Litcius/Paper detail

PhysiNet: A combination of physics‐based model and neural network model for digital twins

Chao Sun, Victor Guang Shi

2021International Journal of Intelligent Systems25 citationsDOI

Abstract

As the real-time digital counterpart of a physical system or process, digital twins are utilized for system simulation and optimization. Neural networks are one way to build a digital twins model by using data especially when a physics-based model is not accurate or even not available. However, for a newly designed system, it takes time to accumulate enough data for neural network models and only an approximate physics-based model is available. To take advantage of both models, this paper proposed a model that combines the physics-based model and the neural network model to improve the prediction accuracy for the whole life cycle of a system. The proposed hybrid model (PhysiNet) was able to automatically combine the models and boost their prediction performance. Experiments showed that the PhysiNet outperformed both the physics-based model and the neural network model.

Topics & Concepts

Artificial neural networkComputer scienceProcess (computing)Artificial intelligenceNervous system network modelsNetwork modelMachine learningRecurrent neural networkTypes of artificial neural networksOperating systemDigital Transformation in IndustryManufacturing Process and OptimizationFlexible and Reconfigurable Manufacturing Systems