利用pda试验结果和神经网络确定桩的承载力

IF 0.5 4区 工程技术 Q4 ENGINEERING, GEOLOGICAL Acta Geotechnica Slovenica Pub Date : 2020-01-01 DOI:10.18690/ACTAGEOTECHSLOV.17.2.34-45.2020
Saeed Ghaffarpour Jahrom, Mohammad Sharafuddin
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引用次数: 0

摘要

动荷载试验(PDA)是评估桩承载力的一种现场试验方法。该试验基于波传播理论,可以很好地估计桩的承载力,并对桩的健康状况进行评估。本研究利用100次不同桩、不同工程的动荷载试验结果,采用三种类型的人工神经网络(ANN)进行荷载估计。最初,感知器多层神经网络是最常用的神经网络之一。随后,将神经模糊网络用于神经模糊网络的组合,并在基于径向的神经网络的最后,将一个成功的网络用于非线性问题。在研究人员使用的不同神经网络模型中,多层感知器网络具有更好的性能。然而,其他使用的网络也被证明是成功的。最后,对不同的神经网络模型进行了比较,并在两个阶段中识别出了性能最好的神经网络。与传统的行为模型不同,基于神经网络的模型不解释输入参数如何影响输出。在本研究中,通过分析每一步引入的模型对最优结构的敏感性,我们试图部分回答这个问题。此外,在使用神经网络模型时,神经网络模型对用户的控制关系的提取和表示更加可靠,有利于神经网络模型在工程中的应用。在本研究中,使用了四个第一指标来评价和比较模型和结构。
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Determining the pile bearing capacity use of pda test results and neural networks
The dynamic loading or PDA test is one of the on-site experiments to estimate the bearing capacity of a pile. This test is based on the wave-propagation theory and can provide a good estimate of the bearing capacity of a pile as well as an assessment of the health of the pile. In this research, using the results of 100 dynamic loading tests carried out with different piles and projects, three types of artificial neural network (ANN) have been used to estimate the load. Initially, the perceptron multi-layer neural network was one of the most used neural networks. Subsequently, the neuro-fuzzy network is used in a combination of neuro-fuzzy networks and, at the end of the radial-based neural network, a successful network was used for non-linear problems. Between the different models of the neural network used by researchers, the multi-layered perceptron network has a better performance. However, other networks used have also proven successful. Finally, different models of the neural networks were compared and the network that has the best performance was identified in both phases. The models based on neural networks, unlike conventional behavioral models, do not explain how the input parameters affect the output. In this research, by analyzing the sensitivity to the optimal structure of the introduced models in each step, we have tried to partly answer this question. Also, the extraction and presentation of the relations governing a neural network model to the user is more reliable in the use of such models, which facilitates the application of such models in engineering works. In this research, four first indicators were used to evaluate and compare the models and structures.
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来源期刊
Acta Geotechnica Slovenica
Acta Geotechnica Slovenica 地学-工程:地质
CiteScore
1.20
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: ACTA GEOTECHNICA SLOVENICA aims to play an important role in publishing high-quality, theoretical papers from important and emerging areas that will have a lasting impact on fundamental and practical aspects of geomechanics and geotechnical engineering. ACTA GEOTECHNICA SLOVENICA publishes papers from the following areas: soil and rock mechanics, engineering geology, environmental geotechnics, geosynthetic, geotechnical structures, numerical and analytical methods, computer modelling, optimization of geotechnical structures, field and laboratory testing. The journal is published twice a year.
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