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Data-Driven Power Flow Calculation Method: A Lifting Dimension Linear Regression Approach

Authors :
Yixin Liu
Linquan Bai
Li Guo
Yuxuan Zhang
Xialin Li
Chengshan Wang
Zhongguan Wang
Source :
IEEE Transactions on Power Systems. 37:1798-1808
Publication Year :
2022
Publisher :
Institute of Electrical and Electronics Engineers (IEEE), 2022.

Abstract

The high-precision parameters in distribution networks are dif-ficult to obtain, which brings difficulties to the model-based methods and analysis. With the widespread deployment of high-precision measurement units, data-driven methods have greater advantages in practice. In addition, with massive integra-tion of distributed renewable generation and fast electric vehicle chargers, the fluctuations of net load increase significantly. The data-driven power flow calculation method based on the linear model becomes difficult to obtain accurate results for the low nonlinear adaptability. To improve the data-driven power flow calculation accuracy under high penetration of renewable distri-bution generation, this paper proposed an approach with high adaptability to the nonlinearity of power flow. Based on the thought of Koopman operator theory, the nonlinear relationship in power flow calculation is converted into a linear mapping in a higher dimension state space, which can significantly improve the calculation accuracy. Case studies on different IEEE cases have demonstrated that the proposed method can realize higher accu-racy in power flow calculation with large-scale power fluctuations, compared to the existing data-driven method, in both mesh and radial networks. Finally, measurement data of a practical 10kV distribution network has been further used to verify the effec-tiveness of the proposed method in practical applications.

Details

ISSN :
15580679 and 08858950
Volume :
37
Database :
OpenAIRE
Journal :
IEEE Transactions on Power Systems
Accession number :
edsair.doi...........dcaa0449c58fbd528b0a3ecd3bfc849d