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Prediction of geotechnical properties of treated fibrous peat by artificial neural networks

机译:用人工神经网络预测处理过的纤维泥炭的岩土性能

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This paper concentrates on measuring the geotechnical properties of cement peat mixed with different dosages of well-graded sand as filler. Several geotechnical tests, namely unconfined compression strength (UCS), California bearing ratio (CBR) and compaction, were performed on the treated fibrous peat samples. The filler was used in a wide range of 50 to 400kg/m(3) of wet peat. In addition, time-dependent changes of geotechnical properties of treated peat were also studied after 14, 28 and 90 days of air curing. Besides, different artificial neural networks trained by a back-propagation algorithm (ANN-BP) and particle swarm optimization method (ANN-PSO) were used to estimate the UCS of stabilized fibrous peat. Results indicate that after a 90-day curing period, the UCS and CBR of treated samples with 300-kg/m(3) cement only, increased by a factor as high as 8.54 and 13.66, respectively, compared to untreated peat. Besides, in the compaction tests, adding filler content to the cement peat increased the maximum dry density (MDD) significantly. In addition, the results of soft computing techniques indicated that the performance indices of the ANN-PSO model was better compared to the ANN-BP model. Finally, sensitivity results showed that the filler content and curing time were the most influential factors on estimating UCS.
机译:本文着重于测量掺入不同剂量高等级砂子的水泥泥炭的岩土性能。对处理过的纤维泥炭样品进行了多项岩土测试,即无侧限抗压强度(UCS),加利福尼亚承压比(CBR)和压实。填料的使用范围为50到400kg / m(3)的湿泥煤。此外,还研究了经过14、28和90天的空气固化后,处理过的泥炭的岩土性能随时间的变化。此外,还采用了不同的人工神经网络,分别采用反向传播算法(ANN-BP)和粒子群优化方法(ANN-PSO)进行训练,以估算稳定化纤维泥炭的UCS。结果表明,在90天的养护期后,与未处理的泥炭相比,仅用300 kg / m(3)水泥处理的样品的UCS和CBR分别增加了高达8.54和13.66倍。此外,在压实测试中,向水泥泥炭中添加填料含量会显着提高最大干密度(MDD)。此外,软计算技术的结果表明,与ANN-BP模型相比,ANN-PSO模型的性能指标更好。最后,敏感性结果表明,填料含量和固化时间是估算UCS的最大影响因素。

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