An Efficient Machine Learning-Based Cluster Analysis Mechanism for IoT Data

Sivadi Balakrishna
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Abstract

The prevailing developments in internet of things (IoT) and other sensor technologies such as cyber physical systems (CPS) and wireless sensor networks (WSNs), the huge amount of sensor data has been generating from various IoT devices and protocols. Making predictions and finding density patterns over such data is a challenging task. In order to find the density patterns and make analysis over real-time dynamic data, the machine learning (ML) based algorithms are widely used to deal with the IoT data. In this article, the authors proposed an efficient ML-based cluster analysis mechanism for finding density patterns in IoT dynamic data effectively. In this proposed mechanism, the k-means and GMM models are used for clustering data analysis. The proposed mechanism has been implemented on ThingSpeak Cloud platform for analysing the data efficiently on daily and weekly basis. Finally, the proposed mechanism acquired superior results than the existing benchmarked mechanisms over all the performance evaluation metrics used for analysis over IoT dynamic data.
基于机器学习的高效物联网数据聚类分析机制
随着物联网(IoT)和其他传感器技术(如网络物理系统(CPS)和无线传感器网络(wsn))的普遍发展,各种物联网设备和协议产生了大量的传感器数据。通过这些数据进行预测并找到密度模式是一项具有挑战性的任务。为了发现密度模式并对实时动态数据进行分析,基于机器学习(ML)的算法被广泛用于处理物联网数据。在本文中,作者提出了一种高效的基于ml的聚类分析机制,用于有效地发现物联网动态数据中的密度模式。在该机制中,k-means和GMM模型被用于聚类数据分析。提出的机制已在ThingSpeak Cloud平台上实现,用于每天和每周有效地分析数据。最后,在所有用于分析物联网动态数据的性能评估指标上,所提出的机制比现有的基准机制获得了更好的结果。
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