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水力发电学报 ›› 2022, Vol. 41 ›› Issue (2): 102-112.doi: 10.11660/slfdxb.20220211

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基于时序分解与机器学习的渡槽变形预测

  

  • 出版日期:2022-02-25 发布日期:2022-02-25

Prediction of aqueduct deformation based on time series decomposition and machine learning

  • Online:2022-02-25 Published:2022-02-25

摘要: 南水北调工程中渡槽的安全监测对保证其长距离输水的稳定具有重要的意义。为解决目前渡槽变形预测中原型观测资料挖掘不充分的问题和进一步提升预测的精度,本文提出了一种基于时序分解和机器学习的渡槽变形预测方法。该方法首先使用奇异谱分析法将渡槽变形监测数据分解为周期分量、趋势分量和剩余分量三部分,使用核极限学习机对周期分量和趋势分量进行预测,使用长短期记忆网络结合相空间重构理论建立剩余分量的预测模型,将预测结果叠加,建立渡槽变形组合预测模型。以双洎河支渡槽的变形监测数据为例,验证了该模型的性能。结果表明,所提出的组合预测模型具有较高的精度,并且具有一定的鲁棒性,为渡槽的安全监测提供了新的技术方法。

关键词: 渡槽, 变形预测, 时间序列分解, 奇异谱分析, 核极限学习机, 长短期记忆网络

Abstract: Monitoring the safety of aqueducts is of great significance to ensure the stability of long-distance water delivery in the South-to-North Water Diversion Project. This paper develops a combined prediction model for aqueduct deformation based on time series decomposition and machine learning, aimed at the problem of insufficient prototype observation data mining in previous aqueduct deformation predictions of low accuracy. First, a singular spectrum analysis is used to decompose the deformation monitoring data of an aqueduct into three parts: trend, seasonal, and remainder components. Then, we adopt a kernel-based extreme learning machine to predict the seasonal and trend components, and construct a prediction model of the remainder components using the long short-term memory and phase-space reconstruction theory. These prediction results are superimposed to construct a combined aqueduct deformation prediction model through time series decomposition and machine learning. Against the deformation monitoring data from the Shuangjihe branch aqueduct, this combined model is verified. The results show it is a robust model with a prediction accuracy higher than that of conventional prediction models.

Key words: aqueduct, deformation prediction, time series decomposition, singular spectrum analysis;kernel-based extreme learning machine, long short-term memory

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