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Hybrid artificial intelligence approach based on metaheuristic and machine learning for slope stability assessment: A multinational data analysis

机译:基于元启发式和机器学习的混合人工智能方法用于边坡稳定性评估:跨国数据分析

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Slope stability assessment is a critical research area in civil engineering. Disastrous consequences of slope collapse necessitate better tools for predicting their occurrences. This research proposes a hybrid Artificial Intelligence (AI) for slope stability assessment based on metaheuristic and machine learning. The contribution of this study to the body of knowledge is multifold. First, advantages of the Firefly Algorithm (FA) and the Least Squares Support Vector Classification (LS-SVC) are combined to establish an integrated slope prediction model. Second, an inner cross-validation with the operating characteristic curve computation is embedded in the training process to reliably construct the machine learning model. Third, the FA, an effective and easily implemented metaheuristic, is employed to optimize the model construction process by appropriately selecting the LS-SVM's hyper-parameters. Finally, a dataset that contains 168 real cases of slope evaluation, recorded in various countries, is used to establish and confirm the proposed hybrid approach. Experimental results demonstrate that the new hybrid Al model has achieved roughly 4% improvement in classification accuracy compared with other benchmark methods. (C) 2015 Elsevier Ltd. All rights reserved.
机译:边坡稳定性评估是土木工程中的关键研究领域。边坡坍塌的灾难性后果需要更好的预测其发生的工具。这项研究提出了一种基于元启发式和机器学习的混合人工智能(AI)用于边坡稳定性评估。这项研究对知识体系的贡献是多重的。首先,结合萤火虫算法(FA)和最小二乘支持向量分类(LS-SVC)的优势,以建立一个综合的坡度预测模型。其次,在训练过程中嵌入具有操作特征曲线计算的内部交叉验证,以可靠地构建机器学习模型。第三,通过适当选择LS-SVM的超参数,FA是一种有效且易于实现的元启发式算法,用于优化模型构建过程。最后,使用包含在不同国家/地区记录的168个实际边坡评估案例的数据集来建立和确认所提出的混合方法。实验结果表明,与其他基准方法相比,新的混合Al模型在分类精度上提高了约4%。 (C)2015 Elsevier Ltd.保留所有权利。

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