Complementary role of large language models in educating undergraduate design of distillation column: Methodology development

IF 3 Q2 ENGINEERING, CHEMICAL Digital Chemical Engineering Pub Date : 2023-09-27 DOI:10.1016/j.dche.2023.100126
Zong Yang Kong , Vincentius Surya Kurnia Adi , Juan Gabriel Segovia-Hernández , Jaka Sunarso
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Abstract

This paper explores the integration of large language models (LLMs), such as ChatGPT, in chemical engineering education, departing from conventional practices that may not be universally accepted. While there is ongoing debate surrounding the acceptance of LLMs, driven by concerns over computational instability and potential inconsistencies, their inevitability in shaping our communication and interaction with technology cannot be ignored. As educators, we are positioned to play a vital role in guiding students toward the responsible, effective, and synergetic use of LLMs. Focusing specifically on distillation column design in undergraduate mass-transfer courses, this study demonstrates how ChatGPT can be utilized as an auxiliary tool to create interactive learning environments and simulate real-world engineering thinking processes. It emphasizes the need for students to develop critical thinking skills and a thorough understanding of LLM principles, taking responsibility for their use and creations. While ChatGPT should not be solely relied upon, its integration with fundamental principles of chemical engineering is crucial. The effectiveness and limitations of ChatGPT are exemplified through two case studies, showcasing the importance of manual calculations and established simulation software as primary tools for guiding and validating engineering results and analyses. This paper also addresses the pedagogical implications of integrating LLMs into mass transfer courses, encompassing curriculum integration, facilitation, guidance, and ethical considerations. Recommendations are provided for incorporating LLMs effectively into the curriculum. Overall, this study contributes to the advancement of chemical engineering education by examining the benefits and limitations of LLMs as educational aids in the design process.

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大型语言模型在精馏塔设计教学中的补充作用:方法论发展
本文探讨了大型语言模型(LLM)(如ChatGPT)在化学工程教育中的集成,这与可能不被普遍接受的传统做法不同。尽管由于对计算不稳定性和潜在不一致性的担忧,围绕LLM的接受度仍存在争议,但它们在塑造我们与技术的沟通和互动方面的必然性不容忽视。作为教育工作者,我们在引导学生负责任、有效和协同使用LLM方面发挥着至关重要的作用。本研究特别关注本科生传质课程中的蒸馏柱设计,展示了如何利用ChatGPT作为辅助工具来创建交互式学习环境和模拟真实世界的工程思维过程。它强调学生需要培养批判性思维技能和对LLM原则的全面理解,并对其使用和创造负责。虽然不应该仅仅依赖ChatGPT,但它与化学工程基本原理的结合至关重要。通过两个案例研究举例说明了ChatGPT的有效性和局限性,展示了手动计算和已建立的模拟软件作为指导和验证工程结果和分析的主要工具的重要性。本文还探讨了将LLM整合到大规模转移课程中的教学意义,包括课程整合、促进、指导和道德考虑。为将LLM有效地纳入课程提供了建议。总的来说,本研究通过考察LLM作为设计过程中的教育辅助工具的好处和局限性,为化学工程教育的发展做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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