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首页> 外文期刊>European Journal of Environmental and Civil Engineering >Modelling dynamic behaviour of sand-waste tires mixtures using Neural Networks and Neuro-Fuzzy
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Modelling dynamic behaviour of sand-waste tires mixtures using Neural Networks and Neuro-Fuzzy

机译:使用神经网络和神经模糊对沙尘轮胎混合物的动态行为建模

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摘要

This investigation describes the results of a series of cyclic triaxial tests on sand-waste tires mixtures, and applications of Neural Networks (NN) and Neuro-Fuzzy (NF) for the prediction of damping ratio and shear modulus of the mixtures were tested. In the cyclic triaxial testings, shear modulus and damping ratio of the sand-waste tires mixtures at various ratios have been measured for a strain range of .0001% up to .04%. Test results show that the shear modulus and damping ratio of the mixtures are strongly influenced by the waste tire inclusions. It is seen that the greater the proportion of waste tire crumbs or tire buffings on the sand, the greater is the damping ratio and the less is the shear modulus, regardless of confining pressure. The input variables in the developed NN and NF models are the (1) waste tires contents which are 0, 10, 20 and 30, (2) waste tires types which are tire crumbs and tire buffings, (3) confining pressures which are 40, 100 and 200 kPa and (4) strain level and the outputs are (1) damping ratio and (ii) shear modulus. The performance of proposed NN models (R~2 = .99 for shear modulus, and R~2 = .98 for damping ratio) is observed to be more accurate than the NF models (R~2 = .96 for shear modulus, and R~2 = 0.97 for damping ratio).
机译:这项研究描述了一系列针对废轮胎混合物的循环三轴测试结果,并测试了神经网络(NN)和神经模糊(NF)在预测混合物的阻尼比和剪切模量方面的应用。在循环三轴测试中,已测量了各种比例的沙废轮胎混合物的剪切模量和阻尼比,其应变范围为.0001%至.04%。试验结果表明,废轮胎夹杂物对混合物的剪切模量和阻尼比有很大的影响。可以看出,不管围压如何,废轮胎碎屑或轮胎抛光剂在沙子上的比例越大,阻尼比就越大,剪切模量就越小。在已开发的NN和NF模型中,输入变量为(1)废轮胎的含量分别为0、10、20和30,(2)废轮胎类型为轮胎屑和轮胎抛光,(3)围压为40 ,100和200 kPa,以及(4)应变水平,输出为(1)阻尼比和(ii)剪切模量。观察到的拟议的NN模型(剪切模量为R〜2 = .99,阻尼比为R〜2 = .98)的性能比NF模型(剪切模量为R〜2 = .96)更精确。对于阻尼比,R〜2 = 0.97)。

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