利用递归神经网络实现系统模型商品化仿真

A. C. Yuzuguler, A. Moga, C. Franke
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引用次数: 1

摘要

系统建模和仿真在工业自动化或电力系统等各个领域的大型复杂系统工程中起着至关重要的作用。在本文中,我们提出了一种方法,可用于轻松地在各种目标平台上大规模部署高保真度模拟。我们的方法是使用递归神经网络来近似建模系统的行为。我们使用人工神经网络,因为它们很容易提供高性能执行,从而避免了(手动)将系统模型(通常是微分方程系统)转换为专门的硬件架构的需要。此外,这种方法是通用的,因为它与典型的建模和仿真工具(如Matlab Simulink或Dymola)解耦。本文提出了一个概念验证神经网络架构,包括我们用来近似来自电力系统领域的不同示例系统的行为的训练方法。我们在一个基于gpu的测试平台上给出了我们的评估结果,主要是关于准确性和一定程度上的性能。此外,我们详细说明了所使用方法的局限性,并概述了关于我们方法的一般适用性的潜在研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Commoditizing Simulations of System Models Using Recurrent Neural Networks
System modeling and simulation plays a crucial role in the engineering of large and complex systems from various fields, such as industrial automation or power systems. In this paper, we propose a method that can be used to easily deploy high fidelity simulations at scale, onto various target platforms. Out method is to approximate the behavior of the modeled system using a recurrent neural network. We use artificial neural networks as they easily lend themselves to high performance execution, thus avoiding the need to (manually) translate system models (typically a system of differential equations) to specialized hardware architectures. Moreover, this approach is generic in the sense that it is decoupled from typical modeling and simulation tools, such as Matlab Simulink or Dymola. This paper presents a proof-of-concept neural network architecture including the methodology for training that we used to approximate the behavior of different example systems originating from the electrical power systems domain. We present our evaluation results mainly regarding accuracy and to a certain extent performance on a GPU-based testbed. Furthermore, we detail limitations of the used approach and outline potential directions for research regarding the general applicability of our method.
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