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Unsupervised approach for load disaggregation with devices interactions
Highlights A new approach for energy disaggregation using mutual devices interactions. Devices interaction were embedded in the Factorial Hidden Markov Model representation of the total aggregate measurements. Unsupervised approach on low frequency data was used. The proposed approach was tested on a selected house from a public data set.
Abstract Energy savings is one of the hottest issues and concerns nowadays due to high oil prices and global warming as a result of CO2 emissions. Non-intrusive appliances load monitoring (NIALM) is a methodology that aims to breakdown the total power consumption measured by the smart meter in each household into the power consumed by the individual appliances. These detailed information on individual appliances consumptions can influence the users to follow better energy usage profiles so as to achieve energy savings. We introduce a novel energy disaggregation model that considers mutual devices interactions and embeds the information on devices interactions into the Factorial Hidden Markov Model (FHMM) representations of the aggregated data. The hidden states in the FHMM were inferred by means of the Viterbi algorithm. Devices’ interaction is a power quality issue that affects the measured power consumed by a device when there are other devices connected to the network. We tested our model using a selected house from the REDD public data set. Our proposed approach showed enhanced results when compared with the standard FHMM. Devices interactions, when observed, enabled us to disaggregate and assign energy consumption for individual devices more accurately.
Unsupervised approach for load disaggregation with devices interactions
Highlights A new approach for energy disaggregation using mutual devices interactions. Devices interaction were embedded in the Factorial Hidden Markov Model representation of the total aggregate measurements. Unsupervised approach on low frequency data was used. The proposed approach was tested on a selected house from a public data set.
Abstract Energy savings is one of the hottest issues and concerns nowadays due to high oil prices and global warming as a result of CO2 emissions. Non-intrusive appliances load monitoring (NIALM) is a methodology that aims to breakdown the total power consumption measured by the smart meter in each household into the power consumed by the individual appliances. These detailed information on individual appliances consumptions can influence the users to follow better energy usage profiles so as to achieve energy savings. We introduce a novel energy disaggregation model that considers mutual devices interactions and embeds the information on devices interactions into the Factorial Hidden Markov Model (FHMM) representations of the aggregated data. The hidden states in the FHMM were inferred by means of the Viterbi algorithm. Devices’ interaction is a power quality issue that affects the measured power consumed by a device when there are other devices connected to the network. We tested our model using a selected house from the REDD public data set. Our proposed approach showed enhanced results when compared with the standard FHMM. Devices interactions, when observed, enabled us to disaggregate and assign energy consumption for individual devices more accurately.
Unsupervised approach for load disaggregation with devices interactions
Aiad, Misbah (author) / Lee, Peng Hin (author)
Energy and Buildings ; 116 ; 96-103
2015-12-24
8 pages
Article (Journal)
Electronic Resource
English
Unsupervised approach for load disaggregation with devices interactions
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