傅里叶变换及其在核磁共振和红外光谱中的应用的教学之旅

IF 2.5 3区 教育学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Anthony J. Dominic III*, Nicholas L. Cipolla*, William C. Pfalzgraff*, Jeffrey A. Jankowski*, Rebecca J. Rapf* and Andrés Montoya-Castillo*, 
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引用次数: 0

摘要

傅里叶变换(FT)是渗透到现代科学技术中的一个基本工具。虽然化学专业的本科生早在第二年就接触到了英国《金融时报》,但他们的课程往往只是顺带提到它,因为计算机经常在幕后自动执行这项任务。虽然这种自动化使学生能够专注于“化学”,但学生错过了理解和使用科学武器库中最强大的工具之一的机会,该工具能够揭示随时间变化的信号如何编码化学结构。尽管许多教育资源向英国《金融时报》介绍了化学家,但这些资源通常要求化学家熟悉复杂的数学和计算概念。在这里,我们提出了一系列的三个独立的、基于python的实验活动,旨在帮助本科生理解傅里叶变换,并将其应用于分析音频信号、红外(IR)光谱干涉图和核磁共振(NMR)自由感应衰变(FID)。在这些活动中,学生观察FT如何揭示和量化时间信号中存在的每个频率的贡献,以及衰减时间尺度如何决定信号的展宽。我们的活动使学生能够使用工具将他们自己的时间数据集(例如FID)转换为频谱。为了确保活动的可访问性并降低实现的障碍,我们利用谷歌Colab的开源、基于云的平台来运行Jupyter笔记本。我们还提供了一个实验室前活动,向学生介绍Python和Colab平台的基础知识,并复习完成实验室活动所需的数学和编程技能。这些实验活动帮助学生建立对金融时报的定性、定量和实践理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Pedagogical Tour of the Fourier Transform with Applications to NMR and IR Spectroscopy

A Pedagogical Tour of the Fourier Transform with Applications to NMR and IR Spectroscopy

The Fourier Transform (FT) is a fundamental tool that permeates modern science and technology. While chemistry undergraduates encounter the FT as early as the second year, their courses often only mention it in passing because computers frequently perform it automatically behind the scenes. Although this automation enables students to focus on ‘the chemistry’, students miss out on an opportunity to understand and use one of the most powerful tools in the scientific arsenal capable of revealing how time-dependent signals encode chemical structure. Although many educational resources introduce chemists to the FT, they often require familiarity with sophisticated mathematical and computational concepts. Here, we present a series of three self-contained, Python-based laboratory activities designed for undergraduates to understand the FT and apply it to analyze audio signals, an infrared (IR) spectroscopy interferogram, and a nuclear magnetic resonance (NMR) free induction decay (FID). In these activities, students observe how the FT reveals and quantifies the contribution of each frequency present in a temporal signal and how decay time scales dictate signal broadening. Our activities empower students with the tools to transform their own temporal data sets (e.g., FID) to a frequency spectrum. To ensure accessibility of the activities and lower the barrier to implementation, we utilize Google Colab’s open-source, cloud-based platform to run Jupyter notebooks. We also offer a prelaboratory activity that introduces students to the basics of Python and the Colab platform and reviews the math and programming skills needed to complete the lab activities. These lab activities help students build a qualitative, quantitative, and practical understanding of the FT.

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来源期刊
Journal of Chemical Education
Journal of Chemical Education 化学-化学综合
CiteScore
5.60
自引率
50.00%
发文量
465
审稿时长
6.5 months
期刊介绍: The Journal of Chemical Education is the official journal of the Division of Chemical Education of the American Chemical Society, co-published with the American Chemical Society Publications Division. Launched in 1924, the Journal of Chemical Education is the world’s premier chemical education journal. The Journal publishes peer-reviewed articles and related information as a resource to those in the field of chemical education and to those institutions that serve them. JCE typically addresses chemical content, activities, laboratory experiments, instructional methods, and pedagogies. The Journal serves as a means of communication among people across the world who are interested in the teaching and learning of chemistry. This includes instructors of chemistry from middle school through graduate school, professional staff who support these teaching activities, as well as some scientists in commerce, industry, and government.
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