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基于可解释PSO-BPNN的三元固废注浆材料力学性能预测

王家全 吴新彪 畅振超 唐毅

工程科学学报2025,Vol.47Issue(11):2236-2246,11.
工程科学学报2025,Vol.47Issue(11):2236-2246,11.DOI:10.13374/j.issn2095-9389.2025.02.07.001

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 materials based on interpretable PSO-BPNN

王家全 1吴新彪 1畅振超 2唐毅1

作者信息

  • 1. 广西科技大学土木建筑工程学院,柳州 545006||广西壮族自治区岩土灾变与生态治理工程研究中心,柳州 545006
  • 2. 广西壮族自治区岩土灾变与生态治理工程研究中心,柳州 545006||北投交通养护科技集团有限公司,南宁 530029
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摘要

Abstract

In order to efficiently predict the mechanical properties of ternary solid waste geopolymer grouting materials(Geopolymer Grouting Material,GGM),this study conducted tests on the mechanical properties of geopolymer grouting materials with different mix ratios.The experimental design included varying amounts of three solid waste materials:slag,red mud,and fly ash.Additionally,the influence of activator concentration and curing period on the mechanical properties was investigated.A back-propagation neural network(Back propagation neural network,BPNN)model was established,and the particle swarm optimization(Particle swarm optimization,PSO)algorithm was employed to optimize the BPNN model,thereby enhancing prediction accuracy.Furthermore,the SHAP(Shapley Additive exPlanations)method was utilized for an interpretability analysis of the model's predictions,clearly identifying the contributions of each variable to the compressive strength prediction.Correlation analysis indicates a significant positive correlation between slag content and compressive strength.Specifically,the slag content exhibits a significant positive correlation with compressive strength at different curing periods(3,7,28,56 d),with correlation coefficients of 0.260,0.215,0.348,and 0.326,respectively.In contrast,red mud content shows a significant negative correlation with compressive strength,reaching-0.556 at the 56th day.The excessive incorporation of red mud leads to a reduction in strength.The influence of fly ash on compressive strength was relatively minor,primarily observed at longer curing periods.The activator concentration had the most significant effect on compressive strength at 28 d,with its influence surpassing that of other variables.SHAP analysis further highlighted that curing period and activator concentration were the primary positive factors affecting compressive strength.As the curing period increased,the distribution of SHAP values shifted towards the positive region,with the promoting effect on strength becoming significantly more pronounced.Higher activator concentrations corresponded to larger positive SHAP values,indicating that the activator effectively accelerates the dissolution and reaction of active components in slag and fly ash,improving the material's density and strength.However,an excessive amount of activator may lead to adverse effects.Higher levels of fly ash and slag played a lesser role,but under certain conditions,slag had a positive effect on strength through the formation of C-S-H gels.At higher red mud content,SHAP values were concentrated in the negative region,reflecting a negative contribution,as the inert components in red mud hindered the hydration reaction and reduced strength.However,at lower red mud content,SHAP values were positive,suggesting a strength-enhancing effect.On the untrained dataset,the PSO-BPNN model outperformed the traditional BPNN in prediction accuracy.Specifically,the R2 value of the PSO-BPNN model improved by approximately 0.5%compared to BPNN,while the mean absolute error,mean squared error,and root mean squared error were reduced by approximately 11.8%,21.2%,and 11.3%,respectively.The error range and frequency of extreme errors were significantly reduced,indicating that the PSO-BPNN model exhibited greater stability in handling complex data and could effectively correct systematic biases.Its strong generalization capability allows it to maintain high prediction accuracy even when confronted with unknown data,providing reliable data support for the performance prediction and mix ratio design of geopolymer grouting materials.

关键词

地聚合物/注浆材料/力学性能/反向传播神经网络/粒子群优化算法

Key words

geopolymers/grouting materials/mechanical properties/backpropagation neural network/particle swarm optimization algorithm

分类

信息技术与安全科学

引用本文复制引用

王家全,吴新彪,畅振超,唐毅..基于可解释PSO-BPNN的三元固废注浆材料力学性能预测[J].工程科学学报,2025,47(11):2236-2246,11.

基金项目

国家自然科学基金资助项目(52468047) (52468047)

广西重点研发计划项目(桂科AB25069142) (桂科AB25069142)

广西自然科学基金重点项目(2022GXNSFDA035081) (2022GXNSFDA035081)

广西高等学校高水平创新团队及卓越学者计划项目(桂教人才[2020]6号) (桂教人才[2020]6号)

2022年度交通运输行业重点科技项目(2022-MS1-030) (2022-MS1-030)

广西科技大学研究生教育创新计划项目(GKYC202569) (GKYC202569)

工程科学学报

OA北大核心

2095-9389

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