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Constitutive Modeling of Cemented Tailings Backfill With Different Saturation States Based on Particle Swarm Optimization and Support Vector Machine

机译:基于粒子群优化和支持向量机的不同饱和状态水泥尾矿回填的组成型建模

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摘要

Mine tailings disposal has been a serious environmental issue for decades. The wide application of cemented tailings backfill (CTB) technology could indirectly abate tailings pollution by recycling the tailings for backfilling. CTB constitutive modeling helps with design by improving the understanding of its compressive behavior. This study focused on CTB intelligent constitutive modeling considering the coupled effects of the cement content and saturation state. An artificial intelligence model was established and utilized based on particle swarm optimization (PSO) and the support vector machine (SVM). CTB samples with different cement contents and water saturation states were prepared, and unconfined compression tests were conducted to obtain the dataset. We verified the feasibility of using integrated PSO and SVM (P-S) in the CTB constitutive model using experimental data. We analyzed model errors. The results showed that the CTB stress strain curve was complex and nonlinear and could be significantly affected by the saturation states. PSO was feasible and efficient for tuning the SVM hyperparameters. The lowest minimum MSE value of 0.0108 was achieved in the eighth iteration. The PSO and SVM modeling was indicated to be accurate in the CTB constitutive model (a high R-square value of 0.9935 and a low mean squared error value of 0.001664 were achieved on the testing set). This model may accelerate the CTB structure design process.
机译:矿山尾矿处置已经是几十年来的环境问题。胶结尾矿回填(CTB)技术的广泛应用可以通过回收尾矿来间接削减尾矿污染。 CTB本构建模通过改善对抗压缩行为的理解有助于设计。本研究专注于考虑到水泥含量和饱和状态的耦合效应的CTB智能本构模拟。建立并基于粒子群优化(PSO)和支持向量机(SVM)建立和使用人工智能模型。制备具有不同水泥含量和水饱和状态的CTB样品,并进行非整合的压缩测试以获得数据集。我们使用实验数据验证了CTB本构模型中使用集成PSO和SVM(P-S)的可行性。我们分析了模型错误。结果表明,CTB应力应变曲线是复杂的,非线性的,并且可能受到饱和状态的显着影响。 PSO是可行和有效的,用于调整SVM HyperParameters。在第八次迭代中实现了最低最低MSE值0.0108。 PSO和SVM建模显示在CTB本构模型中是准确的(在测试集上实现了0.9935的高R-Square值0.001664的低平均平方误差值)。该模型可以加速CTB结构设计过程。

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