A Learning Ecosystem for Linemen Training based on Big Data Components and Learning Analytics

Linemen training is mandatory, complex, and hazardous. Electronic technologies, such as virtual reality or learning management systems, have been used to improve such training, however these lack of interoperability, scalability, and do not exploit trace data generated by users in these systems. In this paper we present our ongoing work on developing a Learning Ecosystem for Training Linemen in Maintenance Maneuvers using the Experience API standard, Big Data components, and Learning Analytics. The paper describes the architecture of the ecosystem, elaborates on collecting learning experiences and emotional states, and applies analytics for the exploitation of both, legacy and new data. In the former, we exploit legacy e-Learning data for building a Domain model using Text Mining and unsupervised clustering algorithms. In the latter we explore self-reports capabilities for gathering educational support content, and assessing students emotional states. Results show that, a suitable domain model for personalizing maneuvers linemen training path can be built from legacy text data straightforwardly. Regarding self reports, promising results were obtained for tracking emotional states and collecting educational support material, nevertheless, more work around linemen training is required.

[1]  Andrea De Mauro,et al.  What is big data? A consensual definition and a review of key research topics , 2015, AIP Conference Proceedings.

[2]  Mario Manso-Vázquez,et al.  An xAPI Application Profile to Monitor Self-Regulated Learning Strategies , 2018, IEEE Access.

[3]  Douglas B. Kell,et al.  Computational cluster validation in post-genomic data analysis , 2005, Bioinform..

[4]  Peter Michalik,et al.  Concept definition for Big Data architecture in the education system , 2014, 2014 IEEE 12th International Symposium on Applied Machine Intelligence and Informatics (SAMI).

[5]  Brock Bastian,et al.  The Discrete Emotions Questionnaire: A New Tool for Measuring State Self-Reported Emotions , 2016, PloS one.

[6]  Mandy Lupton,et al.  Learning analytics beyond the LMS: the connected learning analytics toolkit , 2015, LAK.

[7]  Rafael Batres,et al.  A Micro-Genetic Algorithm for Ontology Class-Hierarchy Construction , 2016, Int. J. Comput. Linguistics Appl..

[8]  Gustavo Arroyo-Figueroa,et al.  Virtual reality training system for maintenance and operation of high-voltage overhead power lines , 2015, Virtual Reality.

[9]  W.K. Reder The technical talent challenge [workforce development] , 2006, IEEE Power and Energy Magazine.

[10]  Jacqueleen A. Reyes The skinny on big data in education: Learning analytics simplified , 2015 .

[11]  F Roussel,et al.  Live work training and skills development at RTE , 2017, 2017 12th International Conference on Live Maintenance (ICOLIM).

[12]  Lawrence R. Burns,et al.  Facets of dynamic positive affect: differentiating joy, interest, and activation in the positive and negative affect schedule (PANAS). , 2003, Journal of personality and social psychology.

[13]  Eduardo Islas,et al.  E-learning Tools Evaluation and Roadmap Development for an Electrical Utility , 2007, J. Theor. Appl. Electron. Commer. Res..

[14]  Bernd Brügge,et al.  TUMA: Towards an Intelligent Tutoring System for Manual-Procedural Activities , 2018, ITS.

[15]  Jennifer Murphy,et al.  Learning Ecosystems Using the Generalized Intelligent Framework for Tutoring (GIFT) and the Experience API (xAPI) , 2015, AIED Workshops.

[16]  Vladimir Caha,et al.  Live work training centres cooperation and development , 2017, 2017 12th International Conference on Live Maintenance (ICOLIM).

[17]  Edward Curry,et al.  Message‐Oriented Middleware , 2005 .

[18]  Rebecca Eynon,et al.  The rise of Big Data: what does it mean for education, technology, and media research? , 2013 .

[19]  Gustavo Arroyo-Figueroa,et al.  SI-APRENDE: An Intelligent Learning System Based on SCORM Learning Objects for Training Power Systems Operators , 2011 .

[20]  Gustavo Arroyo-Figueroa,et al.  Intelligent E-Learning System for Training Power Systems Operators , 2011, KES.

[21]  Yasmín Hernández,et al.  Text Mining for Domain Structure Analysis in a Training System for Electrical Procedures , 2017, Res. Comput. Sci..

[22]  Leo Willyanto Santoso,et al.  Data Warehouse with Big Data Technology for Higher Education , 2017 .

[23]  Giner Alor-Hernández,et al.  Designing Empathetic Animated Agents for a B-Learning Training Environment within the Electrical Domain , 2016, J. Educ. Technol. Soc..

[24]  Mohammed Erritali,et al.  Learning with Big Data Technology: The Future of Education , 2016, AECIA.

[25]  Elaine M. Raybourn,et al.  A new paradigm for serious games: Transmedia learning for more effective training and education , 2014, J. Comput. Sci..

[26]  L. Infante,et al.  Hierarchical Clustering , 2020, International Encyclopedia of Statistical Science.

[27]  Manuel Mejía-Lavalle,et al.  Data-Driven Construction of a Student Model Using Bayesian Networks in an Electrical Domain , 2016, MICAI.

[28]  Begoña Gros The design of smart educational environments , 2016, Smart Learning Environments.

[29]  Rafael Geraldeli Rossi,et al.  Building a topic hierarchy using the bag-of-related-words representation , 2011, DocEng '11.

[30]  Claude Tadonki,et al.  Performance comparison between Hadoop and Spark frameworks using HiBench benchmarks , 2018, Concurr. Comput. Pract. Exp..

[31]  Fernando Jiménez,et al.  Intelligent Tutoring and Training Tools for the Electric Power Sector Developed at IIE , 2012, Res. Comput. Sci..

[32]  Gustavo Arroyo-Figueroa,et al.  Bag of Errors: Automatic Inference of a Student Model in an Electrical Training System , 2017, MICAI.

[33]  Alejandro Peña-Ayala,et al.  Learning analytics: A glance of evolution, status, and trends according to a proposed taxonomy , 2018 .

[34]  Jonathan M. Kevan,et al.  Experience API: Flexible, Decentralized and Activity-Centric Data Collection , 2016, Technol. Knowl. Learn..