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首页> 外文期刊>IEEE transactions on industrial informatics >A Parallel Military-Dog-Based Algorithm for Clustering Big Data in Cognitive Industrial Internet of Things
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A Parallel Military-Dog-Based Algorithm for Clustering Big Data in Cognitive Industrial Internet of Things

机译:一种基于Partical-Dog基于认知工业互联网集群大数据的算法

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摘要

With the advancement of wireless communication, Internet of Things (IoT), and big data, high performance data analytic tools and algorithms are required. Data clustering, a promising analytic technique is widely used to solve the IoT and big-data-based problems, since it does not require labeled datasets. Recently, metaheuristic algorithms have been efficiently used to solve various clustering problems. However, to handle big datasets produced from IoT devices, these algorithm fail to respond within the desired time due to high computation cost. This article presents a new metaheuristic-based clustering method to solve the big data problems by leveraging the strength of MapReduce. The proposed methods leverages the searching potential of military dog squad to find the optimal centroids and MapReduce architecture to handle the big datasets. The optimization efficacy the proposed method is validated against 17 benchmark functions, and the results are compared with five other recent algorithms, namely, bat, particle swarm optimization, artificial bee colony, multiverse optimization, and whale optimization algorithm. Furthermore, a parallel version of the proposed method is introduced using MapReduce [MapReduce-based MDBO (MR-MDBO)] for clustering the big datasets produced from industrial IoT. Moreover, the performance of MR-MDBO is studied on two benchmark UCI datasets and three real IoT-based datasets produced from industry. The F-measure and computation time of the MR-MDBO is compared with the six other state-of-the-art methods. The experimental results witness that the proposed MR-MDBO-based clustering outperforms the other considered algorithms in terms of clustering accuracy and computation times.
机译:随着无线通信的进步,需要互联网(IOT)和大数据,高性能数据分析工具和算法。数据聚类,一个有希望的分析技术被广泛用于解决IOT和基于大数据的问题,因为它不需要标记的数据集。最近,已经有效地用于解决各种聚类问题的成群质算法。然而,为了处理由物联网设备生产的大数据集,由于高计算成本,这些算法无法在期望的时间内响应。本文介绍了一种新的基于媒体培养的聚类方法,通过利用MapReduce的强度来解决大数据问题。所提出的方法利用军事狗队的搜索潜力来找到最佳质心和MapReduce架构来处理大数据集。优化效能,所提出的方法是针对17个基准函数验证的,结果与其他五个近期算法进行了比较,即蝙蝠,粒子群优化,人工蜂殖民地,多层优化和鲸类优化算法。此外,使用MapReduce [基于MapReduce的MDBO(MR-MDBO)]来引入所提出的方法的并行版本,用于群集由工业物联网生产的大数据集。此外,研究了MR-MDBO的性能,在两个基准UCI数据集和由行业生产的三个真实的基于物联网数据集上进行了研究。将MR-MDBO的F测量和计算时间与其他六种最先进的方法进行比较。实验结果证明了所提出的MR-MDBO的聚类在聚类精度和计算时间方面优于其他考虑的算法。

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