Journal of
Systemics, Cybernetics and Informatics
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ISSN: 1690-4524 (Online)


Peer Reviewed Journal via three different mandatory reviewing processes, since 2006, and, from September 2020, a fourth mandatory peer-editing has been added.

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Published by
The International Institute of Informatics and Cybernetics


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Academia.edu
(A Community of about 40.000.000 Academics)


Honorary Editorial Advisory Board's Chair
William Lesso (1931-2015)

Editor-in-Chief
Nagib C. Callaos


Sponsored by
The International Institute of
Informatics and Systemics

www.iiis.org
 

Editorial Advisory Board

Quality Assurance

Editors

Journal's Reviewers
Call for Special Articles
 

Description and Aims

Submission of Articles

Areas and Subareas

Information to Contributors

Editorial Peer Review Methodology

Integrating Reviewing Processes


A Transdisciplinary Approach to Enhancing Online Engineering Education Through Learning Analytics
Masikini Lugoma, Lethuxolo Yende, Pule Dikgwatlhe, Akhona Mkonde, Rorisang Thage, Lucky Maseko, Ngonidzashe Chimwani
(pages: 1-6)

AI Disruptions in Higher Education: Evolutionary Change, Not Revolutionary Overthrow
Cristo Leon, James Lipuma, Maximus Rafla
(pages: 7-18)

Education, Research, and Methodology: A Transdisciplinary Cybernetic Whole
Nagib Callaos, Cristo Leon
(pages: 19-33)

Enhancing Educational Effectiveness Through Transdisciplinary Practice: The ETCOP Model
Birgit Oberer, Alptekin Erkollar, Andreas Kropfberger
(pages: 34-40)

From Instruction to Interaction: Reflexive Learning Design for Cross-Generational Engagement at the Workplace
Gita Aulia Nurani, Ya-Hui Lee
(pages: 41-44)

GIS in Aquatic Animal Health Surveillance: A Transdisciplinary eLearning Initiative Integrating Education, Research, and Methodology (The Aquae Strength Project)
Eleonora Franzago, Rodrigo Macario, Matteo Mazzucato, Federica Sbettega, Manuela Cassani, Guido Ricaldi, Francesco Bissoli, Anna Nadin, Fabrizio Personeni, Manuela Dalla Pozza, Grazia Manca, Nicola Ferré
(pages: 45-50)

Reflexivity as a Compass: The European AI Act and Its Implications for U.S. Higher Education Institutions
Jasmin Cowin
(pages: 51-56)

Required General Education Program Evaluation: Bridging the Gap Between Educators and Administrators
James Lipuma, Cristo Leon, Jeremy Reich
(pages: 57-61)

Researching Ourselves
Jeremy Horne
(pages: 62-72)

The Self-Aware, Reflective Learner: Fostering Metacognitive Awareness and Reflexivity in Undergraduates Through Service-Learning
Genejane Adarlo
(pages: 73-81)


 

Abstracts

 


ABSTRACT


Intelligent Fault Pattern Recognition of Aerial Photovoltaic Module Images Based on Deep Learning Technique

Xiaoxia Li, Qiang Yang, Wenjun Yan, Zhebo Chen


The rise of photovoltaic industry has raised the difficulty of the operation and maintenance. Nowadays, the growing interest in the application of unmanned aerial vehicles (UAV) in civil monitoring and diagnostic applications has been observed. Such UAV-based inspection system can significantly improve the efficiency of system monitoring and fault detections. This paper presents an intelligent UAV-based inspection system for asset assessment and defect classification for large-scale PV systems. The aerial imagery data of PV modules increase the complexity of the detection by traditional pattern recognition, a novel method based on the deep learning and supervision is proposed, which could solve the low quality and distortion flexibly and reliably. A convolutional neural network (CNN) is adopted to address the defects classification. Extracting features by the pre-trained architecture Vgg16, the suggested solution added a full-connected layer and a SVM decision layer to classify the defects. Such pre-trained learning-based algorithm can meet the demand of the small datasets, and carry out a variety of deep features and condition classification in PV system, which can supervise with significantly promoted efficiency in comparison with the conventional methods. The proposed solution is evaluated through numerical experiments and the result confirms its improved performance.

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