Prediction of Gypseous Soil Settlement Using Artificial Neural Network (ANN)

Hala Habeeb Shallal, Qasim Adnan Aljanabi
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引用次数: 3

Abstract

Gypseous soil exhibits problematic geotechnical engineering properties as they expand, collapse, disperse, undergo excessive settlement, owns a distinct lack of strength, and it is soluble. Gypseous soil has a metastable structure, with dissolvable minerals with a minimal quantity of clay binding the particles together. When gypseous soil unsaturated, they are quite potent. When they are subjected to increased wetness, however, the excess water weakens or damages the bonds, resulting in shear failure and subsequent settlement. Estimating the settlement of shallow foundations on gypseous soils is a difficult topic that is still not fully understood. It is concluded that artificial neural network (ANN) is appeared to be viable solution since it has been successfully used in numerous prognosis applications in geotechnical engineering. In this research, the precipitation values of gypsum soil were predicted under the influence of the applied load using an artificial neural network. The study found that this model is very good in predicting precipitation and found a convergence between the real values and the predict values.
基于人工神经网络的石膏土沉降预测
石膏土表现出有问题的岩土工程性质,因为它们膨胀、崩塌、分散、经历过度沉降,具有明显的缺乏强度,而且它是可溶的。石膏土具有亚稳结构,可溶解的矿物质和极少量的粘土将颗粒结合在一起。当石膏土不饱和时,它们是相当有效的。然而,当它们受到更多的湿度时,多余的水会削弱或破坏粘结,导致剪切破坏和随后的沉降。估计石膏质土壤上浅地基的沉降是一个尚未完全了解的难题。人工神经网络(ANN)已成功地应用于岩土工程预测中,是一种可行的解决方案。本文采用人工神经网络对石膏土在外加荷载作用下的降水值进行了预测。研究发现,该模型对降水有很好的预测效果,并发现实际值与预测值之间存在收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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