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Improving the prediction of ground motion parameters based on an efficient bagging ensemble model of M5 ' and CART algorithms

机译:基于M5'和购物车算法的高效袋综合模型,提高地面运动参数预测

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摘要

In the present study, an efficient bagging ensemble model based on two well-known decision tree algorithms, namely, M5' and Classification and Regression Trees (CART) is utilized so as to estimate the peak time-domain strong ground motion parameters. Four different predictive models, namely, CART, Ensemble M5', Ensemble CART, and Ensemble M5' + CART are developed to evaluate Peak Ground Acceleration, Peak Ground Velocity, and Peak Ground Displacement. A big database from the Pacific Earthquake Engineering Research Center is employed so as to develop the proposed models. Earthquake magnitude, earthquake source to site distance, average shear-wave velocity, and faulting mechanisms are considered as the predictive parameters. The superior performances of the developed models are observed in the validation against the most recent soft computing based models available in the specialized literature. Parametric as well as sensitivity analyses are carried out to ensure the robustness of the predictive models in discovering the physical concept latent in the nature of the problem. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本研究中,利用基于两个众所周知的决策树算法,即M5'和分类和回归树(推车)的高效袋装集合模型,以估计峰时域强的地面运动参数。开发了四种不同的预测模型,即购物车,集合M5',集合购物车和集合M5'+推车,以评估峰值接地加速度,峰值接地速度和峰值接地位移。从太平洋地震工程研究中心的一个大数据库受雇,以开发所提出的模型。地震幅度,地震源到地点距离,平均剪切波速度和故障机制被认为是预测参数。在专业文献中可用的最新软计算基于型号的验证中观察到开发模型的优越性。进行参数以及敏感性分析,以确保预测模型在发现问题本质中的物理概念潜伏的鲁棒性。 (c)2018 Elsevier B.v.保留所有权利。

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