Soumen Mukherjee, A. Bhattacharjee, D. Bhattacharya, Moumita Ghosal
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引用次数: 0
摘要
在本章中,数据挖掘方法应用于标准物联网数据集,以识别数据集属性之间的关系。物联网也不例外;数据挖掘也可用于该领域。这里实现了各种基于规则的分类器和无监督分类器。使用这些方法,根据不同的分类属性(如支持度、置信度等)确定各种物联网特征之间的关系。为了进行分类,使用了实时物联网数据集,该数据集由长期从各种来源收集的家庭数据组成。还对IoT数据集上的不同分类方法进行了简要比较。还计算了这些分类技术的Kappa系数,以衡量这些方法的鲁棒性。在本章中,使用家庭数据集中的标准和流行的电力利用来显示不同数据内依赖关系之间的关联。在本研究中,使用AMPds (Almanac of minute Power Dataset)进行分类,准确率达到86%以上。
Analysis of Industrial and Household IoT Data Using Computationally Intelligent Algorithm
In this chapter, data mining approaches are applied on standard IoT dataset to identify relationship among attributes of the dataset. IoT is not an exception; data mining can be used in this domain also. Various rule-based classifiers and unsupervised classifiers are implemented here. Using these approaches relation between various IoT features are determined based on different properties of classification like support, confidence, etc. For classification, a real-time IoT dataset is used, which consists of household figures collected from various sources over a long duration. A brief comparison is also shown for different classification approaches on the IoT dataset. Kappa coefficient is also calculated for these classification techniques to measure the robustness of these approaches. In this chapter, standard and popular power utilization in household dataset is used to show the association between the different intra-data dependency. Classification accuracy of more than 86% is found with the Almanac of Minutely Power Dataset (AMPds) in the present work.