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Prediction of elastic compressibility of rock material with soft computing techniques

机译:用软计算技术预测岩石材料的弹性可压缩性

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摘要

Mechanical and physical properties of sandstone are interesting scientifically and have great practical significance as well as their relations to the mineralogy and pore features. These relations are however highly nonlinear and cannot be easily formulated by conventional methods. This paper investigates the potential of the technique named as the relevance vector machine (RVM) for prediction of the elastic compressibility of sandstone based on its characteristics of physical properties. Based on the fact that the hyper-parameters may have effects on the RVM performance, an iteration method is proposed in this paper to search for optimal hyper-parameter value so that it can produce best predictions. Also, the qualitative sensitivity of the physical properties is investigated by the backward regression analysis. Meanwhile, the hyper-parameter effect of the RVM approach is discussed in the prediction of the elastic compressibility of sandstone. The predicted results of the RVM demonstrate that hyper-parameter values have evident effects on the RVM performance. Comparisons on the results of the RVM, the artificial neural network and the support vector machine prove that the proposed strategy is feasible and reliable for prediction of the elastic compressibility of sandstone based on its physical properties. (C) 2014 Elsevier B.V. All rights reserved.
机译:砂岩的力学和物理性质在科学上是令人感兴趣的,并且具有重要的实际意义以及它们与矿物学和孔隙特征的关系。然而,这些关系是高度非线性的,并且不能通过常规方法容易地表达。本文研究了名为“相关向量机”(RVM)的技术基于其物理特性而预测砂岩弹性可压缩性的潜力。基于超参数可能对RVM性能产生影响的事实,本文提出了一种迭代方法来寻找最优的超参数值,从而可以产生最佳的预测结果。此外,通过向后回归分析研究了物理性质的定性敏感性。同时,在预测砂岩弹性压缩率时,讨论了RVM方法的超参数效应。 RVM的预测结果表明,超参数值对RVM性能具有明显的影响。通过对RVM,人工神经网络和支持向量机的结果进行比较,证明了所提出的策略基于其物理性质预测砂岩的弹性可压缩性是可行和可靠的。 (C)2014 Elsevier B.V.保留所有权利。

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