Machine learning based impedance estimation in power system

K. Givaki, S. Seyedzadeh, Kamyar Givaki
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引用次数: 3

Abstract

A passive machine learning based technique to estimate the impedance of the power grid at the point of common coupling of a converter interfaced distributed generation source is proposed. The proposed method is based on supervised learning and provides a fast and accurate estimation of the grid impedance without adversely impacting the power quality of the system. This method does not need an injection of additional signals to the grid and provides an accurate estimation of the grid impedance. Multi-objective NSGA-II algorithm is used for optimisation and tuning the random forest model for accurate estimation of both R and X The resistive and inductive reactance of grid is estimated using Random Forest model due to its capability in the prediction of multiple output values simultaneously.
基于机器学习的电力系统阻抗估计
提出了一种基于被动机器学习的变换器接口分布式电源共耦合点电网阻抗估计方法。该方法基于监督学习,在不影响系统电能质量的前提下提供了快速准确的电网阻抗估计。该方法不需要向网格注入额外的信号,并提供了对网格阻抗的准确估计。采用多目标NSGA-II算法对随机森林模型进行优化和调优,以准确估计R和X。由于随机森林模型具有同时预测多个输出值的能力,因此可以使用随机森林模型对电网的电阻和感应电抗进行估计。
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