计算机与现代化 ›› 2020, Vol. 0 ›› Issue (07): 1-5.doi: 10.3969/j.issn.1006-2475.2020.07.001

• 算法设计与分析 •    下一篇

基于EMD-GAELM-ARIMA算法的大坝变形预测

  

  1. (1.贵州大学矿业学院,贵州贵阳550025;2.中国电建贵阳勘测设计研究院工程科研院,贵州贵阳550081)
  • 出版日期:2020-07-06 发布日期:2020-07-15
  • 作者简介:徐肖遥(1995-),男,安徽淮北人,硕士研究生,研究方向:人工智能,大坝变形预测,E-mail: 407782602@qq.com; 张鹏飞(1966-),男,副教授,硕士生导师,研究方向:大地测量和工程测量。
  • 基金资助:
    国家自然科学基金资助项目(41701464); 贵州省科技厅联合资助项目(黔科合LH字[2014]7646); 贵州省科学技术基础研究计划项目(黔科合基础[2017]1054) 

Dam Deformation Prediction Based on EMD-GAELM-ARIMA Algorithm

  1. (1. College of Mining, Guizhou University, Guiyang 550025, China;
    2. Engineering Research Institute, China Electric Power Construction Guiyang Survey and Design Institute, Guiyang 550081, China)
  • Online:2020-07-06 Published:2020-07-15

摘要: 针对统计学模型难以很好地对非线性、非平稳的大坝变形做出预测的情况,引入人工智能算法,融合经验模态分解法(EMD)、遗传算法(GA)优化的极限学习机(ELM)和ARIMA误差修正模型,构建大坝变形预测模型。首先利用EMD进行监测数据的分解和重构,使其平稳化并得到有物理意义的本征模函数和残差序列;再用GAELM对分解结果进行分析预测;最后用ARIMA模型对预测结果的残差进行误差修正。以一混凝土堆石坝为例,利用优化算法构建的大坝变形预测模型对其进行分析预测,分析结果表明,相较于传统单一算法,EMD-GAELM-ARIMA模型算法预测精度更高,在大坝变形预测中具有可行性。


关键词: 大坝变形预测模型, 经验模态分解, 遗传算法, 极限学习机, ARIMA

Abstract: In view of the fact that it is difficult for statistical models to make good predictions of nonlinear and non-stationary dam deformation, artificial intelligence algorithms are induced. The empirical mode decomposition method (EMD), genetic algorithm (GA) optimized extreme learning machine (ELM), and ARIMA error correction model were used to construct a dam deformation prediction model. First this paper uses EMD to decompose and reconstruct the monitoring data to stabilize it and obtain eigenmode functions and residual sequences with physical significance; then uses GAELM to analyze and predict the decomposition results; finally, uses ARIMA model to correct errors. Taking a concrete rockfill dam as an example, the dam deformation prediction model constructed by the optimization algorithm is used to analyze and predict it. The analysis results show that the EMD-GAELM-ARIMA model algorithm has higher prediction accuracy than the traditional single algorithm. It is feasible in dam deformation prediction.

Key words: dam deformation prediction model, empirical mode decomposition, genetic algorithm, extreme learning machine, ARIMA

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