Online Methodology for Separating the Power Consumption of Lighting Sockets and Air-Conditioning in Public Buildings Based on an Outdoor Temperature Partition Model and Historical Energy Consumption Data

Among sub-items of energy consumption in public buildings, lighting sockets play an important role in energy-saving analysis. So, the energy consumption data quality of lighting sockets is important. However, limited by the initial cost of energy monitoring platform, it is difficult to install electricity meters covering all branches and to retrofit the incompact classification electricity branches, which results in a mixture of the lighting socket energy consumption and other components. In this study, a separation methodology is proposed. First, the abnormal data in the energy monitoring platform are cleaned and screened using a clustering algorithm. Second, the average outdoor air temperature partitioning model (OATPM) method and the k-nearest neighbor (KNN) clustering algorithm method are proposed for identifying and separating the abnormal data. These two methods have complementary advantages in the best applicable scenarios, including calculation accuracy and other aspects. The verification results for three buildings show that the relative error of this separation methodology is less than 15%. Finally, this paper presents the optimization parameters of the KNN method. Through this methodology, building managers need only historical data in an energy monitoring platform to separate the combined power consumption of the lighting sockets and air-conditioning online, independent of detailed information statistics.

[1]  Antonio GABALDÓN,et al.  Residential end-uses disaggregation and demand response evaluation using integral transforms , 2017 .

[2]  W. L. Lee,et al.  Energy saving by realistic design data for commercial buildings in Hong Kong , 2001 .

[3]  E. Forgy,et al.  Cluster analysis of multivariate data : efficiency versus interpretability of classifications , 1965 .

[4]  Jin Fu,et al.  Iterative Online Fault Identification Scheme for High-Voltage Circuit Breaker Utilizing a Lost Data Repair Technique , 2020, Energies.

[5]  Kim Trenbath,et al.  Device-level plug load disaggregation in a zero energy office building and opportunities for energy savings , 2019 .

[6]  Peng Hin Lee,et al.  Non-intrusive load disaggregation with adaptive estimations of devices main power effects and two-way interactions , 2016 .

[7]  Franklin P. Mills,et al.  Rethinking the role of occupant behavior in building energy performance: A review , 2018, Energy and Buildings.

[8]  H. Akbari,et al.  Application of an End-Use Disaggregation Algorithm for Obtaining Building Energy-Use Data , 1998 .

[9]  Chandra Sekhar,et al.  Energy saving estimation for plug and lighting load using occupancy analysis , 2019, Renewable Energy.

[10]  Radu Zmeureanu,et al.  Using a pattern recognition approach to disaggregate the total electricity consumption in a house into the major end-uses , 1999 .

[11]  John Burnett,et al.  A study of energy performance of hotel buildings in Hong Kong , 2000 .

[12]  Laure Itard,et al.  Energy performance and comfort in residential buildings: Sensitivity for building parameters and occupancy , 2015 .

[13]  Peng Hin Lee,et al.  Energy disaggregation of overlapping home appliances consumptions using a cluster splitting approach , 2018 .

[14]  Steven B. Leeb,et al.  Non-intrusive electrical load monitoring in commercial buildings based on steady-state and transient load-detection algorithms , 1996 .

[15]  Anil K. Jain Data clustering: 50 years beyond K-means , 2010, Pattern Recognit. Lett..

[16]  Xiaoli Li,et al.  This article has been accepted for publication in a future issue of this journal, but has not been fully edited. Content may change prior to final publication. 1 Classification of Energy Consumption in Buildings with Outlier Detection , 2022 .

[17]  César Benavente-Peces,et al.  Buildings Energy Efficiency Analysis and Classification Using Various Machine Learning Technique Classifiers , 2020, Energies.

[18]  Douglas Steinley,et al.  K-means clustering: a half-century synthesis. , 2006, The British journal of mathematical and statistical psychology.

[19]  Peng Hin Lee,et al.  Unsupervised approach for load disaggregation with devices interactions , 2016 .

[20]  C.C.M. Carvalho,et al.  Methodology for Energy Efficiency on Lighting and Air Conditioning Systems in Buildings Using a Multi-Objective Optimization Algorithm , 2020 .

[21]  Xudong Yang,et al.  Characterizing the household energy consumption in heritage Nanjing Tulou buildings, China: A comparative field survey study , 2012 .

[22]  Energy use in commercial buildings in Hong Kong , 2002 .

[23]  P Pieter-Jan Hoes,et al.  User behavior in whole building simulation , 2009 .

[24]  Radu Zmeureanu,et al.  Nonintrusive load disaggregation computer program to estimate the energy consumption of major end uses in residential buildings , 2000 .

[25]  Qing Gao,et al.  Disaggregating power consumption of commercial buildings based on the finite mixture model , 2019, Applied Energy.