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Design of Dynamic Experiments Versus Model-Based Optimization of Batch Crystallization Processes

机译:动态实验设计与批量结晶过程的模型优化

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A new data-driven optimization methodology is applied to a batch cooling crystallization simulation to evaluate how it compares with a model-based optimization technique. The method, Design of Dynamic Experiments [Georgakis, 2009], is an extension of the classical Design of Experiments approach and can be applied to any process where time-variant profiles are important, for optimizing key objectives of the process. As a data-driven approach with no first-principles model required for process optimization, this methodology may be particularly useful for complex processes for which no knowledge-driven model exists or where the objective function cannot be modeled.
机译:新的数据驱动优化方法应用于批量冷却结晶模拟,以评估其如何与基于模型的优化技术进行比较。该方法,动态实验的设计[Georgakis,2009],是实验方法的经典设计的延伸,并且可以应用于时间变体轮廓重要的任何过程,以优化该过程的关键目标。作为一种数据驱动方法,没有过程优化所需的第一原理模型,该方法可能对其中不存在知识驱动的模型或者无法建模的目标函数的复杂过程特别有用。

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