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MPS-APO: a rapid and automatic parameter optimizer for multiple-point geostatistics

机译:MPS-APO:用于多点地统计的快速自动参数优化器

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Multiple-point statistics (MPS) have been widely used in Earth and environmental sciences because of their ability to generate realistic stochastic realizations of complex natural processes. The spatial patterns and statistical information required for MPS modeling are represented by a training image. However, each MPS algorithm has a specific set of parameters that have a direct impact on the quality of pattern reproduction and should be chosen prior to the modeling. While there are some general guidelines for some MPS algorithms, a general parameter interference methodology is currently lacking. To date, the common practice for finding optimal parameters is to carry out a sensitivity analysis, which can be cumbersome especially in complex applications. In this study, we propose the MPS Automatic Parameter Optimizer (MPS-APO), a generic method based on stochastic optimization to rapidly approximate optimal parameters for any MPS method and different types of settings. The MPS-APO formulates an objective function that quantifies spatial pattern reproduction for each set of parameters. The Simultaneous Perturbation Stochastic Approximation (SPSA) optimization method is used because of its computational efficiency, and also its ability to cope with the stochastic nature of the objective function. The optimization proceeds in two steps. The first step aims to optimize the parameters for the best quality regardless of computational cost. When no more improvement can be achieved, the second step minimizes the CPU cost without degrading the spatial structures reproduction attained in the first step. In this study, MPS-APO is performed on different pixel-based and patch-based MPS methods: SNESIM, FILTERSIM, Direct Sampling and Image Quilting. Test cases show that MPS-APO is a useful heuristic to automatically approximate optimal parameters for good patterns reproduction with minimal computational cost. Therefore, it can help non-expert users and increase the usability of MPS methods for practical applications.
机译:多点统计(MPS)由于能够生成复杂的自然过程的现实随机实现,因此已广泛用于地球和环境科学。 MPS建模所需的空间模式和统计信息由训练图像表示。但是,每个MPS算法都有一组特定的参数,这些参数对图案复制的质量有直接影响,因此应在建模之前进行选择。尽管对于某些MPS算法有一些通用指南,但目前缺少通用参数干扰方法。迄今为止,寻找最佳参数的常用方法是进行灵敏度分析,这在特别复杂的应用中尤其麻烦。在这项研究中,我们提出了MPS自动参数优化器(MPS-APO),这是一种基于随机优化的通用方法,可以快速估算任何MPS方法和不同类型设置的最佳参数。 MPS-APO制定了一个目标函数,可量化每组参数的空间图案再现。使用同时扰动随机逼近(SPSA)优化方法是因为它的计算效率高,并且具有应付目标函数的随机性的能力。优化分两步进行。第一步旨在优化参数以获得最佳质量,而与计算成本无关。当无法实现进一步的改进时,第二步将CPU成本降至最低,而不会降低第一步所获得的空间结构再现性。在这项研究中,MPS-APO是在不同的基于像素和基于补丁的MPS方法上执行的:SNESIM,FILTERSIM,直接采样和图像Qui缝。测试案例表明,MPS-APO是一种有用的启发式方法,可以以最小的计算成本自动近似最佳参数,以实现良好的图案再现。因此,它可以帮助非专业用户,并提高MPS方法在实际应用中的可用性。

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