基于可解释PSO-BPNN的三元固废注浆材料力学性能预测

Prediction of mechanical properties of ternary solid waste grouting ma-terials based on interpretable PSO-BPNN

  • 摘要: 为高效预测三元固废地聚物注浆材料力学性能,本研究进行了不同配合比的三元固废地聚物注浆材料力学性能测试,利用反向传播神经网络(BPNN)模型,并采用粒子群算法(PSO)进行优化,结合SHAP(Shapley Additive exPlanations)方法进行可解释性分析。结果显示,矿渣含量与抗压强度呈显著正相关,赤泥含量则呈负相关,粉煤灰影响较小,激发剂浓度在28天龄期影响最显著。PSO-BPNN模型的性能优于BPNN,决定系数(R2)提高了0.75%。SHAP分析揭示,养护龄期和激发剂浓度是影响抗压强度的主要正向因素,赤泥含量对强度有显著负面影响。在未经训练的数据集上,PSO-BPNN在误差波动和预测精度方面均优于BPNN,PSO-BPNN可以为(GG)在力学性能方面提供精确的预测并对其配合比设计进行指导,对于工程实践具有重要意义。

     

    Abstract: In order to efficiently predict the mechanical properties of ternary solid waste geopolymer grouting materials, this study conducted tests on the mechanical properties of ternary solid waste geopolymer grouting materials with different mixing ratios, and utilized the back-propagation neural network (BPNN) model and optimized it using the particle swarm algorithm (PSO) in conjunction with the SHAP (Shapley Additive exPlanations) method for an interpretable interpretability analysis. The results showed that the slag content was significantly positively correlated with the compressive strength, while the red mud content was negatively correlated with the compressive strength, the fly ash had less effect, and the exciter concentration had the most significant effect at the age of 28 days. The PSO-BPNN model outperformed the BPNN, and the coefficient of determination (R2) was improved by 0.75%.The SHAP analysis revealed that the age of maintenance and the concentration of the exciter were the main positive fac-tors affecting the compressive strength, and the red mud content had a significant negative effect on the strength. content had a significant negative effect on strength. On the untrained dataset, PSO-BPNN outperforms BPNN in terms of error fluctuation and prediction accuracy. Therefore, PSO-BPNN can provide accurate prediction of (GG) in terms of mechanical properties and guide its proportion design, which is of great significance for engineering practice.

     

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