A framework for IoT-based Resource Scheduling in the Cloud

S. R, C. N
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Abstract

Scheduling the resources is a fundamental part of the cloud environment. The facilitation of an efficient scheduling approach is a challenging issue. An ideal resource allocation framework that utilizes square-fuzzy methodology and radial basis function network (RBFN) is discussed here. The main motive of this model is to reduce communication and computation costs. The sensor devices in the IoT sensor layer are clustered initially. Further, the sensor data gathered by cluster heads are transferred to the fog layer. The network traffic is optimized through the fuzzy technique. The energy consumption of the network is reduced by the fog layer and then the data is transferred to the cloud where essential attributes of the cloud server and input are used for scheduling of resources by utilizing modified RBFN. The proposed methodology is analyzed and compared with existing models.
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基于物联网的云资源调度框架
资源调度是云环境的基本组成部分。促进有效的调度方法是一个具有挑战性的问题。本文讨论了一种利用平方模糊方法和径向基函数网络(RBFN)的理想资源分配框架。该模型的主要目的是减少通信和计算成本。物联网传感器层的传感器设备最初是集群化的。此外,由簇头收集的传感器数据被传输到雾层。通过模糊技术对网络流量进行优化。通过雾层减少网络的能耗,然后将数据传输到云端,利用云服务器的基本属性和输入,利用改进的RBFN进行资源调度。并与现有模型进行了分析和比较。
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