Learning Residual Dynamics via Physics-Augmented Neural Networks: Application to Vapor Compression Cycles

Raphael Chinchilla, Vedang M. Deshpande, A. Chakrabarty, C. Laughman
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Abstract

In order to improve the control performance of vapor compression cycles (VCCs), it is often necessary to construct accurate dynamical models of the underlying thermo-fluid dynamics. These dynamics are represented by complex mathematical models that are composed of large systems of nonlinear and numerically stiff differential algebraic equations (DAEs). The effects of nonlinearity and stiffness may be ameliorated by using physics-based models to describe characteristic system behaviors, and approximating the residual (unmodeled) dynamics using neural networks. In these so-called ‘physics-augmented’ or ‘physics-informed’ machine learning approaches, the learning problem is often solved by jointly estimating parameters of the physics component model and weights of the network. Furthermore, such approaches also often assume the availability of full-state information, which typically are not available in practice for energy systems such as VCCs after deployment. Rather than concurrently performing state/parameter estimation and network training, which often leads to numerical instabilities, we propose a framework for decoupling the network training from the joint state/parameter estimation problem by employing state-constrained Kalman smoothers customized for VCC applications. We show the effectiveness of our proposed framework on a Julia-based, high-fidelity simulation environment calibrated to a model of a commercially-available VCC and achieve an accuracy of 98% calculated over 24 states and multiple initial conditions under realistic operating conditions.
通过物理增强神经网络学习残余动力学:应用于蒸汽压缩循环
为了提高蒸汽压缩循环(VCCs)的控制性能,往往需要建立精确的底层热流体动力学模型。这些动力学由复杂的数学模型表示,这些模型由非线性和数值刚性微分代数方程(DAEs)的大型系统组成。非线性和刚度的影响可以通过使用基于物理的模型来描述系统的特征行为,并使用神经网络来近似残余(未建模的)动力学来改善。在这些所谓的“物理增强”或“物理通知”机器学习方法中,学习问题通常通过联合估计物理组件模型的参数和网络的权重来解决。此外,这类方法通常还假定可以获得全状态信息,而在实际应用中,诸如vcc这样的能源系统在部署后通常无法获得这些信息。为了避免同时进行状态/参数估计和网络训练(通常会导致数值不稳定),我们提出了一个框架,通过使用为VCC应用定制的状态约束卡尔曼平滑器,将网络训练与联合状态/参数估计问题解耦。我们在基于julia的高保真仿真环境中展示了我们提出的框架的有效性,该环境校准为商用VCC模型,并在现实操作条件下在24个状态和多个初始条件下计算出98%的准确性。
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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