Support Vector Classifiers for Prediction of Pile Foundation Performance in Liquefied Ground During Earthquakes

IF 0.5 Q4 ENGINEERING, GEOLOGICAL
P. Samui, S. Bhattacharya, T. Sitharam
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引用次数: 3

Abstract

Collapse of pile-supported structures is still observed in liquefiable soils after most major earthquakes and remains a continuing concern to the geotechnical engineering community. Current methods for pile design in liquefiable soils concentrate on a bending mechanism arising from lateral loads due to inertia and/or soil movement (kinematic loads). Recent investigations demonstrated that a pile or pile group can become laterally unstable (buckling instability/ bifurcation) under the axial load (due to the dead load) alone if the soil surrounding the pile liquefies in an earthquake. This is due to the liquefaction-induced elimination of the soil bracings and the governing mechanism is similar to Euler’s buckling of unsupported struts. Analysed are 26 cases of pile foundation performance in liquefiable soils giving emphasis to the buckling instability using Support Vector Machine (SVM) method. SVM has recently emerged as an elegant pattern recognition tool. This tool has been used to classify pile performance against buckling failure. Each of the case studies reported is represented by four parameters: Effective buckling length of pile (Leff), the allowable load on the pile (P), Euler’s elastic critical load of the pile (Pcr) and minimum radius of gyration of the pile (rmin). The performance of the developed SVM is 100%.
地震液化地基桩基性能预测的支持向量分类器
在大多数大地震后,在可液化土壤中仍然观察到桩支撑结构的倒塌,这仍然是岩土工程界持续关注的问题。目前在可液化土壤中设计桩的方法集中在由惯性和/或土壤运动(运动荷载)引起的侧向荷载引起的弯曲机制上。最近的研究表明,如果桩周围的土壤在地震中液化,桩或桩群在轴向荷载(由于自重)下可能会发生侧向失稳(屈曲失稳/分岔)。这是由于液化导致土壤支撑的消除,其控制机制类似于euler无支撑支撑的屈曲。采用支持向量机方法对26例液化土中桩基的失稳特性进行了分析,重点分析了其屈曲失稳特性。支持向量机是最近出现的一种优雅的模式识别工具。该工具已用于对桩抗屈曲破坏性能进行分类。报告的每个案例研究都由四个参数表示:桩的有效屈曲长度(Leff),桩上的允许荷载(P),桩的euler弹性临界荷载(Pcr)和桩的最小旋转半径(rmin)。所开发的支持向量机的性能为100%。
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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来源期刊
CiteScore
1.90
自引率
25.00%
发文量
11
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