Outlier-immune Data-driven Linear Power Flow Model Construction via Mixed-Integer Programming
The common approaches to construct a data-driven linear power flow (DD-LPF) model cannot completely eliminate the adverse impacts of outliers in a training dataset. In this letter, a novel outlier-immune DD-LPF model construction method via mixed-integer programming is presented for automatically an...
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Zusammenfassung: | The common approaches to construct a data-driven linear power flow (DD-LPF)
model cannot completely eliminate the adverse impacts of outliers in a training
dataset. In this letter, a novel outlier-immune DD-LPF model construction
method via mixed-integer programming is presented for automatically and
optimally identifying outliers to form a more accurate LPF model. Two
acceleration solution strategies are further suggested to reduce the
computational time. Case studies demonstrate the superior accuracy and
comparable computational time of the proposed method when compared to three
common approaches. |
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DOI: | 10.48550/arxiv.2312.15831 |