Designing A Statistics Course For Chemical Engineers
Author(s) -
Valerie Young
Publication year - 2020
Language(s) - English
Resource type - Conference proceedings
DOI - 10.18260/1-2--11371
Subject(s) - graduation (instrument) , curriculum , session (web analytics) , course (navigation) , descriptive statistics , computer science , foundation (evidence) , variety (cybernetics) , statistics , work (physics) , statistical analysis , engineering management , engineering , mathematics , psychology , world wide web , mechanical engineering , pedagogy , archaeology , history , aerospace engineering
The Department of Chemical Engineering at Ohio University redesigned an existing course in experimental design and statistics. The revision was motivated by assessment information from a variety of sources: course-based assessment in our senior Unit Operations laboratory, exit surveys of seniors, surveys of alumni 2 years after graduation and input from our departmental advisory board. The consensus of faculty, students, alumni, and the advisory board was that (1) a solid foundation in statistics is important preparation for industrial engineering practice as well as for advanced degree work in engineering and (2) “solid foundation” means that graduates can select and execute appropriate statistical techniques to analyze real data and interpret the results. In spite of having a statistics course in our curriculum, graduates did not leave with the solid foundation we wanted. In particular, our seniors showed unsatisfactory ability to frame a problem in terms of a hypothesis that can be tested statistically and unsatisfactory ability to select an appropriate statistical test. New graduates were only beginning to operate at the desirable higher levels of analysis, synthesis, and evaluation. As part of a strategy to address this problem, our statistics course for juniors was redesigned with input from our faculty and from industrial members of the advisory board. The new course emphasizes software rather than hand calculations, introduces application and follows up with theory, and uses case studies from industry and from academic research. This course is not isolated in our curriculum. Statistical analysis is now a required part of projects in Heat Transfer and Kinetics, and continues to be emphasized in Unit Operations. In this talk, we reveal the motivation for emphasizing statistics in our curriculum, the structure of the re-designed course, and the assessment methods being used to gauge student learning in this course.
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