一种新的基于雾计算的能量感知调度和负载均衡技术

Ahmad Alzeyadi, N. Farzaneh
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引用次数: 6

摘要

考虑到现代信息技术的发展,雾计算的出现获得了设备计算能力,为现代传统工业应用提供了新的解决方案。一般来说,智能工厂结构中设备之间的通信是最具争议的问题之一。由于智能工厂需要在现有的各种工具和智能代理之间来回传递大量的消息,并且连接自然是无线的,因此它们不会提供太多的信息。如果智能代理倾向于使用广播来发送消息,那么这个过程将是昂贵的,几乎没有结果。因此,本文提出了一种有效的解决方案,在考虑到能量消耗、网络效率、流量和消息交换延迟等复杂问题的同时,实现这些元素之间的最佳连接。该方法在关注制造业集群复杂的能耗问题的同时,具有对通信雾的调度意识。该算法考虑了能量、动态阈值、任务等待时间和智能因素之间的通信延迟四个标准。这些标准分为两类。执行两个调度和负荷调整程序的标准取决于用户的意见。实验结果表明,该方法比基本方法在机器人中更加均衡。这种负载平衡减少了每个机器人的工作量,从而减少了每个产品打包的等待时间。此外,与ELBS相比,该方法在网络中的通信量减少了约63%。
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A Novel Energy-aware Scheduling and Load-balancing Technique based on Fog Computing
Considering the development of modern information technology, the emergence of fog computing has gained equipment computing power and supplied new solutions for modern traditional industrial applications. Generally, providing communication among devices in smart factories structure is one of the most controversial issues. Since reciprocating lots of messages among existent various tools and intelligent agents is required in the smart factories, and the connections are naturally wireless, they will not have much to offer. If the intelligent agents tend to use broadcasting in sending their messages, the process will be costly with little outcome. Hence, in this paper, an effective solution is presented to gain optimum connections among these elements, while considering the complex issues on energy consumption, network efficiency, traffic, and latency in the exchange of messages. The proposed method is a scheduling awareness of the communicative fog while focusing on complicated energy consumption problems of manufacturing clusters. In the proposed algorithm, four criteria are considered: energy, dynamic threshold, waiting time of tasks, and communication delay among smart factors. These criteria are divided into two categories. The criteria according to which two scheduling and load adjusting procedures are performed depend on the user's opinion. The results of the experiments show that the workload in the proposed method is more balanced than the base method in the robot. This load balancing has reduced the amount of workload in each robot, which reduces the waiting time for each product to be packaged. Also, the amount of communication in the network in the proposed method has decreased about 63% compared to ELBS.
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