High-Performance Inverse Modeling with Reverse Monte Carlo Simulations

Parallel Processing(2014)

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摘要
In the field of nanoparticle material science, X-ray scattering techniques are widely used for characterization of macromolecules and particle systems (ordered, partially-ordered or custom) based on their structural properties at the micro- and nano-scales. Numerous applications utilize these, including design and fabrication of energy-relevant nanodevices such as photovoltaic and energy storage devices. Due to its size, analysis of raw data obtained through present ultra-fast light beamlines and X-ray scattering detectors has been a primary bottleneck in such characterization processes. To address this hurdle, we are developing high-performance parallel algorithms and codes for analysis of X-ray scattering data for several of the scattering methods, such as the Small Angle X-ray Scattering (SAXS), which we talk about in this paper. As an inverse modeling problem, structural fitting of the raw data obtained through SAXS experiments is a method used for extracting meaningful information on the structural properties of materials. Such fitting processes involve a large number of variable parameters and, hence, require a large amount of computational power. In this paper, we focus on this problem and present a high-performance and scalable parallel solution based on the Reverse Monte Carlo simulation algorithm, on highly-parallel systems such as clusters of multicore CPUs and graphics processors. We have implemented and optimized our algorithm on generic multi-core CPUs as well as the Nvidia GPU architectures with C++ and CUDA. We also present detailed performance results and computational analysis of our code.
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关键词
C++ language,Monte Carlo methods,X-ray scattering,graphics processing units,macromolecules,nanoparticles,parallel algorithms,parallel architectures,C++,Nvidia GPU architectures,SAXS,X-ray scattering detectors,X-ray scattering techniques,energy storage devices,energy-relevant nanodevice fabrication,graphics processors,high-performance inverse modeling,high-performance parallel algorithms,inverse modeling problem,macromolecule characterization,material structural properties,multicore CPUs,nanoparticle material science,reverse Monte Carlo simulation algorithm,small angle X-ray scattering,structural fitting,structural properties
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