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FENZI: GPU-enabled Molecular Dynamics Simulations of Large Membrane Regions based on the CHARMM force field and PME

机译:Fenzi:基于Charmm力场和PME的大型膜区的支持GPU的分子动力学模拟

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When studying membrane-bound protein receptors, it is necessary to move beyond the current state-of-the-art simulations that only consider small membrane patches and implicit solvent. Limits of traditional computer platforms negatively impact the model's level of realism and the computational scales achievable. On the other hand, multi-core platforms such as GPUs offer the possibility to span length scales in membrane simulations much larger and with higher resolutions than before. To this end, this paper presents the design and implementation of an advanced GPU algorithm for Molecular Dynamics (MD) simulations of large membrane regions in the NVT, NVE, and NPT ensembles using explicit solvent and Particle Mesh Ewald (PME) method for treating the conditionally-convergent electrostatic component of the classical force field. A key component of our algorithm is the redesign of the traditional PME method to better fit on the multithreading GPU architecture. This has been considered a fundamentally hard problem in the molecular dynamics community working on massively multithreaded architecture. Our algorithm is integrated in the code FENZI (yun dong de FEN ZI in Mandarin or moving molecules in English). The paper analyzes both the performance and accuracy of large-scale GPU-enabled simulations of membranes using FENZI, showing how our code can enable multi-nanosecond MD simulations per day, even when using PME.
机译:在研究膜结合的蛋白质受体时,必须超出目前的最先进的模拟,只考虑小膜斑块和隐含溶剂。传统计算机平台的极限对模型的现实水平产生负面影响以及可实现的计算尺度。另一方面,诸如GPU之类的多核平台提供了跨越膜模拟的长度尺度的可能性,比以前更高,分辨率更高。为此,本文介绍了使用显式溶剂和粒子网EWALD(PME)方法的NVT,NVE和NPT系列的大膜区域的分子动力学(MD)模拟的先进GPU算法的设计和实现。经典力场的条件收敛静电分量。我们的算法的一个关键组成部分是重新设计传统的PME方法,以更好地适合多线程GPU架构。这被认为是在大量多线程建筑上工作的分子动力学界的基本困难问题。我们的算法集成在代码Fenzi(云南常芬岛,或英文中的移动分子)。本文分析了使用Feneni的大规模GPU模拟的性能和准确性,展示了我们的代码如何每天能够实现多纳秒MD模拟,即使使用PME。

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