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Modeling the Mechanical Behavior of Carbonate Sands Using Artificial Neural Networks and Support Vector Machines

机译:使用人工神经网络和支持向量机对碳酸盐砂的力学行为建模

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摘要

Carbonate sands that are specific soils have some unusual characteristics, such as particle crushability and compressibility, that distinguish their behavior from other types of soil. Because of their large diversity, they have a wide range of mechanical behavior. Recently, there have been many attempts to predict the mechanical behavior of carbonate sands, but all these attempts have been focused on experimental and case studies of some specific soils, and there is still no unique method that can consider all types of carbonate sands behavior and describe their various aspects. In the present study, two artificial intelligence-based models, namely artificial neural networks and support vector machines are used together and comparatively to predict the mechanical behavior of different carbonate sands. The models were trained and tested using a database that included results from a comprehensive set of triaxial tests on three carbonate sands. The predictions of the proposed models were compared with the experimental results. The comparison of the results indicates that the proposed approaches were accurate and reliable in representing the mechanical behavior of various carbonate sands.
机译:作为特殊土壤的碳酸盐砂具有一些不寻常的特性,例如颗粒的可压性和可压缩性,从而使其行为与其他类型的土壤区分开。由于它们的多样性,它们具有广泛的机械性能。最近,已经进行了许多尝试来预测碳酸盐砂的力学行为,但是所有这些尝试都集中在对某些特定土壤的实验和案例研究上,并且仍然没有能够考虑所有类型的碳酸盐砂行为和特性的独特方法。描述他们的各个方面。在本研究中,两种基于人工智能的模型,即人工神经网络和支持向量机一起使用,并比较地预测了不同碳酸盐砂的力学行为。使用数据库对模型进行了训练和测试,该数据库包括在三种碳酸盐砂岩上进行的全面三轴测试的结果。将该模型的预测结果与实验结果进行了比较。结果的比较表明,所提出的方法在表示各种碳酸盐砂的力学行为方面是准确可靠的。

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