An experimental technique is presented to quantify the lateral restraint provided by a geogrid embedded in granular soil at the particle level. Repeated load triaxial tests were done on transparent sand specimens with geosynthetic inclusions simulating geogrids. Particle outlines on laser illuminated planes through the specimens were segmented using a deep learning-based segmentation algorithm. The particle outlines were characterized in terms of Fourier shape descriptors and tracked across sequentially captured images. The accuracy of the particle displacement measurements was validated against Digital Image Correlation (DIC) measurements. In addition, the method's resolution and repeatability is presented. Based on the measured particle displacements and rotations, a state boundary line between probable and improbable particle motions was identified for each test. The size of the zone of probable motions could be used to quantify the lateral restraint provided by the inclusions. Overall, the tests results revealed that the geosynthetic inclusions restricted both particle displacements and rotations. However, the particle displacements were found to be restrained more significantly than the rotations. Finally, a unique relationship was found between the magnitude of the permanent strains of the specimens and the size of the zone of probable motions.
翻译:实验用一种实验技术来量化颗粒水平颗粒土壤中嵌入的地质格系提供的横向限制; 对具有地球合成包容的透明沙标标进行重复的三轴试验; 利用深层次的基于学习的分解算法对通过试样的激光光平面的粒子轮廓进行分解; 粒子轮廓以Fourier形状分解器为特征,并跟踪按顺序拍摄的图像; 粒子移位测量的精确度根据数字图像相近度(DIC)测量结果得到验证; 此外,还介绍了该方法的分辨率和可重复性。 根据测量的粒子移位和旋转,为每项试验确定了可能和不可能的粒子移动之间的州界线。 可能运动的面积可以用来量化列入的横向限制。 总体而言,试验结果显示,地理合成包容限制了粒子移位和旋转。 然而,发现粒子移位的精确度比转动要大得多。 最后,发现,在概率区域大小与概率区域之间的独特关系。