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Data-driven, using design of dynamic experiments, versus model-driven optimization of batch crystallization processes (Conference Paper)

机译:数据驱动,使用动态实验设计,而不是模型驱动的批量结晶过程优化(会议论文)

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摘要

A new data-driven experimental design methodology, design of dynamic experiments (DoDE), is proposed as a means of developing a response surface model that can be used to effectively optimize batch crystallization processes. This data-driven approach is especially useful for complex processes for which it is difficult or impossible to develop a knowledge-driven model in a timely fashion for the optimization of an industrial process. Design of dynamic experiments [1] generalizes the formulation of time-invariant design variables from design of experiments, allowing for consideration of time-variant design variables in the experimental design. When combined with response surface modeling and an appropriate optimization algorithm, a data-driven optimization methodology is produced, which we call DoDE optimization. The method is used here to determine the optimal cooling rate profile, which integrates to give the optimum temperature profile, for a batch crystallization process. To examine the effectiveness of the DoDE optimization method, the data-driven optimum temperature profile is compared to the optimum temperature profile obtained using a model-based optimization technique for the potassium nitrate-water batch crystallization model developed by Miller and Rawlings [2]. The temperature profiles calculated using DoDE optimization yield response values within a few percent of the true model-based optimum values. A sensitivity analysis is performed on one case study to evaluate the distribution of the response variable from each method in the presence of parameter and initial seed distribution variability. It is demonstrated that there is partial overlap in the distributions when only variability in the model parameters is evaluated and there is substantial overlap when variability is included in both the model and initial seed distribution parameters. From this evidence, it can be concluded that the DoDE optimization method has the potential to be a useful data-driven optimization tool for batch crystallization processes where a first-principles model is not available or cannot be developed due to time and/or cost constraints.
机译:提出了一种新的数据驱动的实验设计方法,即动态实验(DoDE)设计,作为开发响应面模型的一种手段,该模型可用于有效优化批结晶过程。这种数据驱动的方法对于复杂的过程特别有用,因为这些过程很难或不可能及时地开发知识驱动的模型来优化工业过程。动态实验设计[1]从实验设计中概括了时不变设计变量的表述,允许在实验设计中考虑时变设计变量。当与响应面建模和适当的优化算法结合使用时,就会产生一种数据驱动的优化方法,我们称之为DoDE优化。在此,该方法用于确定最佳的冷却速度曲线,该曲线综合起来可以提供最佳的温度曲线,以进行分批结晶过程。为了检验DoDE优化方法的有效性,将数据驱动的最佳温度曲线与使用基于模型的米勒和罗林斯[2]开发的硝酸钾-水批结晶模型的优化技术获得的最佳温度曲线进行了比较。使用DoDE优化计算出的温度曲线所产生的响应值在基于真实模型的最佳值的百分之几之内。在一个案例研究中进行了敏感性分析,以评估在存在参数和初始种子分布变异性的情况下每种方法的响应变量的分布。结果表明,当仅评估模型参数的变异性时,分布存在部分重叠;而当模型和初始种子分布参数均包含变异性时,则存在较大的重叠。从这一证据可以得出结论,对于因时间和/或成本限制而无法获得第一原理模型或无法开发第一原理模型的批量结晶过程,DoDE优化方法有可能成为有用的数据驱动的优化工具。 。

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