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Prediction of unconfined compressive strength of soft grounds using computational intelligence techniques: A comparative study

机译:利用计算智能技术预测软土地基无侧限抗压强度的比较研究

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摘要

Cement stabilization is one of the commonly used techniques to improve the strength of soft ground/clays, generally found along coastal and low land areas. The strength development in cement stabilization technique depends on the soil properties, cement content, curing period and environmental conditions. For optimal and effective utilization of cement, there is a need to develop a mathematical model relating the gain in strength in terms of the variables responsible. The existing empirical model in the literature assumes linear variation of normalized strength with the logarithm of curing period and hence, different empirical models are required for different conditions of the same soil. Also, the accuracy of strength prediction is unsatisfactory. Due to unknown functional relationships and non-linearity in strength development, in this paper the computational intelligence techniques such as multilayer perceptron (MLP), radial basis function (RBF) and genetic programming (GP) are used to develop a mathematical model. To generate the mathematical model, an experimental study is conducted to obtain the strength of three inland soils namely, red earth (CL), brown earth (CH) and black cotton soil (CH) for different water contents, cement contents and curing periods. In order to generate a generic mathematical model using computational intelligence techniques, two saline soils (Ariake clay-3 and Ariake clay-4) and three inland soils are used. A detailed study of the relative performance of the computational intelligence techniques and the empirical model has been carried out.
机译:水泥稳定化是提高沿海或低陆地区常见的软土地基/粘土强度的常用技术之一。水泥稳定技术的强度发展取决于土壤特性,水泥含量,固化时间和环境条件。为了最佳有效地利用水泥,需要开发一种数学模型,该数学模型根据负责的变量将强度的增加联系起来。文献中现有的经验模型假设归一化强度随养护期的对数线性变化,因此,对于相同土壤的不同条件,需要不同的经验模型。另外,强度预测的准确性也不令人满意。由于强度关系中未知的函数关系和非线性,本文使用诸如多层感知器(MLP),径向基函数(RBF)和遗传规划(GP)的计算智能技术来建立数学模型。为了生成数学模型,进行了一项实验研究,以求出三种内陆土壤在不同含水量,水泥含量和固化时间下的强度,即红土(CL),棕土(CH)和黑棉土(CH)。为了使用计算智能技术生成通用数学模型,使用了两种盐渍土壤(Ariake clay-3和Ariake clay-4)和三种内陆土壤。已经对计算智能技术和经验模型的相对性能进行了详细研究。

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