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From SCADA to lifetime assessment and performance optimization: how to use models and machine learning to extract useful insights from limited data

机译:从SCADA到终身评估和性能优化:如何使用模型和机器学习从有限数据中提取有用的见解

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A common challenge in the decision making process regarding operation and life extension of existing wind farms is the lack of accurate information about the actual dynamic states of the turbines in terms of its operation from inception. SCADA records normally contain limited number of channels, and are not necessarily kept for the entire operating period of the wind farm; design and site data may be outdated or inaccessible. Nevertheless, as long as a minimum amount of information is available, statistical analysis and augmentation with artificial intelligence based simulation can be used to supplement the information. In the present study, we delineate a combination of data analysis, physical modelling and machine learning, that produces a detailed assessment of the operating conditions experienced by a wind farm and establishes the corresponding power performance, loads and fatigue damage accumulation.
机译:关于现有风电场的运作和生命延伸的决策过程中的共同挑战是缺乏关于涡轮机的实际动态状态的准确信息,从初始的操作方面。 SCADA记录通常包含有限数量的通道,并且不一定保存在风电场的整个运行期;设计和站点数据可能已过时或无法访问。然而,只要可用的最小信息量,可以使用与人工智能的仿真的统计分析和增强来补充信息。在本研究中,我们描绘了数据分析,物理建模和机器学习的组合,它可以详细评估风电场经历的操作条件,并建立相应的功率性能,负载和疲劳损坏积累。

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