利用酿酒酵母生产有氧类胡萝卜素批量动力学的通用混合模型

Mohammed Saad Faizan Bangi, J. Kwon
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引用次数: 1

摘要

考虑到生物发酵过程中发生的复杂相互作用,准确地模拟生物发酵过程是一项艰巨的任务。通常,第一原理方法被用来建立一个捕捉其基本动态的模型。但是,使用这种方法构建一个精确的模型既耗时又耗费资源,因为用数学方法量化流程中发生的所有复杂交互是相当具有挑战性的。因此,将第一原理模型与数据驱动模型相结合以获得更高的准确性和鲁棒性的混合模型是一种很有吸引力的选择。在这篇论文中,我们开发了一个混合模型,使用一种物理信息的机器学习方法,称为通用微分方程(UDEs),用于生物发酵过程。在这种方法中,利用深度神经网络(DNN)来近似过程中发生的未知动态的导数。将训练好的DNN插入到表示该过程第一性原理模型的ODE中,并使用现代ODE求解器求解得到的混合模型。与最初的第一原理模型相比,这种通用混合模型具有更高的准确性。
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Universal hybrid modeling of batch kinetics of aerobic carotenoid production using Saccharomyces Cerevisiae
Modeling a bio-fermentation process accurately is a difficult task given the complex interactions that occur within it. Usually, a first-principles approach is employed to build a model which captures its essential dynamics. But building an accurate model using this approach is time consuming and resource-intensive because it is quite challenging to mathematically quantify all the complex interactions that occur within the process. Therefore, hybrid model wherein a first-principles model is integrated with a data-driven model to achieve greater accuracy and robustness is an appealing alternative. In this manuscript, we develop a hybrid model using a physics-informed machine learning method called Universal Differential Equations (UDEs) for a bio-fermentation process. In this approach a deep neural network (DNN) is utilized to approximate the derivative of the unknown dynamics that occur within the process. The trained DNN is inserted in the ODEs that represent the first-principles model of the process, and the resultant hybrid model is solved using modern ODE solvers. This universal hybrid model gives greater accuracy compared to the original first-principles model.
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