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Accelerating Monte Carlo Molecular Simulations Using Novel Extrapolation Schemes Combined with Fast Database Generation on Massively Parallel Machines

机译:在大型并行机上使用新颖的外推方案结合快速数据库生成来加速蒙特卡洛分子模拟

摘要

We introduce an efficient thermodynamically consistent technique to extrapolate and interpolate normalized Canonical NVT ensemble averages like pressure and energy for Lennard-Jones (L-J) fluids. Preliminary results show promising applicability in oil and gas modeling, where accurate determination of thermodynamic properties in reservoirs is challenging. The thermodynamic interpolation and thermodynamic extrapolation schemes predict ensemble averages at different thermodynamic conditions from expensively simulated data points. The methods reweight and reconstruct previously generated database values of Markov chains at neighboring temperature and density conditions. To investigate the efficiency of these methods, two databases corresponding to different combinations of normalized density and temperature are generated. One contains 175 Markov chains with 10,000,000 MC cycles each and the other contains 3000 Markov chains with 61,000,000 MC cycles each. For such massive database creation, two algorithms to parallelize the computations have been investigated.The accuracy of the thermodynamic extrapolation scheme is investigated with respect to classical interpolation and extrapolation. Finally, thermodynamic interpolation benefiting from four neighboring Markov chains points isimplemented and compared with previous schemes. The thermodynamic interpolation scheme using knowledge from the four neighboring points proves to be more accurate than the thermodynamic extrapolation from the closest point only, while both thermodynamic extrapolation and thermodynamic interpolation are more accurate than the classical interpolation and extrapolation.The investigated extrapolation scheme has great potential in oil and gas reservoir modeling.That is, such a scheme has the potential to speed up the MCMC thermodynamic computation to be comparable with conventional Equation of State approaches in efficiency. In particular, this makes it applicable to large-scale optimization of L-J model parameters for hydrocarbons and other important reservoir species. The efficiency of the thermodynamic dependent techniques is expected to make the Markov chains simulation an attractive alternative in compositional multiphase flow simulation.
机译:我们介绍了一种有效的热力学一致性技术,可以对Lennard-Jones(L-J)流体的压力和能量等归一化的规范化NVT系综平均值进行插值和插值。初步结果表明,在油气模型中有广阔的应用前景,在这些模型中,准确确定储层的热力学性质具有挑战性。热力学插值和热力学外推方案可从昂贵的模拟数据点预测不同热力学条件下的总体平均值。该方法在邻近的温度和密度条件下重新加权和重建先前生成的马尔可夫链的数据库值。为了研究这些方法的效率,生成了对应于归一化密度和温度的不同组合的两个数据库。一个包含175个马尔可夫链,每个链具有10,000,000个MC周期,另一个包含3000个马尔可夫链,每个链具有61,000,000个MC周期。对于如此庞大的数据库创建,研究了两种使计算并行化的算法。相对于经典内插和外推,研究了热力学外推方案的准确性。最后,实现了受益于四个相邻马尔可夫链点的热力学插值,并将其与以前的方案进行了比较。利用四个相邻点的知识进行的热力学插值方案比仅从最近点进行的热力学插值方法更准确,而热力学插值和热力学插值方法都比经典插值和外推方法更准确。也就是说,这种方案具有加速MCMC热力学计算的潜力,可以与传统的状态方程方法相媲美。特别是,这使其适用于烃和其他重要储层物种的L-J模型参数的大规模优化。热力学相关技术的效率有望使马尔可夫链模拟成为成分多相流模拟中有吸引力的替代方法。

著录项

  • 作者

    Amir Sahar Z.;

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  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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