4.6 Article

Power Curve Modelling for Wind Turbine Using Artificial Intelligence Tools and Pre-established Inference Criteria

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.35833/MPCE.2019.000236

关键词

Wind turbines; Wind farms; Wind speed; Fuzzy logic; Wind power generation; Power systems; Artificial intelligence; Wind turbine; pre-training; artificial intelligence; artificial neural network (ANN); fuzzy inference system (FIS)

资金

  1. Coordination for the Improvement of Higher Education Personnel (CAPES) - Research Financers in Brazil

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A new method using artificial intelligence tools to develop non-parametric power curve models is proposed, with results showing that the new pre-trained FIS models have better precision in power curve approximation compared to ANN and FIS models.
We propose a new way to develop non-parametric models of power curves using artificial intelligence tools. One parametric model and eight non-parametric models are developed to emulate the behavior described by the power curve of the wind farms. A comparison between the power curve models based on artificial neural networks (ANNs) and those based on fuzzy logic are also proposed. Some of the power curve models based on ANNs and fuzzy inference systems (FISs) are used as well as two new FISs with the proposed new heuristic. An initial pre-training is proposed, resulting from the characteristics derived from the expert inference followed by a transformation of a fuzzy Mamdani system into a fuzzy Sugeno system. Although the presented values by the error indicators are comparable, the results show that the new pre-trained FIS models have better precision compared with the ANN and FIS models. The comparative study is conducted in two wind farms located in northeastern Brazil. The proposed method is a relevant alternative to improve power curve approximation based on an FIS.

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