IoT sensor network data processing using the TWLGA Scheduling Algorithm and the Hadoop Cloud Platform

M. Rashid, Wisam Abed
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引用次数: 1

Abstract

Monitoring environmental conditions can be done effectively with the help of the Internet of Things (IOT) sensor network. Massive data generated by IOT sensor networks presents technological hurdles in terms of storage, processing, and querying. A Hadoop cloud platform is suggested as a fix for the issue. The data processing platform makes it possible for one node's work to be shared with others employing the time and workload genetic algorithm (TWLGA), which lowers the risk of software and hardware compatibility while simultaneously increasing the efficiency of a single node. For the experiment, a Hadoop cluster platform employing the TWLGA scheduling algorithm is built, and its performance is assessed. The outcomes demonstrate that processing huge volumes of data from the IOT sensor network is acceptable for the Hadoop cloud platform .
物联网传感器网络数据处理采用TWLGA调度算法和Hadoop云平台
借助物联网(IOT)传感器网络,可以有效地监测环境状况。物联网传感器网络产生的大量数据在存储、处理和查询方面存在技术障碍。建议使用Hadoop云平台来解决这个问题。该数据处理平台采用时间和工作量遗传算法(TWLGA)实现了节点间的数据共享,降低了软硬件兼容风险,同时提高了单个节点的效率。在实验中,构建了采用TWLGA调度算法的Hadoop集群平台,并对其性能进行了评估。结果表明,处理来自物联网传感器网络的大量数据对于Hadoop云平台是可以接受的。
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