Physics-informed Recurrent Neural Networks for The Identification of a Generic Energy Buffer System

Manu Lahariya, F. Karami, Chris Develder, G. Crevecoeur
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引用次数: 2

Abstract

Energy storage is ubiquitous in industrial processes and comes in many forms such as material, chemical, electromechanical buffers. System identification of such energy buffers demands proper estimation/prediction of their physical quantities and unknown parameters. Once these parameters are determined, the identified model can be employed to predict the industrial process dynamics, which finally assist to build efficient control for these processes. This paper proposes physics-informed neural networks-based grey-box modeling methods for the identification of energy buffers. The underlying system dynamics are enforced on the neural network structure to ensure that the identified grey-box model follows the approximate physics. We define two novel grey-box models based on simple and recurrent neural network architectures and test these models for a generic energy buffer. Performance and training time for the proposed grey-box models are compared against a black-box baseline model. Results confirm that imposing the dynamic system's physics on the network improves the performance, and utilizing a recurrent architecture leads to a further improvement.
基于物理信息的递归神经网络识别通用能量缓冲系统
能量存储在工业过程中无处不在,并以多种形式出现,如材料,化学,机电缓冲。这种能量缓冲的系统识别需要对其物理量和未知参数进行适当的估计/预测。一旦确定了这些参数,就可以利用所识别的模型来预测工业过程的动态,最终帮助建立对这些过程的有效控制。本文提出了一种基于物理信息神经网络的灰盒建模方法来识别能量缓冲区。在神经网络结构上施加底层系统动力学,以确保识别的灰盒模型遵循近似物理。我们基于简单和循环神经网络架构定义了两种新的灰盒模型,并对这些模型进行了通用能量缓冲测试。将提出的灰盒模型的性能和训练时间与黑盒基线模型进行比较。结果证实,在网络上施加动态系统的物理特性可以提高性能,并且使用循环架构可以进一步提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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