2023
DOI: 10.1109/tim.2023.3269105
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Adaptive Fusion Feature Transfer Learning Method For NILM

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Cited by 3 publications
(1 citation statement)
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“…We compare the impact of the presence or absence of CSMs on the disaggregation results and calculated the discrepancies between the disaggregated device states and the actual device states for the fridge from the REDD dataset, as shown in figure 10. A discrepancy of 0 indicates that the disaggregated device state is consistent with the actual state of the device, −1 indicates that the actual state is off while disaggregated as on, and 1 indicates that the actual state is on and disaggregated as off [47]. It is evident that the addition of the CSM significantly improves the accuracy of the device state disaggregation compared to the baseline model.…”
Section: The Impact Of the Csm On Disaggregation Resultsmentioning
confidence: 97%
“…We compare the impact of the presence or absence of CSMs on the disaggregation results and calculated the discrepancies between the disaggregated device states and the actual device states for the fridge from the REDD dataset, as shown in figure 10. A discrepancy of 0 indicates that the disaggregated device state is consistent with the actual state of the device, −1 indicates that the actual state is off while disaggregated as on, and 1 indicates that the actual state is on and disaggregated as off [47]. It is evident that the addition of the CSM significantly improves the accuracy of the device state disaggregation compared to the baseline model.…”
Section: The Impact Of the Csm On Disaggregation Resultsmentioning
confidence: 97%