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Dry unit weight of compacted soils prediction using GMDH-type neural network

机译:使用GMDH型神经网络的压实土预测的干燥单位重量

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摘要

Dry unit weight (gamma(d)) of soils is usually determined by in situ tests, such as rubber balloon, sand cone, nuclear density measurements, etc. The elastic wave method using compressional wave has been broadly used to determine various geotechnical parameters. In the present paper, the polynomial neural network (NN) is used to estimate the gamma(d) of compacted soils indirectly depending on P-wave velocity (V-p), moisture content (omega) and plasticity index (PI) as well as fine-grained particles (FC). Eight natural soil samples (88 data) were applied for developing a polynomial representation of model. To determine the performance of the proposed model, a comparison was carried out between the predicted and experimentally measured values. The results show that the developed GMDH-type NN has a great ability (R-2 = 0.942) to predict the gamma(d) of the compacted soils and is more efficient (53% to 73% improvement) than the previous reported methods. Finally, the derived model sensitivity analysis has been performed to evaluate the effect of each input variable on the proposed model output and shows that the P-wave velocity is the most influential parameter on the predicted gamma(d).
机译:土壤的干燥单位重量(γ(d))通常通过原位测试确定,例如橡胶球囊,砂锥,核密度测量等。使用压缩波的弹性波方法已经广泛地用于确定各种岩土地参数。在本文中,多项式神经网络(NN)用于间接地根据P波速度(VP),水分含量(ω)和可塑性指数(PI)以及细度间接地估计压实土壤的γ(D) - 甲状粒子(Fc)。应用八种天然土壤样品(88个数据),用于开发模型的多项式表示。为了确定所提出的模型的性能,在预测和实验测量值之间进行比较。结果表明,发育的GMDH型NN具有很大的能力(R-2 = 0.942),以预测压实的土壤的γ(d),比以前报道的方法更有效(53%至73%)。最后,已经执行派生模型敏感性分析以评估每个输入变量在所提出的模型输出上的效果,并表明p波速度是预测伽马(d)上最有影响力的参数。

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