Integration of physics and machine learning in virtual flow metering applications is known as gray-box modeling. The combination is believed to enhance multiphase flow rate predictions. However, the superiority of gray-box models is yet to be demonstrated in the literature. This article examines scenarios where a gray-box model is expected to outperform physics-based and data-driven models. The experiments are conducted with synthetic data where properties of the underlying data generating process are known and controlled. The results show that a gray-box model yields increased prediction accuracy over a physics-based model in the presence of process-model mismatch. They also show improvements over a data-driven model when the amount of available data is small. On the other hand, gray-box and data-driven models are similarly influenced by noisy measurements. Lastly, the results indicate that a gray-box approach may be advantageous in nonstationary process conditions. Unfortunately, choosing the best model prior to training is challenging, and overhead on model development is unavoidable.
翻译:在虚拟流量计量应用中,物理学和机器学习的整合被称作灰盒模型,据认为,这种组合可以加强多阶段流量预测。然而,灰盒模型的优越性尚有待在文献中展示。本文章审视了灰盒模型预计将优于物理和数据驱动模型的情景。实验利用合成数据进行,其基础数据生成过程的特性为人所知和控制。结果显示,灰盒模型在存在流程模型不匹配的情况下,比基于物理模型的预测准确性更高。这些模型还显示在可用数据数量小的情况下,数据驱动模型的改进。另一方面,灰盒和数据驱动模型同样受到噪音测量的影响。最后,结果显示,灰盒方法在非静止过程中可能具有优势。不幸的是,选择培训前的最佳模型具有挑战性,而模型开发的间接费用是不可避免的。