Data-driven Power Flow Linearization: Theory
Mengshuo Jia, Gabriela Hug, Ning Zhang, Zhaojian Wang, Yi Wang,, Chongqing Kang

TL;DR
This paper provides a comprehensive theoretical and numerical review of data-driven power flow linearization methods, highlighting their accuracy, adaptability, and potential for improving renewable energy integration.
Contribution
It systematically classifies, analyzes, and compares 40 DPFL methods and classic approaches, revealing their capabilities, limitations, and generalizability.
Findings
Extensive numerical comparisons of 40 DPFL methods and 4 physics-driven approaches.
Identification of strengths and limitations of existing DPFL techniques.
Guidance for selecting appropriate linearization methods based on performance.
Abstract
This two-part tutorial dives into the field of data-driven power flow linearization (DPFL), a domain gaining increased attention. DPFL stands out for its higher approximation accuracy, wide adaptability, and better ability to implicitly incorporate the latest system attributes. This renders DPFL a potentially superior option for managing the significant fluctuations from renewable energy sources, a step towards realizing a more sustainable energy future, by translating the higher model accuracy into increased economic efficiency and less energy losses. To conduct a deep and rigorous reexamination, this tutorial first classifies existing DPFL methods into DPFL training algorithms and supportive techniques. Their mathematical models, analytical solutions, capabilities, limitations, and generalizability are systematically examined, discussed, and summarized. In addition, this tutorial…
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Taxonomy
TopicsPower Quality and Harmonics · Energy Load and Power Forecasting · Power Systems and Technologies
