日本風力エネルギー学会 論文集
Online ISSN : 2436-3952
Print ISSN : 2759-1816
ISSN-L : 2436-3952
45 巻, 3 号
選択された号の論文の3件中1~3を表示しています
論文
  • 佐藤 涼太, 前田 太佳夫, 鎌田 泰成, 岩本 大河, 直木 裕也, 岩井 憲一, 藤原 惇嗣, 細見 雅生
    2021 年 45 巻 3 号 p. 49-59
    発行日: 2021年
    公開日: 2021/12/26
    ジャーナル オープンアクセス
    Wind turbines in cold climate are defined as wind turbine operating in an environment where the temperature is 0℃ or lower, and/or operating with icing on wind turbine. Wind turbines in cold climate have been installed around 30% of worldwide installation of wind turbines. It is important for the wind turbines in cold climate to clarify the influence on the performance due to icing airfoil. When the temperature is -20℃ to 0℃, icing phenomenon occurs remarkably on the wind turbine blade, which causes the failure of the wind turbine by the fluctuation of the aerodynamic force on the blade. In this paper, the aerodynamic characteristics is clarified by the airfoil performance test of icing airfoil model in wind tunnel. With the use of these results, numerical analysis was carried out to clarify the influence of icing airfoil on the averaged output power and load on wind turbine. As result of the analysis, the output power is decreased by icing airfoil, the averaged moment of blade root is increased at high wind speed and the edgewise moment amplitude of blade root is increased.
  • 長谷川 隆徳, 緒方 淳, 村川 正宏, 飯田 誠, 小川 哲司
    2021 年 45 巻 3 号 p. 60-68
    発行日: 2021年
    公開日: 2021/12/26
    ジャーナル オープンアクセス
    This paper presents autoencoder (AE)/Gaussian mixture model (GMM) tandem connectionist anomaly detection for an efficient deployment of wind turbine anomaly detection systems. In this method, robust features are extracted using AE that is trained with a large variety of normal state data and taken as inputs to an anomaly identifier based on a GMM for a specific target machine. Since the AE is trained with data from various machines, the feature representations obtained using this AE can be robust against the difference in the machine types and operation conditions of wind turbines. Experimental comparisons conducted using vibration signals from wind turbines demonstrated that the proposed method achieved ideal anomaly detection, which detects anomalies without miss detections and with few false alarms. Even when the training data were small, the proposed system gave better performance than existing systems, showing its effectiveness in early operation.
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