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Neural network modelling with autoregressive inputs for wind turbine condition monitoring

机译:用于风力涡轮机状态监测的自回归输入神经网络建模

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Artificial neural networks enjoy popularity among different areas of modelling, including financial decision making, medical diagnosis, visualisation, and process control. This paper presents potential problems with the inclusion of autoregressive terms in a neural network model with specific reference to an application to wind turbine condition monitoring. The model's ability to detect anomalies is explored by employing 10-minute supervisory control and data acquisition (SCADA) data from a commercial wind turbine gearbox. The issues associated with the inclusion of autoregressive inputs are assessed through an investigation of the weighting parameters for each neuron in the hidden and output layers and the outputs from these neurons.
机译:人工神经网络在不同的建模领域享有普及,包括财务决策,医疗诊断,可视化和过程控制。本文介绍了在神经网络模型中包含自动增加术语的潜在问题,具体参考风力涡轮机状态监测。通过采用来自商业风力涡轮机齿轮箱的10分钟监督控制和数据采集(SCADA)数据,探讨了模型检测异常的能力。通过对隐藏和输出层中的每个神经元的加权参数和这些神经元的输出进行评估,评估与归类输入相关的问题。

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