Impacts of raw data temporal resolution using selected clustering methods on residential electricity load profiles
There is growing interest in discerning behaviors of electricity users in both the residential and commercial sectors. With the advent of high-resolution time-series power demand data through advanced metering, mining this data could be costly from the computational viewpoint. One of the popular tec...
Váldodahkkit: | Granell, R, Axon, C, Wallom, D |
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Materiálatiipa: | Journal article |
Almmustuhtton: |
IEEE
2015
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Geahča maid
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