A support vector regression-based interval power flow prediction method for distribution networks with DGs integration

被引:0
|
作者
Liang, Xiaorui [1 ]
Zhang, Huaying [1 ]
Liu, Qian [2 ]
Liu, Zijun [1 ]
Liu, Huicong [1 ]
机构
[1] New Smart City High-Quality Power Supply Joint Laboratory of China Southern Power Grid, Shenzhen Power Supply Co., Ltd., Guangdong, Shenzhen, China
[2] College of Electrical and Information Engineering, Hunan University, Hunan, Changsha, China
关键词
Vectors;
D O I
10.3389/fenrg.2024.1465604
中图分类号
学科分类号
摘要
In distribution networks with distributed generators (DGs), power generation and load demand exhibit increased randomness and volatility, and the line parameters also suffer more frequent fluctuations, which may result in significant state shifts. Existing model-driven methods face challenges in efficiently solving uncertain power flow, especially as the size of the system increases, making it difficult to meet the demand for rapid power flow analysis. To address these issues, this paper proposes an SVR-based interval power flow (IPF) prediction method for distribution networks with DGs integration. The method utilizes intervals to describe system uncertainty and employs Support Vector Regression (SVR) for model training. The input feature vector consists of the intervals of active power generation, load demand, and line parameters, while the output feature vector represents the intervals of voltage or line transmission power. Ultimately, the SVR-based IPF prediction model is established, capturing the linear mapping relationship between input data and output IPF variables. Simulation results demonstrate that the proposed method exhibits high prediction accuracy, strong adaptability, and optimal computation efficiency, meeting the requirements for rapid and real-time power flow analysis while considering the uncertainty in distribution networks with DGs integration. Copyright © 2024 Liang, Zhang, Liu, Liu and Liu.
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