土钉-花岗岩残积土界面抗剪强度水弱化累积效应试验研究及预测模型OA
Experimental study and prediction model for cumulative water-weakening effects on shear strength along nail-granite residual soil interface
土钉支护是粤港澳大湾区花岗岩残积土边坡最常见的加固型式之一.大湾区降雨频繁,土钉-花岗岩残积土界面存在干湿循环效应,界面抗剪强度逐渐减弱,且这一减弱效应随着循环次数的增加而累积,致使边坡安全性降低.该界面强度在长期干湿循环作用下的弱化累积规律尚不明确.鉴于此,开展了大量高干湿循环次数(100次)下小型与大型直接剪切试验,分析了同等竖向应力条件下钉-土界面黏聚力、摩擦角、抗剪强度等随干湿循环次数和界面饱和度的变化关系,并量化了钉-土界面的弱化累积效应.试验表明,界面表观黏聚力虽然在前10次干湿循环作用下快速弱化,之后弱化速率趋于平缓,但长期的弱化累积量仍占比较大.界面摩擦角随干湿循环次数增大未呈现规律性变化.建立了钉-土界面抗剪强度弱化累积预测神经网络模型,并对其准确性进行了量化评估与验证.分析表明,所建立的神经网络模型整体误差小于 10%,且预测精度离散性低.研究成果为粤港澳大湾区花岗岩残积土边坡土钉支护的长期稳定性评估及边坡灾变预测提供了理论支撑.
Soil nailing reinforcement is a widely used reinforcement method for the granite residual-soil slopes in the Guangdong-Hong Kong-Macao Greater Bay Area.The region experiences frequent rainfall,and the interface between soil nails and granite residual soil is subject to wet-dry cyclic effects,gradually weakening the interface shear strength.This weakening effect accumulates with increasing cycles,leading to reduced slope stability.However,the cumulative weakening of the interface shear strength under long-term wet-dry cycles remains unclear.To address this,a series of small and large-scale direct shear tests was conducted under high wet-dry cycling conditions(up to 100 cycles)to analyze variations in cohesion,friction angle,shear strength,and other parameters of the nail-soil interface,considering the number of wet-dry cycles and interface saturation under consistent vertical stress conditions.The cumulative weakening effect of the nail-soil interface was quantified.Experimental results indicate that the apparent cohesion of the interface weakens rapidly during the first 10 cycles,but the rate of weakening stabilizes afterward.However,the total accumulated weakening remains significant.The friction angle of the interface did not exhibit a regular pattern of change as the number of wet-dry cycles increased.A neural network model was developed to predict the cumulative weakening of the shear strength of the nail-soil interface,and its accuracy was quantitatively evaluated and validated.The analysis reveals that the overall error of the neural network model is less than 10%,with low variability in prediction accuracy.The findings of this study provide theoretical support for assessing the long-term stability and predicting slope failure in soil nail reinforcement of the granite residual soil slopes in the Guangdong-Hong Kong-Macao Greater Bay Area.
林沛元;刘彤;杨翔云;丁庆峰;袁勋
中山大学 土木工程学院,广东 广州 510275中山大学 隧道工程灾变防控与智能建养全国重点实验室,广东 广州 510275中山大学 土木工程学院,广东 广州 510275中山大学 土木工程学院,广东 广州 510275中山大学 土木工程学院,广东 广州 510275
建筑与水利
土钉支护花岗岩残积土钉-土界面干湿循环剪切强度弱化累积神经网络
soil nailinggranite residual soilnail-soil interfacewet-dry cyclesshear strengthcumulative weakeningneural network
《岩土力学》 2026 (1)
229-244,16
国家自然科学基金资助项目(No.52008408)广东省"珠江人才计划"引进创新创业团队项目(No.2021ZT09G087). This work was supported by the National Natural Science Foundation of China(52008408)and the Department of Science and Technology of Guangdong Province(2021ZT09G087).
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