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An improved simulated annealing algorithm for reconstructing 3D large-scale porous media

机译:一种改进的重建3D大型多孔介质的模拟退火算法

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摘要

Based on the morphological information obtained from 2D slice images of real porous media, an improved simulated annealing algorithm (SAA) was proposed to reconstruct 3D large-scale porous media, which are intractable to handle for conventional SAA. Three different statistical functions were introduced to characterize the morphological information of real sandstone, including the one-point probability function, the two-point probability function and the lineal-path function. By changing the update method of the two-point probability function and the lineal-path function, i.e., using incremental calculation instead of conventional global calculation, the efficiency of reconstructing 3D large-scale porous media was greatly improved. Besides, in the later stage of reconstruction that the basic structure of porous media had been formed, the pixel selection algorithm was performed to speed up the reconstruction process. To evaluate the accuracy of the improved SAA, the similarity between the 3D reconstructed volume and the reference image of prototype sandstone was examined. The results showed good agreement between the reconstructed model and the references. The efficiency of the improved SAA was verified by comparison with the conventional SAA, the results of which indicated that the improved SAA can significantly shorten the reconstruction time of 3D large-scale porous media.
机译:基于从真实多孔介质的2D切片图像获得的形态学信息,提出了一种改进的模拟退火算法(SAA)来重建3D大规模多孔介质,该介质是用于传统SAA的难以处理的。引入了三种不同的统计功能,以表征真实砂岩的形态信息,包括单点概率函数,两点概率函数和线路路径函数。通过改变双点概率函数的更新方法和线性路径函数,即,使用增量计算而不是传统的全局计算,大大提高了重建3D大规模多孔介质的效率。此外,在形成多孔介质的基本结构的重建阶段,执行像素选择算法以加速重建过程。为了评估改进的SAA的准确性,检查了3D重建体积与原型砂岩的参考图像之间的相似性。结果表明重建模型与参考之间的良好一致。通过与常规SAA进行比较验证了改进的SAA的效率,结果表明改进的SAA可以显着缩短3D大规模多孔介质的重建时间。

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