Archive/Research on Learning Analytics–Driven AI-Supported Blended Teaching: A Case Study of the Undergraduate Course Combustion Science
Research on Learning Analytics–Driven AI-Supported Blended Teaching: A Case Study of the Undergraduate Course Combustion Science
Hongtao Li, Liqiang Liang, Yingyi Han et al.
June 2, 2026
en

Abstract

Against the backdrop of the digital transformation in engineering education, this study developed and implemented a Learning Analytics (LA)-driven and Artificial Intelligence (AI)-supported blended learning model to address structural challenges in the “Combustion” course, including highly abstract theories, experimental safety risks, and compressed instructional hours. Moving beyond mere technical stacking, the model establishes a closed-loop data ecosystem that integrates “pre-class adaptive diagnosis, in-class contextualized internalization, and post-class personalized transfer,” while deeply embedding engineering ethics and sustainability issues related to carbon neutrality. A one-semester quasi-experimental study (Experimental N = 60, Control N = 60) was conducted, utilizing a triangulated assessment of final exam scores, platform-based behavioral trajectories, and semi-structured interviews. The results showed that the experimental group achieved significantly higher final assessment scores than the control group (82.4 ± 5.7 vs. 73.2 ± 6.9), with normality tests supporting the use of parametric analysis and Analysis of Covariance (ANCOVA) indicating a significant instructional effect after controlling for Grade Point Average (GPA) and pre-test scores. Furthermore, behavioral analysis confirms that the LA mechanism significantly enhances students’ self-regulated learning and engagement by increasing the visibility of the learning process. This study provides an evidence-based reform paradigm for engineering curricula to achieve the synergistic cultivation of knowledge acquisition, competency development, and value alignment within constrained instructional timeframes.

IPC Classification

G06A61B60

Keywords

researchlearninganalyticsdrivenai-supportedblendedteachingcaseundergraduatecoursecombustionscienceeducationsciencesagainstbackdropdigitaltransformationengineeringdevelopedimplemented-drivenartificialintelligence
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