2024
DOI: 10.3390/ma17102198
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Research on Deformation Prediction of VMD-GRU Deep Foundation Pit Based on PSO Optimization Parameters

Ronggui Liu,
Qing Zhang,
Feifei Jiang
et al.

Abstract: As a key guarantee and cornerstone of building quality, the importance of deformation prediction for deep foundation pits cannot be ignored. However, the deformation data of deep foundation pits have the characteristics of nonlinearity and instability, which will increase the difficulty of deformation prediction. In response to this characteristic and the difficulty of traditional deformation prediction methods to excavate the correlation between data of different time spans, the advantages of variational mode… Show more

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Cited by 3 publications
(1 citation statement)
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“…Mambuscay et al [ 28 ] employed a random forest model to directly predict Vickers hardness values from scanned indentation images, eliminating the need for diagonal measurements. Liu et al [ 29 ] constructed a VMD-GRU model to predict the deformation of deep excavations, with experimental results confirming the model’s accuracy and effectiveness. If the processing results can be predicted based on process parameters, the machine learning model will effectively assist in optimizing process parameters.…”
Section: Introductionmentioning
confidence: 94%
“…Mambuscay et al [ 28 ] employed a random forest model to directly predict Vickers hardness values from scanned indentation images, eliminating the need for diagonal measurements. Liu et al [ 29 ] constructed a VMD-GRU model to predict the deformation of deep excavations, with experimental results confirming the model’s accuracy and effectiveness. If the processing results can be predicted based on process parameters, the machine learning model will effectively assist in optimizing process parameters.…”
Section: Introductionmentioning
confidence: 94%