Data-driven structural synthesis of supercritical CO2 power cycles

IF 2.5 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Frontiers in chemical engineering Pub Date : 2023-10-16 DOI:10.3389/fceng.2023.1144115
Tahar Nabil, Mohamed Noaman, Tatiana Morosuk
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Abstract

With new materials, objectives or constraints, it becomes increasingly difficult to develop optimal processes using conventional heuristics-based or superstructure-based methods. Hence, data-driven alternatives have emerged recently, to increase creativity and accelerate the development of innovative technologies without requiring extensive industrial feedback. However, beyond these proof-of-concepts and the promise of automation they hold, a deeper understanding of the behaviour and use of these advanced algorithms by the process engineer is still needed. In this paper, we provide the first data-driven solution for designing supercritical CO 2 power cycle for waste heat recovery, a challenging industrial use case with lack of consensus on the optimal layout from the field literature. We then examine the issue of artificial intelligence acceptance by the process engineer, and formulate a set of basic requirements to foster user acceptance - robustness, control, understanding of the results, small time-to-solution. The numerical experiments confirm the robustness of the method, able to produce optimal designs performing as well as a set of selected expert layouts, yet only from the specification of the unit operations (turbomachinery and heat exchangers). We provide tools to exploit the vast amount of generated data, with pattern mining techniques to extract heuristic rules, thereby explaining the decision-making process. As a result, this paper shows how the process engineer can interact with the data-driven design approaches, by refocusing on the areas of domain expertise, namely, definition and analysis of the physical problem.
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超临界CO2动力循环的数据驱动结构合成
随着新材料、新目标或新限制的出现,使用传统的基于启发式或基于上层结构的方法开发最佳工艺变得越来越困难。因此,最近出现了数据驱动的替代方案,以增加创造力并加速创新技术的发展,而不需要广泛的工业反馈。然而,除了这些概念验证和它们所拥有的自动化承诺之外,流程工程师仍然需要对这些高级算法的行为和使用进行更深入的理解。在本文中,我们提供了第一个数据驱动的解决方案,用于设计用于废热回收的超临界二氧化碳动力循环,这是一个具有挑战性的工业用例,缺乏对现场文献中最佳布局的共识。然后,我们研究了过程工程师接受人工智能的问题,并制定了一套基本要求来促进用户接受——鲁棒性、控制、对结果的理解、短时间解决方案。数值实验证实了该方法的鲁棒性,能够产生最佳设计,以及一组选定的专家布局,但仅从单元操作规范(涡轮机械和热交换器)。我们提供工具来利用大量生成的数据,利用模式挖掘技术提取启发式规则,从而解释决策过程。因此,本文通过重新关注领域专业知识,即物理问题的定义和分析,展示了过程工程师如何与数据驱动的设计方法进行交互。
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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
0
审稿时长
13 weeks
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