Abstract

With the development and popular application of Building Internet of Things (BIoT) systems, numerous types of equipment are connected, and a large volume of equipment data is collected. For convenient equipment management, the equipment should be identified and labeled. Traditionally, this process is performed manually, which not only is time consuming but also causes unavoidable omissions. In this paper, we propose a k-means clustering-based electrical equipment identification toward smart building application that can automatically identify the unknown equipment connected to BIoT systems. First, load characteristics are analyzed and electrical features for equipment identification are extracted from the collected data. Second, k-means clustering is used twice to construct the identification model. Preliminary clustering adopts traditional k-means algorithm to the total harmonic current distortion data and separates equipment data into two to three clusters on the basis of their electrical characteristics. Later clustering uses an improved k-means algorithm, which weighs Euclidean distance and uses the elbow method to determine the number of clusters and analyze the results of preliminary clustering. Then, the equipment identification model is constructed by selecting the cluster centroid vector and distance threshold. Finally, identification results are obtained online on the basis of the model outputs by using the newly collected data. Successful applications to BIoT system verify the validity of the proposed identification method.

Highlights

  • With the increasing integration of industrialization and informatization, Internet of Things (IoT) technology has become an important means of interconnection between the human society and physical systems [1]

  • In comparison with the current waveform and power curve of typical electrical equipment, the results show high similarity

  • In the power models of typical electrical equipment, the power models of desktop PC, TV, and air header conform to the characteristics

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Summary

Introduction

With the increasing integration of industrialization and informatization, Internet of Things (IoT) technology has become an important means of interconnection between the human society and physical systems [1]. In several application scenarios of Building Internet of Things (BIoT), generally, the electrical parameter acquisition terminal and the equipment under test have no data interaction [2]. The type information of the equipment under test cannot be directly obtained from the platform side and should be manually labeled [3]. With the increasing demand for the remote monitoring and refined management of building electrical equipment, automatically identifying the types of equipment connected to the platform is important [4]. Many experts and scholars studied the identification of electrical equipment mainly by acquiring the relevant rules and mode information of user equipment [7,8]. Data-driven algorithms, such as Markov chain [9], decision tree [10], probabilistic neural network [11], deep learning [12], support

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