A neural network approach for the reliability analysis on failure of shallow foundations on cohesive soils

IF 2.6 Q2 ENGINEERING, GEOLOGICAL International Journal of Geo-Engineering Pub Date : 2024-06-18 DOI:10.1186/s40703-024-00217-1
Ambrosios A. Savvides, Leonidas Papadopoulos
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Abstract

A collection of feed forward neural networks (FNN) for estimating the limit pressure load and the according displacements at limit state of a footing settlement is presented. The training procedure is through supervised learning with error loss function the mean squared error norm. The input dataset is originated from Monte Carlo simulations for a variety of loadings and stochastic uncertainty of the material of the clayey soil domain. The material yield function is the Modified Cam Clay model. The accuracy of the FNN’s is in terms of relative error no more than \(10^{-5}\) and this applies to all output variables. Furthermore, the epochs of the training of the FNN’s required for construction are found to be small in amount, in the order of magnitude of 90,000, leading to an alleviated data cost and computational expense. The input uncertainty of Karhunen Loeve random field sum appears to provide the most detrimental values for the displacement field of the soil domain. The most unfavorable situation for the displacement field result to limit displacements in the order of magnitude of 0.05 m, that may result to structural collapse if they appear to the founded structure. These series can provide an easy and reliable estimation for the failure of shallow foundation and therefore it can be a useful implement for geotechnical engineering analysis and design.

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粘性土浅层地基失效可靠性分析的神经网络方法
本文介绍了一系列前馈神经网络(FNN),用于估算极限压力荷载和基底沉降极限状态下的相应位移。训练过程通过监督学习进行,误差损失函数为均方误差准则。输入数据集来自对各种荷载和粘性土域材料随机不确定性的蒙特卡罗模拟。材料屈服函数是修正的 Cam Clay 模型。FNN 的精度是相对误差不超过 \(10^{-5}\),这适用于所有输出变量。此外,构建 FNN 所需的训练历元数量很少,约为 90,000 个,从而降低了数据成本和计算费用。Karhunen Loeve 随机场和的输入不确定性似乎为土壤域的位移场提供了最不利的数值。对位移场最不利的情况是产生 0.05 米数量级的极限位移,如果位移出现在地基结构上,可能会导致结构坍塌。这些序列可以为浅层地基的破坏提供简单可靠的估算,因此可以作为岩土工程分析和设计的有用工具。
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来源期刊
International Journal of Geo-Engineering
International Journal of Geo-Engineering ENGINEERING, GEOLOGICAL-
CiteScore
3.70
自引率
0.00%
发文量
10
审稿时长
13 weeks
期刊最新文献
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