模拟泥质岩石的复杂和长期膨胀行为

Doostmohammadi R. , Mutschler Th. , Osan C.
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引用次数: 2

摘要

泥质岩石的膨胀行为是一个复杂的现象,文献中使用了许多指标来确定。确定需要执行的所需建模索引需要在不同的实验室中进行昂贵的测试和大量的时间。在某些情况下,很难找到有效变量与膨胀势之间的关系。本文提出了一种模拟泥质岩石膨胀压力随时间变化的方法。利用溶胀压力测试前3天的短期溶胀势趋势,模拟几个月来记录的泥岩长期溶胀压力。人工神经网络(ANN)作为一种强大的工具被用于建模这种非线性和复杂的行为。该方法可以在无法获得所需指标和指标间的相关性时预测泥质岩的膨胀势。该方法便于在一个独特的配方下对所有研究样品进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling the complex and long term swelling behavior of argillaceous rocks

The swelling behavior of argillaceous rocks is a complex phenomenon and has been determined using a lot of indexes in the literature. Determining the required modeling indexes that need to be performed requires expensive tests and extensive time in different laboratories. In some of the cases, it is too difficult to find a relation between the effective variables and swelling potential. This paper suggests a method for modeling the time dependent swelling pressure of argillaceous rocks. The trend of short term swelling potential during the first 3 days of the swelling pressure testing is used for modeling the long term swelling pressure of mudstone that is recorded during months. The artificial neural network (ANN) as a power tool is used for modeling this nonlinear and complex behavior. This method enables predicting the swelling potential of argillaceous rocks when the required indexes and also correlation between them is unattainable. This method facilitates the model of all studied samples under a unique formulation.

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