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Contribution of two artificial intelligence techniques in predicting the secondary compression index of fine‑grained soils

机译:两种人工智能技术在预测细粒土壤二次压缩指数中的贡献

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Fine soils have the particularity of producing very slow settlement over time, particularly secondary settlement, also known as creep. The coefficientC(alpha)that characterizes the creep phenomenon seems difficult to evaluate in the laboratory and in situ. Two approaches are proposed in this article for a better and faster prediction of that coefficient. The first approach is based on machine learning using multi-gene genetic programming, and the second one uses hybridization of particle swarm optimization algorithms and artificial neural networks. A regression analysis allowed identifying the determinant parameters to be used in the calculations. A database from several sites, and containing 203 samples, was utilized. The findings showed that a good agreement exists between the predicted and measured values. This also indicates that these two techniques can be quite interesting for engineers when they have to design works on compressible soils.
机译:细土具有产生非常缓慢的沉降的特殊性,特别是二次沉降,也称为蠕变。表征蠕变现象的系数(alpha)似乎难以在实验室和原位中进行评估。本文提出了两种方法,以更好,更快地预测该系数。第一种方法是基于使用多基因遗传编程的机器学习,第二种方法使用粒子群优化算法和人工神经网络的杂交。回归分析允许识别在计算中使用的确定参数。使用来自多个站点的数据库,并包含203个样本。研究结果表明,预测和测量值之间存在良好的一致性。这也表明,当必须设计适用于可压缩土壤时,这两种技术对于工程师来说都非常有趣。

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