离群值
预警系统
估计员
异常检测
数据挖掘
稳健统计
数据集
计算机科学
区间(图论)
异常(物理)
置信区间
安全监测
可靠性(半导体)
统计
人工智能
数学
量子力学
电信
生物
组合数学
物理
生物技术
功率(物理)
凝聚态物理
作者
Xing Li,Yanling Li,Xiang Lü,Yongfei Wang,Han Zhang,Peng Zhang
标识
DOI:10.1177/1475921719864265
摘要
Anomaly recognition and early warning of monitoring data are of great significance in the field of modern dam safety management. Multidimensional least-squares regression model with the Pauta criterion is a well-known traditional method, but it is easy to misjudge the normal value and miss the outliers. Thereby, an online robust recognition and early warning model combining robust statistics and confidence interval is proposed to detect outliers. The threshold [Formula: see text] is set based on the derived confidence interval [Formula: see text] and the scale estimator [Formula: see text] (derived from the location M-estimator). Monitoring data obtained from a gravity dam and a rockfill dam were taken as examples to demonstrate the robust recognition and early warning model. The results show that the proposed method can effectively improve the reliability of anomaly recognition and early warnings, which is valuable in engineering applications.
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