Estimative of shaft and tip bearing capacities of single piles using multilayer perceptrons

IF 1.1 Q4 ENGINEERING, GEOLOGICAL
Luciana Amâncio, Silvrano Adonias Dantas Neto, Renato Cunha
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引用次数: 1

Abstract

There are an increasing number of studies that use the artificial neural networks (ANN) as a prediction tool in the field of foundations with satisfactory results. In this paper, multilayer perceptrons are used to develop prediction models for the shaft and tip bearing capacities of single piles based on a supervised training using the error back propagation algorithm. Results from static load tests carried out on 95 instrumented single piles executed in different regions of Brazil were used in the ANN modelling. The prediction models of shaft and tip bearing capacities of single piles were obtained portraying indicated in the validation phase determination coefficients equal to 95% and 99%, respectively. To demonstrate their applicability and efficiency, such models were used to estimate the bearing capacity of single piles unused in the models’ development, as well as groups of two and three piles. The results demonstrated that the neuron models were much closer to the values of the bearing capacities measured in single pile tests and groups of piles, than the estimated results using semi-empirical methods. As a result of overestimating the predicted bearing capacities in relation to the results of the load tests, it is recommended to use models applying reduction factors of 0.88 for single piles, and 0.75 for groups of up to three piles.
用多层感知器估算单桩的桩身和桩端承载力
将人工神经网络(ANN)作为地基预测工具的研究越来越多,并取得了满意的结果。本文基于误差反向传播算法的监督训练,利用多层感知器建立了单桩桩身和桩顶承载力的预测模型。在巴西不同地区进行的95个仪器单桩静载试验结果用于人工神经网络建模。建立了单桩桩身承载力和桩顶承载力预测模型,验证阶段确定系数分别为95%和99%。为验证模型的适用性和有效性,分别对模型开发过程中未使用的单桩、二桩组和三桩组进行了承载力估算。结果表明,神经元模型比半经验方法的估计结果更接近于单桩试验和群桩的承载力实测值。由于与荷载试验结果相比,对预测承载力的估计过高,建议对单桩使用折算系数为0.88的模型,对最多三桩的组桩使用折算系数为0.75的模型。
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来源期刊
Soils and Rocks
Soils and Rocks ENGINEERING, GEOLOGICAL-
CiteScore
1.00
自引率
20.00%
发文量
49
期刊介绍: Soils and Rocks publishes papers in English in the broad fields of Geotechnical Engineering, Engineering Geology and Environmental Engineering. The Journal is published in April, August and December. The journal, with the name "Solos e Rochas", was first published in 1978 by the Graduate School of Engineering-Federal University of Rio de Janeiro (COPPE-UFRJ).
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