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Model-based and fuzzy logic approaches to condition monitoring of operational wind turbines

机译:基于模型的模糊逻辑方法对运行中的风机进行状态监测

摘要

It is common for wind turbines to be installed in remote locations on land or offshore,leading to difficulties in routine inspection and maintenance.Further,wind turbines in these locations are often subject to harsh operating conditions. These challenges mean there is a requirement for a high degree of maintenance.The data generated by monitoring systems can be used to obtain models of wind turbines operating under different conditions,and hence predict output signals based on known inputs.A model-based condition monitoring system can be implemented by comparing output data obtained from operational turbines with those predicted by the models,detecting changes that could be due to the presence of faults. This paper discusses several techniques for model-based condition monitoring systems:linear models,artificial neural networks,and state dependent parameter‘pseudo’transfer functions.The models are identified using SCADA(Supervisory Control and Data Acquisition)data acquired from an operational wind firm.It is found that the multiple-input,single-output state dependent parameter method outperforms both multivariate linear and artificial neural network-based approaches. Subsequently,state dependent parameter models are used to develop adaptive thresholds for critical output signals.In order to provide an early warning of a developing fault,it is necessary to interpret the amount the threshold is exceeded together with the period of time over which this occurs;in this regard,a fuzzy logic-based inference system is proposed and demonstrated to be practically feasible.
机译:风力涡轮机通常安装在陆地或海上的偏远地区,导致日常检查和维护困难。此外,这些地区的风力涡轮机通常会经受恶劣的工作条件。这些挑战意味着需要高度维护。监视系统生成的数据可用于获取在不同条件下运行的风力涡轮机的模型,从而基于已知输入预测输出信号。基于模型的状态监视通过比较从运行中的涡轮机获得的输出数据与模型预测的输出数据,检测可能由于故障的存在而引起的变化,可以实施该系统。本文讨论了基于模型的状态监测系统的几种技术:线性模型,人工神经网络和状态相关的参数“伪”传递函数。使用从运营的风电公司获取的SCADA(监控和数据采集)数据来识别模型发现,多输入,单输出状态相关参数方法优于基于多元线性和人工神经网络的方法。随后,使用状态相关的参数模型来开发关键输出信号的自适应阈值。为了提供正在发生的故障的早期警告,有必要解释超过阈值的数量以及该阈值发生的时间段在这方面,提出了一种基于模糊逻辑的推理系统,并被证明是切实可行的。

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    Cross Philip; Ma Xiandong;

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  • 年度 2015
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