2020
DOI: 10.1109/tsg.2020.3008603
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A Data-Driven Pivot-Point-Based Time-Series Feeder Load Disaggregation Method

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Cited by 16 publications
(4 citation statements)
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References 11 publications
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“…The first data set is synthetic data and uses a modified IEEE 123-bus system to generate one year of 15-min data for 1,100 loads. The feeder load disaggregation algorithm presented in [14] has been used to allocate 1-min resolution residential load profiles from Pecan Street [15] to every load node on a test feeder. Each load node in 123 bus system is assigned a minimum of 4, a maximum of 26, and an average of 11 loads.…”
Section: Simulation Resultsmentioning
confidence: 99%
“…The first data set is synthetic data and uses a modified IEEE 123-bus system to generate one year of 15-min data for 1,100 loads. The feeder load disaggregation algorithm presented in [14] has been used to allocate 1-min resolution residential load profiles from Pecan Street [15] to every load node on a test feeder. Each load node in 123 bus system is assigned a minimum of 4, a maximum of 26, and an average of 11 loads.…”
Section: Simulation Resultsmentioning
confidence: 99%
“…A different article [29] modelled the electricity consumption of charging stations, using similarities between the created models to better understand the future requirements of similar charging stations. Article [30] disaggregated feeder head-level consumption into separate smart meter readings, encompassing both industrial and residential buildings. An article [4] used bulk supply point measurements to disaggregate them into several categories, such as switch mode power supply, different induction motors, lighting, rectifiers, and resistive load, while [8] also considered plug-in electric vehicles at the feeder head level.…”
Section: Fig 1 the Investigated Domains In The Literaturementioning
confidence: 99%
“…In article [28], which focuses on feeder head-level electric vehicle load disaggregation, the electric vehicle data was combined with zonal load data released by Independent System Operators in New England. Duke Energy provided a dataset for [30], collected in North Carolina.…”
Section: Data and Data Sourcesmentioning
confidence: 99%
“…The parameters and connection points of the DERs are listed in Table I. Each load node in the 123-bus system is assigned a unique 5-minute load profile using the method introduced in [26]. Note that the load profiles are derived from the 1-minute Pecan Street Dataset [27].…”
Section: Data-driven Distributional Robust Reformulationmentioning
confidence: 99%