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Determination of soil-water retention curve: an artificial intelligence-based approach

机译:土壤水保留曲线的测定:基于人工智能的方法

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Soil Water Retention Curve (SWRC) is a fundamental relationship in unsaturated soil mechanics, knowledge of which is essential for determining major mechanical and hydraulic properties of unsaturated soils. There are several empirical, semi-empirical and physically-based models which have been proposed to date for estimating SWRC. While the physically-based models which employ the basic soil characteristics such as grain-size and pore-size distributions are regarded superior to purely empirical models, their Achilles’ heel is the several simplifying assumptions based on which these models are constructed, thereby, restricting their applications and influencing their accuracy. Given the complexity of the soil porous structure, one may resort to the new inference techniques rather than mechanistic modelling to find the relationship among soil physical characteristics and the retention properties. Therefore, an alternative approach to purely empirical relationships as well as physically-based and conceptual models for determining SWRC is the use of Artificial Intelligence (AI) based techniques to acquire a relationship for SWRC based on the soil basic properties, especially grain size distribution and porosity. Among AI-based methods, Multi-Gene Genetic Programming (MGGP), often used to establish a close form equation for a complex physical system, offers a suitable alternative to the current approaches. In this study, a database compromising of 437 soils (containing various soil types, namely, sand, clay, silt, loam, silt loam, clay loam, sandy loam, sandy clay loam, silty clay loam, silty clay, and loamy sand soils) was used along with MGGP to establish a relationship among suction, saturation, porosity and grain size distribution. The proposed equation had a reasonable agreement with the experimental data compared to the other grain-based and physically-based models.
机译:土壤水保留曲线(SWRC)是不饱和土部力学中的基本关系,知识,这对于确定不饱和土壤的主要机械和液压性能至关重要。有几种经验,半经验和物理基础的模型,已提出估计SWRC。虽然采用晶粒尺寸和孔径分布等基础土壤特性的物理基础型被认为优于纯度的经验模型,但它们的阿基里斯的鞋跟是基于该模型构造的几种简化假设,从而限制了这些模型他们的应用和影响他们的准确性。鉴于土壤多孔结构的复杂性,人们可以采用新推理技术而不是机械模型,以找到土壤物理特性和保留性能之间的关系。因此,用于确定SWRC的纯粹经验关系以及用于确定SWRC的物理和概念模型的替代方法是使用基于人工智能(AI)的技术,以基于土壤碱性特性,尤其是晶粒尺寸分布来获取SWRC的关系。孔隙度。在基于AI的方法中,通常用于建立复杂物理系统的闭合形式方程的多基因遗传编程(MGGP)提供了对电流方法的合适替代方案。在本研究中,数据库损害了437个土壤(含有各种土壤类型,即沙子,粘土,淤泥,泥土,淤泥壤土,粘土壤土,砂质壤土,砂质粘土壤土,粉质粘土壤土,粉质粘土和壤土土壤)与MGGP一起使用,建立吸力,饱和,孔隙率和晶粒尺寸分布之间的关系。与其他基于谷物和物理基础的模型相比,所提出的等式与实验数据有合理的协议。

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