Implementation of non-intrusive appliances load monitoring (NIALM) on k-nearest neighbors (k-NN) classifier

被引:0
|
作者
Kelati A. [1 ,3 ]
Gaber H. [2 ]
Plosila J. [3 ]
Tenhunen H. [1 ,3 ]
机构
[1] Royal Institute of Technology (KTH), Division of Electronics and Embedded Systems, EECS/ELE, Electrum 229, Kista
[2] Ontario Tech University, Faculty of Energy Systems and Nuclear Science, Faculty of Engineering and Applied Science, 2000 Simcoe Street North, Oshawa, L1G0C5, ON
[3] University of Turku, Department of Future Technologies, Turun yliopisto
来源
关键词
Appliance classification; K-nearest neighbor (k-NN); Non-intrusive load monitoring (NIALM); PLAID dataset; Smart meter; V-I trajectory;
D O I
10.3934/ElectrEng.2020.3.326
中图分类号
学科分类号
摘要
Nonintrusive Appliance Load Monitoring (NIALM) is used to analyze individual’s house energy consumption by distinguishing variations in voltage and current of appliances in a household. The method identifies load consumption of each appliance from the aggregated home energy consumption. NIALM will also provide information of load consumptions of each appliance by indirectly detecting the abnormal changes of appliance usage. The proposed NIALM approach is based on features extraction from load consumptions measurements of electrical power signals in order to classify appliance’s state of operation. In this work, we have improved the identification accuracy and the detection of appliances based on their operational state by employing Machine Learning (ML) technique; namely k-nearest neighbor (k-NN) classification algorithm. The dataset used to perform this process is from the publicly available (PLAID) of power, voltage and current signals of appliances from several houses. This is used as benchmark data set. The PLAID dataset is collected and processed for each appliance and our classification results based on k-NN algorithm achieved high accuracy and is able to gain cost-effective solution. In addition, the result shows that k-NN classifier is a proven as an efficient method for NIALM techniques when compared with other proposed different ML options. Based on the used dataset, the average F-score measure obtained using the k-NN classifier is 90%. Possible reasons behind these findings are discussed and areas for further exploration are proposed. © 2020 the Author(s), licensee AIMS Press. This is an open access article distributed under the terms of the Creative Commons Attribuon License (http://creativecommons.org/licenses/by/4.0)
引用
收藏
页码:326 / 344
页数:18
相关论文
共 50 条
  • [1] NS-k-NN: Neutrosophic Set-Based k-Nearest Neighbors Classifier
    Akbulut, Yaman
    Sengur, Abdulkadir
    Guo, Yanhui
    Smarandache, Florentin
    SYMMETRY-BASEL, 2017, 9 (09):
  • [2] Smart non-intrusive appliance identification using a novel local power histogramming descriptor with an improved k-nearest neighbors classifier
    Himeur, Yassine
    Alsalemi, Abdullah
    Bensaali, Faycal
    Amira, Abbes
    SUSTAINABLE CITIES AND SOCIETY, 2021, 67
  • [3] K-NN FOREST: a software for the non-parametric prediction and mapping of environmental variables by the k-Nearest Neighbors algorithm
    Chirici, Gherardo
    Corona, Piermaria
    Marchetti, Marco
    Mastronardi, Alessandro
    Maselli, Fabio
    Bottai, Lorenzo
    Travaglini, Davide
    EUROPEAN JOURNAL OF REMOTE SENSING, 2012, 45 : 433 - 442
  • [4] The research on an adaptive k-nearest neighbors classifier
    Yu, Xiao-Gao
    Yu, Xiao-Peng
    PROCEEDINGS OF 2006 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS, VOLS 1-7, 2006, : 1241 - 1246
  • [5] The research on an adaptive k-nearest neighbors classifier
    Yu, Xiaopeng
    Yu, Xiaogao
    PROCEEDINGS OF THE FIFTH IEEE INTERNATIONAL CONFERENCE ON COGNITIVE INFORMATICS, VOLS 1 AND 2, 2006, : 535 - 540
  • [6] An Interval Valued K-Nearest Neighbors Classifier
    Derrac, Joaquin
    Chiclana, Francisco
    Garcia, Salvador
    Herrera, Francisco
    PROCEEDINGS OF THE 2015 CONFERENCE OF THE INTERNATIONAL FUZZY SYSTEMS ASSOCIATION AND THE EUROPEAN SOCIETY FOR FUZZY LOGIC AND TECHNOLOGY, 2015, 89 : 378 - 384
  • [7] K-Nearest Neighbor (K-NN) based Missing Data Imputation
    Murti, Della Murbarani Prawidya
    Wibawa, Aji Prasetya
    Akbar, Muhammad Iqbal
    Ianto, Utomo Puj
    2019 5TH INTERNATIONAL CONFERENCE ON SCIENCE ININFORMATION TECHNOLOGY (ICSITECH): EMBRACING INDUSTRY 4.0 - TOWARDS INNOVATION IN CYBER PHYSICAL SYSTEM, 2019, : 83 - 88
  • [8] A new k-nearest neighbors classifier for functional data
    Zhu, Tianming
    Zhang, Jin-ting
    STATISTICS AND ITS INTERFACE, 2022, 15 (02) : 247 - 260
  • [9] Predicting the number of nearest neighbors for the k-NN classification algorithm
    Zhang, Xueying
    Song, Qinbao
    INTELLIGENT DATA ANALYSIS, 2014, 18 (03) : 449 - 464
  • [10] Intelligent System to Classify Peanuts Varieties Using K-Nearest Neighbors (K-NN) and Support Vector Machine (SVM)
    Narendra, V. G.
    Hegde, K. Govardhan
    ADVANCED INFORMATICS FOR COMPUTING RESEARCH, PT I, 2019, 1075 : 359 - 368