2015 IEEE 10th International Conference on Industrial and Information Systems (ICIIS) 2015
DOI: 10.1109/iciinfs.2015.7399000
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Individual power profile estimation of residential appliances using low frequency smart meter data

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Cited by 13 publications
(4 citation statements)
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“…Several works have been carried out in the literature to identify how appliances are used by building occupants. For instance, Dinesh et al [49] used a simplified version of the Mean Shift Algorithm introduced by Cheng [75] to find representative load signatures in their load disaggregation study. They employed a Non-Intrusive Load Monitoring approach for appliances power profile/signal estimation based on Bayesian Classification to track appliance status in a building.…”
Section: Determination Of Appliance Load Profile In Buildingsmentioning
confidence: 99%
“…Several works have been carried out in the literature to identify how appliances are used by building occupants. For instance, Dinesh et al [49] used a simplified version of the Mean Shift Algorithm introduced by Cheng [75] to find representative load signatures in their load disaggregation study. They employed a Non-Intrusive Load Monitoring approach for appliances power profile/signal estimation based on Bayesian Classification to track appliance status in a building.…”
Section: Determination Of Appliance Load Profile In Buildingsmentioning
confidence: 99%
“…These generated sets of appliance specific PMFs and appliance combination specific PMFs form the appliance level signature database (ALSD) and the combination level signature databases (CLSD) respectively [47]. Furthermore, in order to perform the power level disaggregation according to [48] after the active appliance combination is identified, the power consumption levels of each and every appliance were studied and a power consumption level signature database (PCLSD) was constructed [48].…”
Section: Signature Database Constructionmentioning
confidence: 99%
“…It should be noted that accuracy of the power level disaggregation has also been increased by around two percentage points from using this strategy. Since both priori unbiased and biased NILM algorithms had used the same power breakdown technique in [48], this slight improvement should be due to the increased appliance combination identification accuracy achieved by the proposed NILM method. Although AET has been increased by around 30% due to the introduced priori biasing step in the proposed NILM method, still the AET is well inside 1s or 3s sampling periods.…”
Section: B Case Studymentioning
confidence: 99%
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