机理与数据融合的风机主轴受力预测与更新

PREDICTION AND UPDATE OF MAIN SHAFT FORCE OF WIND TURBINE BASED ON MECHANISM AND DATA FUSION

  • 摘要: 为实时监测风机主轴受力状态,本文构建了机理与数据融合的自适应更新预测模型。首先,采用“物理基准+偏差补偿”策略,通过有限元机理模型提供预测基准,结合基于实测数据的数据驱动模型补偿偏差,以克服单一模型的局限。其次,引入具备可变遗忘因子的增量学习机制,在线学习新数据以更新网络参数,缓解长期服役中性能退化问题。验证表明,主轴内力预测误差小于3%,且更新机制确保了长期预测精度。

     

    Abstract: To monitor the force state of the main shaft of wind turbine in real time, the paper constructs an adaptive update prediction model that integrates mechanism and data. Firstly, adopting a "physical-baseline plus deviation-compensation" strategy, the finite element mechanism model is used to provide the prediction reference value , and the data-driven model based on the measured data is combined to compensate for the deviation, thereby overcoming the limitations of a single model. Secondly, an incremental learning method with a variable forgetting factor is implemented. This mechanism enables online learning of new data to update the network parameters, thereby alleviating the performance degradation problem during long-term operation. Validation results demonstrate that the prediction error of the main shaft internal force is stable within 3%, and the update mechanism ensures the long-term prediction accuracy.

     

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