Monitoring model group of seepage behavior of earth-rock dam based on the mutual information and support vector machine algorithms

Zhenxiang Jiang
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Abstract

The establishment of a high-precision piezometric water level monitoring model ensures the safe operation of earth-rock dams. The hysteresis effect of the upstream water level and rainfall should be considered during modeling. In the traditional method, the average factors are used to express this effect, and linear regression modeling is adopted. These factors reduce the accuracy of the model. In this paper, the mutual information (MI) and support vector machine (SVM) algorithms are proposed. MI has a powerful correlation analysis capability, and it is innovatively used to address hysteresis effects. SVM has a strong nonlinear modeling ability, and it is used as a modeling algorithm. During this study, it was found that the lag time of rainfall varied. In view of this characteristic, the concept of an innovative model group, which is an important extension of the traditional single model, is proposed. In the example, the mean square error (MSE) is used as the precision index. Compared with the traditional single model established by linear regression, the MSE of the MI–SVM model group can be reduced by approximately 60.98%–68.75%. Compared with the model group established by linear regression, the MSE of the MI–SVM model group can be reduced by approximately 41.28%–45.45%. The new method effectively improves the accuracy of the model and can precisely monitor the seepage state of the dam. Moreover, it is beneficial for improving the level of dam safety management and can be extended to other fields involving hysteresis effects and nonlinear modeling.
基于互信息和支持向量机算法的土石坝渗流行为监测模型组
建立高精度压水监测模型可确保土石坝的安全运行。建模时应考虑上游水位和降雨的滞后效应。传统方法使用平均系数来表示这种效应,并采用线性回归模型。这些因素降低了模型的精度。本文提出了互信息(MI)和支持向量机(SVM)算法。MI 具有强大的相关性分析能力,并被创新性地用于解决滞后效应。SVM 具有很强的非线性建模能力,被用作建模算法。本研究发现,降雨的滞后时间是变化的。针对这一特点,提出了创新模型组的概念,这是对传统单一模型的重要扩展。在实例中,采用均方误差(MSE)作为精度指标。与线性回归建立的传统单一模型相比,MI-SVM 模型组的 MSE 可减少约 60.98%-68.75% 。与线性回归建立的模型组相比,MI-SVM 模型组的 MSE 降低了约 41.28%-45.45%。新方法有效提高了模型的准确性,可精确监测大坝的渗流状态。此外,它还有利于提高大坝安全管理水平,并可推广到其他涉及滞后效应和非线性建模的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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