混凝土坝变形监测时序中异常突变值的优化诊断

Optimal diagnosis of abnormal mutation value in deformation monitoring sequence of concrete dam

  • 摘要: 混凝土坝变形监测时序因观测设施故障及人工采集等不确定因素而存有非正常突变现象,致使后续正反分析及综合评判等工作难度剧增。为此,在结合经验小波变换(Empirical Wavelet Transform, EWT)理论与局部离群因子(Local Outlier Factor, LOF)识别机制的基础上,通过引入箱形图方法重新定义检测模型的判断阈值,有效规避了人为主观性,据此构建了客观还原监测信息特征的异常点诊疗体系。工程实例分析表明,所提方案具有完备的理论支撑和优良的离群子集信号识别能力,适合复杂内外多源环境驱动下混凝土坝变形监测信号的前期优化处理。

     

    Abstract: The deformation monitoring sequence of concrete dam has abnormal mutation due to uncertain factors such as failure of observation facilities or manual collection, which increases the difficulty of subsequent analysis and comprehensive evaluation. Therefore, on the basis of empirical wavelet transform (EWT) theory and local outlier factor (LOF) recognition mechanism, the boxplot method is introduced to redefine the judgment threshold of the detection model, which effectively avoids many interference factors caused by human subjective setting. Based on this, an outlier diagnosis and treatment system is constructed to objectively restore the characteristics of monitoring information. The engineering example shows that the proposed scheme has accurate and excellent signal recognition ability of outlier subset and complete theoretical support, which is suitable for the early optimization of the deformation monitoring signal of concrete dam driven by complex internal and external multi-source environment.

     

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