|Table of Contents|

Research on prediction of compressive strength of cable grouts based on SSA-BP(PDF)

《建筑科学与工程学报》[ISSN:1673-2049/CN:61-1442/TU]

Issue:
2025年03期
Page:
115-125
Research Field:
建筑材料
Publishing date:

Info

Title:
Research on prediction of compressive strength of cable grouts based on SSA-BP
Author(s):
BU Liangtao1 YE Haoyan1 DU Guoqiang2 HOU Qi3
(1. College of Civil Engineering, Hunan University, Changsha 410082, Hunan, China; 2. Department of Civil Engineering, The University of Hong Kong, Hong Kong 999077, China; 3. Hunan Hongli Civil Engineering Inspection and Testing Co., Ltd., Changsha 410082, Hunan, China)
Keywords:
cable grout sparrow search algorithm BP neural network compressive strength prediction ultrasonic method surface hardness method
PACS:
TU528
DOI:
10.19815/j.jace.2023.12056
Abstract:
In order to achieve accurate prediction of compressive strength of grout, sparrow search algorithm(SSA)was introduced to optimize the initial weights and thresholds of BP neural network. Surface hardness method and ultrasonic testing experiments were designed and carried out using 108 sets of test data as samples, and a SSA-BP neural network prediction model for compressive strength of grout containing 2-node input layer, 9-node hidden layer, and 1-node output layer was established. The prediction results were compared with BP neural network, optimized BP neural network by genetic algorithm(GA)and strength measurement formula. The effects of different combinations of input parameters on the prediction effect of SSA-BP model were discussed. The results show that the mean square error(MSE)of SSA-BP model is reduced by 53.23% and 26.86% compared with BP model and GA-BP model, and the single training time is reduced by 34.40% compared with GA-BP model. Compared to the strength formula, the coefficient of determination R2 between predicted and measured values is increased from 0.937 to 0.975, and the MSE and mean absolute error(MAE)are decreased by 19.81% and 7.20%, respectively. Although the error accuracy of SSA-BP model with a single input parameter is reduced, it still has good generalization ability. SSA-BP model is able to better mine the data information of input and output parameters, and it is more advantageous than the traditional method in terms of the goodness of fit and prediction accuracy, which can accurately predict the compressive strength of grouts, and it provides a new method for predicting the performance of cable grouts.

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Last Update: 2025-06-01