Assisting activity analysis in professional learning environments. Case study: activity analysis of trainees on nuclear power plant full-scale simulators

Karim Sehaba 1 Olivier Champalle 1 Alain Mille 2
1 SICAL - Situated Interaction, Collaboration, Adaptation and Learning
LIRIS - Laboratoire d'InfoRmatique en Image et Systèmes d'information
2 TWEAK - Traces, Web, Education, Adaptation, Knowledge
LIRIS - Laboratoire d'InfoRmatique en Image et Systèmes d'information
Abstract : This paper addresses the issue of assisting observation and analysis of learners’ behaviour. Our goal is to propose models/tools to facilitate these tasks for the trainer. We propose an approach based on the exploitation traces. The trace represents learners’ practices within learning environments. The principle is to transform traces of low abstraction level to build higher-level information that reflects the learner’s behaviour. Our work is part of a project in partnership with the EDF Group aiming to assist trainers in observation and analysis of trainee operators for driving activities on nuclear power plant fullscale simulator. We developed a platform D3KODE that implements our models. D3KODE allows storage, processing and interactive visualisation of traces, and has been experimented with EDF Group experts, trainers and trainees. The result demonstrated D3KODE helped the trainers to confirm/validate more easily realisations and no-realisations of educational objectives trainees and facilitated the exchanges between tutors and trainees.
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https://hal.archives-ouvertes.fr/hal-01639886
Contributeur : Karim Sehaba <>
Soumis le : lundi 20 novembre 2017 - 16:22:05
Dernière modification le : mercredi 28 février 2018 - 15:20:31

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  • HAL Id : hal-01639886, version 1

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Karim Sehaba, Olivier Champalle, Alain Mille. Assisting activity analysis in professional learning environments. Case study: activity analysis of trainees on nuclear power plant full-scale simulators. International Journal of Learning Technology, Inderscience, 2017, 12 (2), pp.88-118. 〈hal-01639886〉

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