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An approach for self evolving neural network based algorithm for fault prognosis in wind turbine

机译:一种自转神经网络基于神经网络的故障预后算法的方法

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In recent years Supervisory Control and Data Acquisition (SCADA) system has been used to monitor the condition of wind turbine components. SCADA being an integral part of wind turbines comes at no extra cost and measures an array of signals. This paper proposes to use artificial neural networks (ANN) algorithm for analysis of SCADA data for condition monitoring of components. The first step to build an ANN model is to create the training data set. Here an automated process to decide the training data set has been presented. The approach reduces the number of samples in the training data set compared to the conventional method of hand picking the data set. Further the approach describes how the ANN model could be kept in tune with the changes in the operating conditions of the wind turbine by updating the ANN model. The fault prognosis obtained from the model can be used to optimize the maintenance scheduling activity.
机译:近年来,监督控制和数据采集(SCADA)系统已被用于监测风力涡轮机部件的条件。 SCADA是风力涡轮机的一个组成部分,无需额外成本并测量信号阵列。本文建议使用人工神经网络(ANN)分析SCADA数据的分析,以进行组件的条件监测。构建ANN模型的第一步是创建训练数据集。这里提出了一种决定培训数据集的自动化进程。与传统的手采摘数据集的方法相比,该方法减少了训练数据集中的样本数量。此外,该方法描述了如何通过更新ANN模型来将ANN模型保持符合风力涡轮机的操作条件的变化。从模型获得的故障预后可用于优化维护调度活动。

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