Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Non-intrusive load disaggregation with adaptive estimations of devices main power effects and two-way interactions
Highlights An extension to our approach for energy disaggregation using mutual devices interactions is proposed with added adaptive estimations step in the disaggregation process. Devices interaction were embedded in the Factorial Hidden Markov Model representation of the total aggregate measurements. Adaptive estimations of devices main power effects and interactions was performed for cases when up to four devices are ON simultaneously. The proposed approach was tested on low frequency measurements of a selected house from a public data set.
Abstract Energy management and savings in residential homes are emerging concerns nowadays because of several challenges facing the energy sector such as energy sources limitations and environmental impacts. Non-intrusive load monitoring (NILM) was introduced as a set of methods and techniques that aim to decompose the total aggregate consumption measured by the smart meter into the consumptions by individual appliances present in the household. The detailed information on energy usage for each device were found to be a good influencing method for the residents to adopt better devices usage profiles which lead eventually to noticeable energy savings. Recent research had shown that the Hidden Markov Models (HMMs) and its extensions are effective models in the load disaggregation problem. The authors had introduced a new unsupervised approach for load disaggregation that includes the mutual devices interactions information into the Factorial Hidden Markov Model (FHMM) representation of the aggregate signal in an earlier work. In this paper, we introduce an adaptive approach for estimating devices main power consumptions and their two-way interactions during the disaggregation process. The adaptive approach is used to mimic the changes in devices consumptions and two-way interactions. The adaptive estimation process was carried out only for cases when there are four devices or less that are operating/ON instantaneously. The proposed approach was tested with data from the REDD public data set and it showed better performance in terms of energy disaggregation accuracy compared with the standard FHMM. The adaptive estimating of main factors effects (primary power consumptions) and two-way interactions during the disaggregation process provided higher disaggregation accuracy results, in general, than those with fixed factors and two-way interactions values.
Non-intrusive load disaggregation with adaptive estimations of devices main power effects and two-way interactions
Highlights An extension to our approach for energy disaggregation using mutual devices interactions is proposed with added adaptive estimations step in the disaggregation process. Devices interaction were embedded in the Factorial Hidden Markov Model representation of the total aggregate measurements. Adaptive estimations of devices main power effects and interactions was performed for cases when up to four devices are ON simultaneously. The proposed approach was tested on low frequency measurements of a selected house from a public data set.
Abstract Energy management and savings in residential homes are emerging concerns nowadays because of several challenges facing the energy sector such as energy sources limitations and environmental impacts. Non-intrusive load monitoring (NILM) was introduced as a set of methods and techniques that aim to decompose the total aggregate consumption measured by the smart meter into the consumptions by individual appliances present in the household. The detailed information on energy usage for each device were found to be a good influencing method for the residents to adopt better devices usage profiles which lead eventually to noticeable energy savings. Recent research had shown that the Hidden Markov Models (HMMs) and its extensions are effective models in the load disaggregation problem. The authors had introduced a new unsupervised approach for load disaggregation that includes the mutual devices interactions information into the Factorial Hidden Markov Model (FHMM) representation of the aggregate signal in an earlier work. In this paper, we introduce an adaptive approach for estimating devices main power consumptions and their two-way interactions during the disaggregation process. The adaptive approach is used to mimic the changes in devices consumptions and two-way interactions. The adaptive estimation process was carried out only for cases when there are four devices or less that are operating/ON instantaneously. The proposed approach was tested with data from the REDD public data set and it showed better performance in terms of energy disaggregation accuracy compared with the standard FHMM. The adaptive estimating of main factors effects (primary power consumptions) and two-way interactions during the disaggregation process provided higher disaggregation accuracy results, in general, than those with fixed factors and two-way interactions values.
Non-intrusive load disaggregation with adaptive estimations of devices main power effects and two-way interactions
Aiad, Misbah (Autor:in) / Lee, Peng Hin (Autor:in)
Energy and Buildings ; 130 ; 131-139
16.08.2016
9 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Unsupervised approach for load disaggregation with devices interactions
Elsevier | 2015
|Unsupervised approach for load disaggregation with devices interactions
Online Contents | 2016
|NON-INTRUSIVE LOAD DISAGGREGATION METHODS FOR LOW-RATE SMART METER DATA
BASE | 2021
|Non-Intrusive Load Disaggregation of Industrial Cooling Demand with LSTM Neural Network
BASE | 2022
|