地理分布的智慧城市
最近,智能城市(SC)的出现带来了新的挑战,其中数据流来自不同地理分布的地方。云计算为智慧城市提供了强大的计算能力和存储能力等优良服务。但是,在某些情况下,仅使用云计算处理地理上分布的数据并不是理想的解决方案。此外,将所有大的原始数据移动到远程云中是云计算面临的另一个挑战,因为在延迟和高带宽消耗方面存在缺点。允许雾对云或雾对雾通信的解决方案可以解决这些限制,因为雾通常位于数据源附近。然而,与高效框架设计、工作负载分配、成本以及各种关键技术和通信挑战相关的问题仍然存在。为此,本研究采用我们提出的架构,通过实验研究雾对高度分布式系统中资源的有效利用和管理的影响。比较表明,雾计算在时间和资源利用率方面降低了成本。此外,本地(在一个雾中)或全局(跨多个雾和云)自治代理的协作支持可伸缩性和自动化。它还促进了跨各种真实分布位置的大规模数据处理。
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