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首页> 外文期刊>Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers >Simulation of population balance model-based particulate processes via parallel and distributed computing
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Simulation of population balance model-based particulate processes via parallel and distributed computing

机译:通过并行和分布式计算模拟基于人口平衡模型的颗粒过程

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摘要

Population Balance Models (PBMs), a class of integro partial differential equations, are utilized for simulating dynamics of numerous particulate systems. PBMs describe the time evolutions and distributions of many particulate processes and their efficient and quick simulation are critical for enhanced process control and optimization, especially for real-time applications. However, their intensive computational resource requirement is largely a prohibitive factor in the utility of PBMs for control and optimization. This paper describes how distributed computing systems may be leveraged to execute PBM-based simulations thus achieving time savings, using MATLAB's Distributed Computing Toolbox. A parallel computing algorithm was developed for a three dimensional and four dimensional population balance model with built-in constructs such as spmd that ran efficiently on a cluster of two quad-core machines linked via a gigabit ethernet cable. Speedup of 6.2 and 5.7 times were achieved with 8 workers, over an un-parallelized code, for a 3 and 4 dimensional PBM respectively. Evaluations on work efficiency and scalability further affirm the algorithms' respectable performance on larger clusters despite significant memory transfer overheads.
机译:人口平衡模型(PBM)是一类整数偏微分方程,用于模拟众多微粒系统的动力学。 PBM描述了许多微粒过程的时间演变和分布,它们的高效和快速仿真对于增强过程控制和优化(尤其是对于实时应用)至关重要。但是,它们大量的计算资源需求在很大程度上限制了PBM用于控制和优化的实用性。本文介绍了如何利用MATLAB的Distributed Computing Toolbox来利用分布式计算系统执行基于PBM的仿真,从而节省时间。针对具有内置结构(例如spmd)的三维和四维人口平衡模型,开发了一种并行计算算法,该结构在通过千兆位以太网电缆链接的两台四核计算机的群集上有效运行。对于一个3维和4维PBM,使用8个工人以无并行代码实现了6.2和5.7倍的加速。尽管存在显着的内存传输开销,但对工作效率和可伸缩性的评估进一步肯定了该算法在较大群集上的出色表现。

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