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Estimating Dynamic Characteristics of Gravel-Tire Chips Mixtures Using Artificial Intelligence Techniques

机译:使用人工智能技术估算砾石轮胎芯片混合物的动态特性

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摘要

Scrap Tire Derived Geo-Materials (TDGM) mixed with soil are often being used as environmentally friendly granular materials in sustainable construction of civil engineering projects for reducing dynamic loads acting on geo-structures and soil liquefaction remediation purposes. Predicting dynamic properties of TDGM-soil mixture is a complicated task due to the numbers of factor involved in soil-TDGM mixture. This study presents application of artificial intelligence technique in estimating dynamic characteristics of granular mixture of Gravel and Tire chips (GTCM). Support Vector Regression (SVR) and Artificial Neural Networks (ANN) were used for predicting shear modulus and damping ratio of GTCM. Shear modulus and damping ratio models were developed using ANN and AVR techniques. The models were trained and tested using a database that included results from a set of laboratory tests on the GTCM. Stress controlled cyclic triaxial tests were conducted on specimens of gravel and tire chips with different volumetric portions of gravel in mixture (GF). The tests were performed on GTCM specimens at an initial relative density of 50% under different initial effective confining pressures. Test results have shown that shear modulus and damping ratio of the granular mixtures are remarkably influenced by volumetric fraction of gravel in GTCM. Furthermore, shear modulus was found to increase with the mean effective confining pressure and gravel fraction in the mixture. It was found that a feed-forward multilayer perceptron model with back-propagation training algorithm have better performance in predicting complex dynamic characteristics of granular mixture than SVR one.
机译:废旧轮胎衍生与土壤混合岩土材料(TDGM)经常被用来作为环境友好型颗粒状物料土木工程项目的可持续建筑减少作用于地质结构和土壤液化整治的目的动态负载。预测TDGM土混合物的动态特性是一个复杂的任务,由于因子的参与土壤TDGM混合物的号码。在估计砾石和轮胎芯片(GTCM)的粒状混合物的动态特性人工智能技术的这项研究提出申请。支持向量回归(SVR)和人工神经网络(ANN)是用于预测剪切模量和阻尼GTCM的比率。剪切模量和阻尼比模型使用ANN和AVR的技术开发的。对模型进行训练和使用,包括从一组在GTCM实验室测试结果的数据库进行测试。应力控制循环三轴测试在在混合物(GF)的砾石的不同的体积部分砾石和轮胎碎片试样进行。试验是在50%下不同初始有效围压的初始相对密度上GTCM标本进行。测试结果表明,剪切模量和颗粒混合物的阻尼比被显着地由在GTCM砾石的体积分数的影响。此外,剪切模量,发现增加与混合物中的平均有效围压和砾石分数。据发现,前馈多层感知器与反向传播训练算法模型对预测比SVR一种颗粒状混合物的复杂动态特性更好的性能。

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