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An evaluation of noise reduction algorithms for particle-based fluid simulations in multi-scale applications

机译:多尺度应用中基于粒子的流体模拟的降噪算法评估

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Filtering of particle-based simulation data can lead to reduced computational costs and enable more efficient information transfer in multi-scale modelling. This paper compares the effectiveness of various signal processing methods to reduce numerical noise and capture the structures of nano-flow systems. In addition, a novel combination of these algorithms is introduced, showing the potential of hybrid strategies to improve further the de-noising performance for time-dependent measurements. The methods were tested on velocity and density fields, obtained from simulations performed with molecular dynamics and dissipative particle dynamics. Comparisons between the algorithms are given in terms of performance, quality of the results and sensitivity to the choice of input parameters. The results provide useful insights on strategies for the analysis of particle-based data and the reduction of computational costs in obtaining ensemble solutions. (C) 2016 The Authors. Published by Elsevier Inc.
机译:基于粒子的模拟数据的过滤可以减少计算成本,并在多尺度建模中实现更有效的信息传递。本文比较了各种信号处理方法减少数字噪声并捕获纳米流系统结构的有效性。此外,还介绍了这些算法的新颖组合,显示了混合策略有可能进一步改善针对时间的测量的降噪性能。该方法在速度和密度场上进行了测试,这些场是通过分子动力学和耗散粒子动力学进行的模拟获得的。在性能,结果质量和对输入参数选择的敏感性方面给出了算法之间的比较。结果为分析基于粒子的数据的策略和减少获得整体解决方案的计算成本提供了有用的见识。 (C)2016作者。由Elsevier Inc.发布

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