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SCALABLE SYSTEM AND METHOD FOR FORECASTING WIND TURBINE FAILURE WITH VARYING LEAD TIME WINDOWS

机译:随时间变化的风窗预测风轮机故障的可伸缩系统和方法

摘要

An example method utilizing different pipelines of a prediction system, comprises receiving failure data, and asset data from SCADA system(s), receiving and dividing historical sensor data from sensors of components of wind turbines into different classes of different lead times, training a set of models to predict faults for each component using the historical sensor data and lead times with a deep neural network, evaluating each model of a set using standardized metrics, comparing evaluations of each model of a set to select a model with preferred lead time and accuracy, receive current sensor data from the sensors of the components, apply the selected model(s) to the current sensor data to generate a component failure prediction, compare the component failure prediction to a threshold, and generate an alert and report based on the comparison to the threshold.
机译:利用预测系统的不同管道的示例方法包括:从SCADA系统接收故障数据和资产数据,从风力涡轮机组件的传感器接收历史传感器数据并将其划分为不同类别的不同提前期,训练一组使用历史传感器数据和交货时间以及深度神经网络来预测每个组件的故障的模型,使用标准化指标评估一组模型的每个模型,比较一组模型的每个模型的评估结果,以选择具有最佳交付周期和准确性的模型,从组件的传感器接收当前传感器数据,将所选模型应用于当前传感器数据以生成组件故障预测,将组件故障预测与阈值进行比较,并根据比较结果生成警报并进行报告达到阈值。

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