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Principal components in multivariate control charts applied to data instrumentation of DAMS

机译:应用于DAMS数据仪表的多元控制图中的主要组件

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Hydroelectric plants are monitored by a high number of instruments that assess various quality characteristics of interest that have an inherent variability. The readings of these instruments generate time series of data on many occasions have correlation. Each project of a dam plant has characteristics that make it unique. Faced with the need to establish statistical control limits for the instrumentation data, this article makes an approach to multivariate statistical analysis and proposes a model that uses principal components control charts and statistical and to explain variability and establish a method of monitoring to control future observations. An application for section E of the Itaipu hydroelectric plant is performed to validate the model. The results show that the method used is appropriate and can help identify the type of outliers, reducing false alarms and reveal instruments that have higher contribution to the variability.
机译:水电厂受到大量仪器的监视,这些仪器评估具有固有可变性的各种目标质量特征。这些仪器的读数在许多场合下产生的时间序列数据具有相关性。大坝工厂的每个项目都有使其独特的特征。面对建立仪器数据的统计控制极限的需求,本文提出了一种多元统计分析的方法,并提出了一个使用主成分控制图和统计数据并解释可变性的模型,并建立了一种监控方法以控制未来的观察。对伊泰普水电站E段的应用进行了验证。结果表明,所使用的方法是合适的,并且可以帮助识别异常值的类型,减少错误警报,并揭示对变异性有较大贡献的工具。

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