A Design of the Real-Time Simulation for Wind Turbine Modeling with Machine Learning

Author:

Kim Jeong-Hwan,Park Rae-Jin,Kang Sungwoo,Cho Seokheon,Jung SeungminORCID

Abstract

AbstractPower system operators have recently introduced some AI-based techniques in load prediction, fault diagnosis, scheduling, and maintenance. Operators require a grid analysis that includes wind turbines to mitigate impacts by environmental factors. Among them, a method for modeling wind turbines that reflects the dynamic characteristics and their output characteristics is receiving attention. Recently, a data-based power curve modeling method has been adopted for a simplified model that characteristics as much as possible. However, the simplified EMT simulation is difficult to reflect the output characteristics according to nonlinear wind conditions accurately. This paper proposes a wind turbine model based on artificial neural network techniques using real supervisory control and data acquisition (SCADA) data from a wind farm. The proposed strategy derive the similar to real output value through the trained wind turbine model in various wind scenarios. For the verification of the proposed strategy, the case study was conducted using a real-time digital simulator (RTDS).

Funder

KEPCO Research Institute

Nuclear Safety and Security Commission

Publisher

Springer Science and Business Media LLC

Subject

Electrical and Electronic Engineering

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