4.7 Article

Active control method for the sinking of open caissons: A data-driven approach based on CNN and time series prediction

期刊

OCEAN ENGINEERING
卷 257, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.oceaneng.2022.111683

关键词

Open caisson; Active control method; Data-driven strategy; CNN; Time series prediction; Changtai Yangtze River Bridge Project

资金

  1. National Natural Science Foundation of China [51674239]

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This paper proposes a key index of open caisson sinking and establishes a time series prediction model of SEI based on convolutional neural network. It introduces an active control method with a data-driven strategy. The model is validated in a real project and shows reliability and practicability.
Open caissons are widely used in civil engineering as deep foundations and underground structures. It is necessary to control the sinking process of open caissons to achieve safe sinking. This paper proposes a key index of open caisson sinking, the sinking by earth excavation index (SEI). Then, a time series prediction model of SEI based on convolutional neural network (CNN) was established, and an active control method with a data-driven strategy was proposed based on this model. The proposed model was applied in the Changtai Yangtze River Bridge Project in China and was validated by field data. Finally, the effects of hyperparameters in the model were analysed, and a real-time SEI prediction was simulated to describe the practicability of the model. Results show that the proposed model is reliable and practicable in open caisson engineering, and the prediction accuracy is higher than that of other algorithms. Three hyperparameters have little effect on prediction accuracy, including the number of neurons in the fully connected layer, dropping probability of dropout and input length, while the prediction length has a strong influence. With strong objectivity and remarkable performance, the proposed method is conducive to ensuring the steady state and safety of open caissons.

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