2024
DOI: 10.3390/s24092873
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Prediction Model of Coal Gas Permeability Based on Improved DBO Optimized BP Neural Network

Wei Wang,
Xinchao Cui,
Yun Qi
et al.

Abstract: Accurate measurement of coal gas permeability helps prevent coal gas safety accidents effectively. To predict permeability more accurately, we propose the IDBO-BPNN coal body gas permeability prediction model. This model combines the Improved Dung Beetle algorithm (IDBO) with the BP neural network (BPNN). First, the Sine chaotic mapping, Osprey optimization algorithm, and adaptive T-distribution dynamic selection strategy are integrated to enhance the DBO algorithm and improve its global search capability. The… Show more

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Cited by 4 publications
(1 citation statement)
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“…With the help of internal activation functions in the neurons, the BP neural network can approximate a variety of complex non-linear functions. The workflow of the BP neural network is as follows: signals propagate forward from the input layer, passing through multiple hidden layers, where the signal undergoes complex processing before reaching the output layer [16]. The data at the output layer are compared with the target data, generating an error value.…”
Section: Locust Density Inversion Modelmentioning
confidence: 99%
“…With the help of internal activation functions in the neurons, the BP neural network can approximate a variety of complex non-linear functions. The workflow of the BP neural network is as follows: signals propagate forward from the input layer, passing through multiple hidden layers, where the signal undergoes complex processing before reaching the output layer [16]. The data at the output layer are compared with the target data, generating an error value.…”
Section: Locust Density Inversion Modelmentioning
confidence: 99%