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Teaching in Higher Education: Students’ Deep Learning of Brewing by Labwork

Author

Listed:
  • Păcală Mariana-Liliana

    (”Lucian Blaga” University of Sibiu,Romania)

  • Șipoş Anca Sorina

    (”Lucian Blaga” University of Sibiu,Romania)

  • Brudiu Lucica

    (S.C. Management Solutions ---amp--- Assistance S.R.L., Constanta, Romania)

  • Favier Lidia

    (Ecole Nationale Supérieure de Chimie de Rennes, France)

Abstract

The amount of theoretical and practical information to be given to students from engineering food specialty is increasingly greater. Within this perspective, it is important to use teaching-learning methods which to develop students’ cognitive ability through the efficient by of them of knowledge acquired at fundamental and specialized disciplines. The article aims to present in an integrated graphical manner the laboratory entitled “Determination of alcoholic concentration of beer by distillation” within the discipline of “Technology and control in the malt and beer industry” that is taught to students in the field of Food Engineering. The integrative approach to the laboratory theme is based on the generation of a graphical organization of the laboratory work content, thus enabling an efficient guidance of the teaching-learning process. On the same structure of the graphical organization of laboratory work are processed and interpreted experimental results, resulting in students’ deep learning of brewing by laboratory work. In conclusion, the use of integrated graphical manner in the teaching of laboratory work allowed students to achieve much better results in the assessment of laboratory activity, to find an improvement in self-organizing and self-evolving and to be more confident about the scientific research activity.

Suggested Citation

  • Păcală Mariana-Liliana & Șipoş Anca Sorina & Brudiu Lucica & Favier Lidia, 2019. "Teaching in Higher Education: Students’ Deep Learning of Brewing by Labwork," Balkan Region Conference on Engineering and Business Education, Sciendo, vol. 1(1), pages 198-205, October.
  • Handle: RePEc:vrs:brcebe:v:1:y:2019:i:1:p:198-205:n:23
    DOI: 10.2478/cplbu-2020-0023
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