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Assessment of Molding Moisture and Suction on Resilient Modulus of Lime Stabilized Clayey Subgrade Soils

机译:石灰稳定的粘土基路基土的回弹模量对成型水分和吸力的评估

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A comprehensive laboratory study was undertaken to evaluate the effects of molding moisture and suction on the resilient modulus (M-R) and unconfined compressive strength (UCS) of lime stabilized clayey subgrade soils. Two subgrade soils, AASHTO class A-6 and A-7-6, are stabilized with three percentages (0, 5, and 7 %) of lime on the basis of pH test and used to prepare cylindrical MR samples at three moisture contents: optimum moisture content (OMC), dry state (OMC-2 %), and wet state (OMC +2 %). M-R tests on lime stabilized soils are conducted with a modified stress sequence incorporated in the AASHTO T307 procedure based on past literature and laboratory experience gained in this study. Test results revealed that the effects of moisture on M-R and UCS values of lime stabilized soils were less than those on untreated soils. M-R and UCS values increased due to lime treatment, but improvement varied with soil type and lime dose. A filter paper method was used to determine the total and matric suctions at different moisture states in this study. It was observed that osmotic suction increased to 15 % of the total suction due to lime treatment. Finally, an existing M-R constitutive model was revised by incorporating total suction. The revised model was shown to have better predictive capability over existing M-R models.
机译:进行了一项全面的实验室研究,以评估成型水分和吸力对石灰稳定的粘土基路基土的弹性模量(M-R)和无侧限抗压强度(UCS)的影响。在pH值测试的基础上,用3%(0、5%和7%)的石灰将两种路基土壤AASHTO A-6级和A-7-6稳定下来,并用于制备三种含水率的圆柱形MR样品:最佳水分含量(OMC),干态(OMC-2%)和湿态(OMC +2%)。根据过去的文献和本研究获得的实验室经验,对石灰稳定的土壤进行M-R试验,并采用AASHTO T307程序中引入的改进应力序列。测试结果表明,水分对石灰稳定土壤的M-R和UCS值的影响小于未处理土壤。 M-R和UCS值由于石灰处理而增加,但改善程度随土壤类型和石灰剂量而变化。在这项研究中,使用滤纸方法确定在不同水分状态下的总吸力和基质吸力。观察到,由于石灰处理,渗透抽吸增加到总抽吸的15%。最后,通过合并总吸力修改了现有的M-R本构模型。与现有的M-R模型相比,修改后的模型具有更好的预测能力。

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