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Applying instantaneous SCADA data to artificial intelligence based power curve monitoring and WTG fault forecasting

机译:将瞬时SCADA数据应用于基于人工智能的功率曲线监控和WTG故障预测

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Power curve (PC) monitoring can be applied to evaluate the wind turbine generator (WTG) power output and detect deviations between the expected and the measured value, often a precursor of unexpected faults. In this research, the instantaneous SCADA data is used to show the fault forecast ability of Artificial Intelligence (AI) based PC monitoring of a pitch regulated WTG. The measured PCs illustrate that the instantaneous data is better than averaged data, widely used in the literature, to present the dynamics of WTG operation. The influence of ambient temperature, generator speed and pitch angle on WTG power output is analyzed using measured data. The analysis illustrates that the generator speed and pitch angle have a significant effect on WTG power generation. The performance of the proposed model option is compared against previously published option using the same data sets collected from a 2 MW Pitch Regulated WTG. The comparison is based on the mean absolute error (MAE), the root mean squared error (RMSE) and the correlation coefficient (R2). The result shows that models considering generator speed and pitch angle performs better with lowest MAE and RMSE and highest R2 values. A case study illustrated that the AI models, using wind speed, generator speed and pitch angle inputs, would have successfully detected a pitch fault due to the slip ring malfunction nearly 5 hours earlier than the existing fault detection mechanisms.
机译:功率曲线(PC)监视可用于评估风力涡轮发电机(WTG)的功率输出,并检测期望值和测量值之间的偏差,这些偏差通常是意外故障的先兆。在这项研究中,瞬时SCADA数据用于显示基于人工智能(AI)的变桨距WTG的PC监视的故障预测能力。测得的PC表明,瞬时数据要好于文献中广泛使用的平均数据,以展现WTG运行的动态。使用测量数据分析了环境温度,发电机转速和俯仰角对WTG功率输出的影响。分析表明,发电机转速和俯仰角对WTG发电有重要影响。使用从2 MW变桨调节的WTG收集的相同数据集,将建议的模型选件的性能与先前发布的选件进行比较。比较是基于平均绝对误差(MAE),均方根误差(RMSE)和相关系数(R2)。结果表明,考虑发电机速度和桨距角的模型在最低MAE和RMSE以及最高R2值下表现更好。案例研究表明,使用风速,发电机速度和桨距角输入的AI模型将比现有故障检测机制提前近5小时成功检测到由于滑环故障而导致的桨距故障。

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