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Using high-frequency SCADA data for wind turbine performance monitoring: A sensitivity study

机译:使用高频SCADA数据进行风机性能监测:敏感性研究

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Intensive condition monitoring of wind generation plant through analysis of routinely collected SCADA data is seen as a viable means of forestalling costly plant failure and optimising maintenance through identification of failure at the earliest possible stage. The challenge to operators is in identifying the signatures of failure within data streams and disambiguating these from other operational factors. The well understood power curve representation of turbine performance offers an intuitive and quantitative means of identifying abnormal operation, but only if noise and artefacts of operating regime change can be excluded. In this paper, a methodology for wind turbine performance monitoring based on the use of high-frequency SCADA data is employed featuring state-of-the-art multivariate non-parametric methods for power curve modelling. The model selection considerations for these are examined together with their sensitivity to several factors, including site specific conditions, seasonality effects, input relevance and data sampling rate. The results, based on operational data from four wind farms, are discussed in a practical context with the use of high frequency data demonstrated to be beneficial for performance monitoring purposes whereas further attention is required in the area of expressing model uncertainty. (C) 2018 Elsevier Ltd. All rights reserved.
机译:通过分析常规收集的SCADA数据对风力发电厂进行集中状态监控,被认为是预防代价昂贵的发电厂故障并通过尽早识别故障来优化维护的可行方法。运营商面临的挑战是识别数据流中的故障特征,并将其与其他操作因素区分开。透彻理解的涡轮机性能曲线表示法提供了一种直观,定量的方法来识别异常运行,但前提是必须排除噪声和运行状态变化的假象。在本文中,采用了基于高频SCADA数据的风力发电机性能监测方法,该方法具有用于功率曲线建模的最新多元非参数方法。对这些模型选择的考虑因素以及它们对几个因素的敏感性进行了检查,包括特定地点的条件,季节性影响,输入相关性和数据采样率。基于来自四个风电场的运行数据,在实际环境中讨论了结果,并使用了高频数据,这些数据被证明对性能监控有利,而在表达模型不确定性方面则需要进一步关注。 (C)2018 Elsevier Ltd.保留所有权利。

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