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Hybrid Approach to State Estimation for Bioprocess Control

机译:生物过程控制的状态估计混合方法

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An improved state estimation technique for bioprocess control applications is proposed where a hybrid version of the Unscented Kalman Filter (UKF) is employed. The underlying dynamic system model is formulated as a conventional system of ordinary differential equations based on the mass balances of the state variables biomass, substrate, and product, while the observation model, describing the less established relationship between the state variables and the measurement quantities, is formulated in a data driven way. The latter is formulated by means of a support vector regression (SVR) model. The UKF is applied to a recombinant therapeutic protein production process using Escherichia coli bacteria. Additionally, the state vector was extended by the specific biomass growth rate μ in order to allow for the estimation of this key variable which is crucial for the implementation of innovative control algorithms in recombinant therapeutic protein production processes. The state estimates depict a sufficiently low noise level which goes perfectly with different advanced bioprocess control applications.
机译:提出了一种改进的用于生物过程控制应用的状态估计技术,其中采用了无味卡尔曼滤波器(UKF)的混合版本。基本的动态系统模型基于状态变量生物量,底物和产物的质量平衡,被公式化为常规的常微分方程系统,而观察模型则描述了状态变量与测量量之间较弱的关系,以数据驱动的方式制定。后者是通过支持向量回归(SVR)模型制定的。 UKF用于使用大肠杆菌细菌的重组治疗性蛋白质生产过程。另外,状态向量通过特定的生物量生长速率μ扩展,以便允许估计此关键变量,这对于在重组治疗性蛋白质生产过程中实施创新控制算法至关重要。状态估计值描述了足够低的噪声水平,与不同的先进生物过程控制应用程序完美匹配。

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