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Semiparametric statistical analysis of the blade tip timing data for detection of turbine rotor speed instabilities

机译:叶片尖端正时数据的半参数统计分析,用于检测涡轮转子速度不稳定性

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摘要

In this paper, we propose an extension of an existing standard approach to the blade tip timing data when analyzing turbine rotor vibrations. Instabilities related to the non-constant trigonometric coefficients at prominent frequencies might not be noticed in the traditional analyses. Our methodology is based on time-varying coefficient statistical models, and hence it allows a full formalization of the estimation and other inferential tasks (uncertainty assessments, hypothesis tests etc.). First, we formulate a univariate generalized additive model that is useful for investigation of vibration behavior of individual blades. It can extract trajectories of the trigonometric coefficients. Using the trajectories, one can investigate time changes of power at a given frequency. In the second approach, we use a multivariate model for simultaneous assessment of all of the rotor blades. The model acknowledges similarity of the vibration behavior of closely located blades. It is formulated as a state-space model, and hence it allows for a wide range of prediction, smoothing, and filtering tasks. We illustrate the performance and practical usefulness of our models on real blade tip timing turbine monitoring data obtained from the Czech nuclear power plant Temelin.
机译:在本文中,当分析涡轮转子振动时,我们提出了对叶尖正时数据的现有标准方法的扩展。在传统分析中,可能不会注意到与突出频率处的非恒定三角系数相关的不稳定性。我们的方法基于时变系数统计模型,因此可以对估计和其他推论任务(不确定性评估,假设检验等)进行完全形式化。首先,我们制定了单变量广义加性模型,该模型可用于研究单个叶片的振动行为。它可以提取三角系数的轨迹。使用这些轨迹,可以研究给定频率下功率的时间变化。在第二种方法中,我们使用多元模型同时评估所有转子叶片。该模型承认紧密放置的叶片的振动行为相似。它被公式化为状态空间模型,因此可以进行广泛的预测,平滑和过滤任务。我们根据从捷克核电厂Temelin获得的真实叶尖正时涡轮监测数据说明了我们模型的性能和实用性。

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