Adaptive Resource Provisioning for Smart Home Using Fog Computing

A. Chandak, N. Ray
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Abstract

IoT devices in the smart home eases human life and they can be controlled from remote locations. Proper utilization of end devices and other resources is a basic requirements in smart home. In smart home for faster processing of data fog nodes are used. They are deployed to minimize processing delay and are most suitable when an appropriate number of resources are available. Resource provisioning refers to the optimal allocation of resources to improve resource utilization and response time. It also avoid situation where some fog node is overloaded and some are underloaded. Fog nodes are dynamic and they can leave or join the network anytime. In the same time any malicious fog node can also join the fog network and can tamper the data and other resources. In this article, an efficient resource provisioning mechanism for smart home is proposed. The proposed scheme uses an authentication mechanism in which fog nodes authenticate themselves before providing services. There are mainly two types of requests by IoT devices viz. data and computational. To improve response, it is necessary to categorize requests and allocate fog nodes in proportion of requests type. The proposed scheme assess the performance of adaptive resource provisioning with static and random provisioning based on makespan, average execution time, and response time.
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基于雾计算的智能家居自适应资源配置
智能家居中的物联网设备简化了人们的生活,它们可以从远程位置进行控制。合理利用终端设备和其他资源是智能家居的基本要求。在智能家居中,为了更快地处理数据,使用了雾节点。它们的部署是为了最大限度地减少处理延迟,并且在有适当数量的资源可用时最适合。资源调配是指对资源进行最优分配,以提高资源利用率和响应时间。它还避免了一些雾节点过载而另一些雾节点负载不足的情况。雾节点是动态的,它们可以随时离开或加入网络。同时,任何恶意雾节点也可以加入雾网络,篡改数据和其他资源。本文提出了一种高效的智能家居资源配置机制。该方案使用了一种认证机制,其中雾节点在提供服务之前对自己进行认证。物联网设备主要有两种类型的请求,即数据和计算。为了提高响应速度,需要对请求进行分类,并按请求类型的比例分配雾节点。该方案基于makespan、平均执行时间和响应时间,对静态和随机自适应资源配置的性能进行评估。
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