4.5 Article

Rockburst Intensity Level Prediction Method Based on FA-SSA-PNN Model

Journal

ENERGIES
Volume 15, Issue 14, Pages -

Publisher

MDPI
DOI: 10.3390/en15145016

Keywords

rock mechanics; factor analysis; sparrow search algorithm; probabilistic neural network; rockburst intensity level prediction

Categories

Funding

  1. National Natural Science Foundation of China [51934003]
  2. Yunnan major scientific and technological special project [202102AG050024]

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A rockburst intensity level prediction model based on FA-SSA-PNN is proposed to accurately and reliably predict rockburst disasters. The model shows high prediction accuracy and fast convergence, providing better guidance for rockburst prediction problems in deep rock projects.
To accurately and reliably predict the occurrence of rockburst disasters, a rockburst intensity level prediction model based on FA-SSA-PNN is proposed. Crding to the internal and external factors of rockburst occurrence, six rockburst influencing factors (sigma(theta), sigma(t), sigma(c), sigma(c)/sigma(t), sigma(theta)/sigma(c), W-et) were selected to build a rockburst intensity level prediction index system. Seventy-five sets of typical rockburst case data at home and abroad were collected, the original data were preprocessed based on factor analysis (FA), and the comprehensive rockburst prediction indexes, CPI1, CPI2, and CPI3, obtained after dimensionality reduction, were used as the input features of the SSA-PNN model. Sixty sets of rockburst case data were extracted as the training set, and the remaining 15 sets of rockburst case data were used as the test set. After the model training was completed, the model prediction results were analysed and evaluated. The research results show that the proposed rockburst intensity level prediction method based on the FA-SSA-PNN model has the advantages of high prediction accuracy and fast convergence, which can accurately and reliably predict the rockburst intensity level in a short period of time and can be used as a new method for rockburst intensity level prediction, providing better guidance for rockburst prediction problems in deep rock projects.

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