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http://dx.doi.org/10.14352/jkaie.2014.18.1.25

A Data Logging Smart r-Learning Effect on Students' Logical Thinking  

Lee, Jae-Inn (Dep. of Computer Education, Chinju National University of Education)
Yoo, Seoung-Han (Sangri Elementary School)
Publication Information
Journal of The Korean Association of Information Education / v.18, no.1, 2014 , pp. 25-33 More about this Journal
Abstract
Due to the recent development of educational robot hardwares, processing speed and scalability have been greatly improved. Thus, the robot hardwares that are compatible with temperature sensor for MBL and gyro sensor made a data logging possible. Students can conduct an experiment on scientific research and prediction, collecting and data analysis with robots that can process data logging. Therefore this research constructed and adopted science project class that introduced a Smart r-Learning that utilizes Class SNS and smartphone. As a result of applying a data logging smart r-Learning to elementary school 5th graders, it has shown that the students' logical thinking ability four of the six areas have been improved in t-test.
Keywords
Smart Learning; r-Learning; MBL; Data Logging;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
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