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首页> 外文期刊>IFAC PapersOnLine >Data-Driven Process Modeling and Optimization Aided by Material and Energy Balances: The Case of a Batch Polymerization Process
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Data-Driven Process Modeling and Optimization Aided by Material and Energy Balances: The Case of a Batch Polymerization Process

机译:数据驱动过程建模和优化辅助材料和能量余额:批量聚合过程的情况

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摘要

Our group recently defined two novel data-driven modeling methodologies: The Design of Dynamic Experiments (DoDE) and the Dynamic Response Surface Methodology (DRSM). These two methods enable the quick and efficient data-driven modeling of processes with a partial understanding of their inner workings. They generalize the Design of Experiments (DoE) and the Response Surfaces Methodology (RSM). DoDE allows time-varying inputs, and DRSM models time-varying process outputs.In this paper, we combine the above data-driven tools and partial knowledge of a batch polymerization process to develop an integrated data and knowledge-driven model. The optimization objective is to minimize the process’s batch time while producing the same product quality, increasing productivity. The process knowledge incorporated into the model consists of material and energy balances in which we lack a quantitative description of the rate phenomena, such as reaction or mass/heat transfer rates. The optimization is evolutionary; initially, targeting small improvements through constrained extrapolations around the normal operating conditions. Then, we build the first models and use such models to design the next set of experiments that meet our specifications. This cycle of running experiments and updating the models is repeated until an optimum is reached. After three cycles, we succeeded in reducing the batch time by 26%, while producing acceptable product.
机译:本集团最近定义了两种新型数据驱动建模方法:动态实验(DODE)和动态响应面方法(DRSM)的设计。这两种方法使得能够快速高效的数据驱动的流程建模,其内部工作的部分理解。它们概括了实验(DOE)和响应表面方法(RSM)的设计。 DODE允许时变输入,DRSM模型时变化输出。本文结合了上述数据驱动工具和批量聚合过程的部分了解,以开发集成数据和知识驱动的模型。优化目标是最小化过程的批量时间,同时产生相同的产品质量,提高生产率。结合到模型中的过程知识包括材料和能量余额,其中我们缺乏对速率现象的定量描述,例如反应或质量/传热速率。优化是进化的;最初,通过围绕正常操作条件的受约束外推靶向小的改进。然后,我们建立第一个模型并使用此类模型设计符合我们规范的下一组实验。重复该运行实验和更新模型的循环直到达到最佳状态。三次循环后,我们成功地将批量减少了26%,同时生产可接受的产品。

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