The performance of rigid pavement is greatly affected by the properties of base/subbase as well as subgrade layer. However, the performance predicted by the AASHTOWare Pavement ME design shows low sensitivity to the properties of base and subgrade layers. To improve the sensitivity and better reflect the influence of unbound layers a new set of improved models i.e., resilient modulus (MR) and modulus of subgrade reaction (k-value) are adopted in this study. An Artificial Neural Network (ANN) model is developed to predict the modified k-value based on finite element (FE) analysis. The training and validation datasets in the ANN model consist of 27000 simulation cases with different combinations of pavement layer thickness, layer modulus and slab-base interface bond ratio. To examine the sensitivity of modified MR and k-values on pavement response, eight pavement sections data are collected from the Long-Term Pavement performance (LTPP) database and modeled by using the FE software ISLAB2000. The computational results indicate that the modified MR values have higher sensitivity to water content in base layer on critical stress and deflection response of rigid pavements compared to the results using the Pavement ME design model. It is also observed that the k-values using ANN model has the capability of predicting critical pavement response at any partially bonded conditions whereas the Pavement ME design model can only calculate at two extreme bonding conditions (i.e., fully bonding and no bonding).
翻译:硬路面的性能受到基底/底底底基和亚底层特性的极大影响。然而,AASHTOWare Pastement ME设计所预测的性能显示,对基层和亚底层特性的敏感度较低。为了提高敏感度并更好地反映无界层的影响,在本研究中采用了一套新的改良模型,即弹性模模模(MR)和亚底反应(k价值)模模模模(K-value),从长期模范铺面表现(LTPP)数据库中收集了八个路面部分数据,并且用FE软件IMLAB2000模型模型模型来预测修改的K值。AANN模型的培训和验证数据集对基底层厚度、层模模和衬底界面界面连接比,包括27000个模拟案例,同时结合了铺面厚层厚厚度、层模模模模模和基面连接面连接比的债券的精确值。在基础层设计中,采用精确面面面面面面面面压力的精确度和深度反应能力,将MUR值与基准段的精度比。