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Groutability estimation of grouting processes with cement grouts using Differential Flower Pollination Optimized Support Vector Machine

机译:利用微分花授粉优化支持向量机估算水泥浆灌浆过程的灌浆能力

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摘要

This research presents a soft computing methodology for groutability estimation of grouting processes that employ cement grouts. The method integrates a hybrid metaheuristic and the Support Vector Machine (SVM) with evolutionary input factor and hyper-parameter selection. The new prediction model is constructed and verified using two datasets of grouting experiments. The contribution of this study to the body of knowledge is multifold. First, the efficacies of the Flower Pollenation Algorithm (FPA) and the Differential Evolution (DE) are combined to establish an integrated metaheuristic approach, named as Differential Flower Pollenation (DFP). The integration of the FPA and the DE aims at harnessing the strength and complementing the disadvantage of each individual optimization algorithm. Second, the DFP is employed to optimize the input factor selection and hyper-parameter tuning processes of the SVM based groutability prediction model. Third, this study conducts a comparative work to investigate the effects of different evaluation functions on the model performance. Finally, the research findings show that the new integrated framework can help identify a set of relevant groutability influencing factors and deliver superior prediction performance compared with other state-of-the-art approaches. (C) 2016 Elsevier B.V. All rights reserved.
机译:这项研究提出了一种软计算方法,用于估算采用水泥浆的灌浆过程的灌浆能力。该方法将混合元启发式算法和支持向量机(SVM)与进化输入因子和超参数选择集成在一起。使用两个注浆实验数据集构建并验证了新的预测模型。这项研究对知识体系的贡献是多重的。首先,将花粉传粉算法(FPA)和微分进化(DE)的功效结合起来,建立了一种综合的元启发式方法,称为微分花粉传粉(DFP)。 FPA和DE的集成旨在利用每个优化算法的优势并弥补其缺点。其次,DFP用于优化基于SVM的灌浆性预测模型的输入因子选择和超参数调整过程。第三,本研究进行了一项比较工作,以研究不同评估功能对模型性能的影响。最后,研究结果表明,与其他最新方法相比,新的集成框架可以帮助确定一组相关的可灌浆性影响因素,并提供出色的预测性能。 (C)2016 Elsevier B.V.保留所有权利。

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