Data-Driven Trajectory Prediction of Grid Power Frequency Based on Neural Models

被引:8
作者
Chamorro, Harold R. [1 ]
Orjuela-Canon, Alvaro D. [2 ]
Ganger, David [3 ]
Persson, Mattias [4 ]
Gonzalez-Longatt, Francisco [5 ]
Alvarado-Barrios, Lazaro [6 ]
Sood, Vijay K. [7 ]
Martinez, Wilmar [1 ]
机构
[1] Katholieke Univ Leuven, KU Leuven, B-3000 Leuven, Belgium
[2] Univ Rosario, Sch Med & Hlth Sci, Bogota 111711, Colombia
[3] Eaton Corp, Golden, CO 80401 USA
[4] Res Inst Sweden, RISE, S-41258 Gothenburg, Sweden
[5] Univ South Eastern Norway, Dept Elect Engn Informat Technol & Cybernet, N-3918 Porsgrunn, Norway
[6] Univ Loyola Andalucia, Dept Ingn, Seville 41704, Spain
[7] Ontario Tech Univ, Elect Comp & Software Engn, Oshawa, ON L1H 7K4, Canada
关键词
non-synchronous generation; frequency response; low-inertia power systems; primary frequency control; wind power; nadir estimation; machine learning; deep learning;
D O I
10.3390/electronics10020151
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Frequency in power systems is a real-time information that shows the balance between generation and demand. Good system frequency observation is vital for system security and protection. This paper analyses the system frequency response following disturbances and proposes a data-driven approach for predicting it by using machine learning techniques like Nonlinear Auto-regressive (NAR) Neural Networks (NN) and Long Short Term Memory (LSTM) networks from simulated and measured Phasor Measurement Unit (PMU) data. The proposed method uses a horizon-window that reconstructs the frequency input time-series data in order to predict the frequency features such as Nadir. Simulated scenarios are based on the gradual inertia reduction by including non-synchronous generation into the Nordic 32 test system, whereas the PMU collected data is taken from different locations in the Nordic Power System (NPS). Several horizon-windows are experimented in order to observe an adequate margin of prediction. Scenarios considering noisy signals are also evaluated in order to provide a robustness index of predictability. Results show the proper performance of the method and the adequate level of prediction based on the Root Mean Squared Error (RMSE) index.
引用
收藏
页码:1 / 21
页数:21
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