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首页> 外文期刊>Journal of Universal Computer Science >High-Performance Simulation of Drug Release Model Using Finite Element Method with CPU/GPU Platform
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High-Performance Simulation of Drug Release Model Using Finite Element Method with CPU/GPU Platform

机译:用CPU / GPU平台使用有限元方法的药物释放模型的高性能模拟

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his paper describes a hybrid CPU/GPU approach for solving a two-phase mathematical model numerically. The dynamic of drug release between the first phase (coating) and second phase (arterial tissue) is represented by a system of partial differential equations (PDEs). The system of equations is discretized by Finite Element Method. The whole discretized system involves a large sparse system of equation which requires a high computation. The CPU/GPU approach provides a platform to solve PDEs having extensive computations in parallel. Consequently, this platform can significantly reduce the solution times as compared to the implementation of CPU. This allows for more efficient investigation of different mathematical models, as well as, the governing parameters. In this paper, a significant parallel computing framework is presented to solve the governing equations numerically using the Graphics Processing Units (GPUs) with CUDA. This two-phase model investigates the impact of key parameters related to mass concentrations and drug release from tissue and coating layers. The identification and the role of major parameters such as (Filtration velocity, the ratio of accessible void volume to solid volume, the solid-liquid mass transfer rate) are tinted. Furthermore, the motivation and guidance for using parallel computing in order to handle computational complexities and large sparse system arise after discretizing the model equations are explained. We have designed a hybrid CPU/GPU solution of the proposed model by using Matlab. The parallel performance results show that CPU/GPU architecture is more efficient in large-scale problem simulations.
机译:他的论文描述了一种混合CPU / GPU方法,用于在数值上解决两相数学模型。第一相(涂层)和第二相(动脉组织)之间的药物释放的动态由部分微分方程(PDE)的系统表示。通过有限元方法离散化方程式。整个离散化系统涉及需要高计算的大稀疏等式系统。 CPU / GPU方法提供了一个平台,用于解决具有广泛计算的PDE并行。因此,与CPU的实现相比,该平台可以显着降低解决方案时间。这允许更有效地研究不同的数学模型,以及管理参数。在本文中,提出了一个显着的并行计算框架,以使用CUDA使用图形处理单元(GPU)在数值上进行数字地解决管理方程。该两相模型研究了与组织和涂层相关的关键参数与群众浓度和药物释放相关的影响。主要参数如(过滤速度,可偏转空隙率与固体体积的比例,固体液体传递率)的主要参数的鉴定和作用。此外,解释了使用平行计算的动机和指导,以便在离散化模型方程之后出现用于处理计算复杂性和大稀疏系统。我们使用MATLAB设计了所提出的模型的混合CPU / GPU解决方案。并行性能结果表明,CPU / GPU架构在大型问题模拟中更有效。

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