使用低频磁场采样点的gpu加速体-内部电场暴露模拟

IF 1 4区 工程技术 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Norman Haussmann, Steven Stroka, Benedikt Schmuelling, Markus Clemens
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引用次数: 0

摘要

目的无线电力传输系统中准静磁场诱导的人体内部电场强度的高分辨率模拟计算成本很高。暴露模拟可分为两个独立的模拟步骤,允许计算磁通密度分布,作为第二步模拟步骤的输入,以计算体内电场。在这项工作中,磁通密度从现场测量结合标量势有限差分格式插值计算得到的体内场。这些计算应该需要不到5秒的时间才能在移动设备上实现这些领域的近乎实时的可视化。这项工作的目的是在图形处理单元(gpu)上实现模拟,允许在大约3秒内计算身体内部场强。本工作采用联合模拟标势有限差分格式确定人体模型的体素分辨率为2 × 2 × 2 mm 3的体内电场强度。该方案在gpu上实现。该仿真方案要求磁通密度分布作为输入,由径向基函数确定。使用NVIDIA A100 gpu,可以在2.3 s左右的时间内确定高分辨率模型和890万个自由度的人体内部电场强度。本文详细介绍了利用现代图形处理器的计算性能所采用的方案及其实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GPU-accelerated body-internal electric field exposure simulation using low-frequency magnetic field sampling points
Purpose High resolution simulations of body-internal electric field strengths induced by magneto-quasistatic fields from wireless power transfer systems are computationally expensive. The exposure simulation can be split into two separate simulation steps allowing the calculation of the magnetic flux density distribution, which serves as input into the second simulation step to calculate the body-internal electric fields. In this work, the magnetic flux density is interpolated from in situ measurements in combination with the scalar-potential finite difference scheme to calculate the resulting body-internal field. These calculations are supposed to take less than 5 s to achieve a near real-time visualization of these fields on mobile devices. The purpose of this work is to present an implementation of the simulation on graphics processing units (GPUs), allowing for the calculation of the body-internal field strength in about 3 s. Design/methodology/approach This work uses the co-simulation scalar-potential finite difference scheme to determine the body-internal electric field strength of human models with a voxel resolution of 2 × 2 × 2 mm 3 . The scheme is implemented on GPUs. This simulation scheme requires the magnetic flux density distribution as input, determined from radial basis functions. Findings Using NVIDIA A100 GPUs, the body-internal electric field strength with high-resolution models and 8.9 million degrees of freedom can be determined in about 2.3 s. Originality/value This paper describes in detail the used scheme and its implementation to make use of the computational performance of modern GPUs.
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
124
审稿时长
4.2 months
期刊介绍: COMPEL exists for the discussion and dissemination of computational and analytical methods in electrical and electronic engineering. The main emphasis of papers should be on methods and new techniques, or the application of existing techniques in a novel way. Whilst papers with immediate application to particular engineering problems are welcome, so too are papers that form a basis for further development in the area of study. A double-blind review process ensures the content''s validity and relevance.
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