RMIT University
Browse

Case Study: Utilising of Deep Learning Models for Fault Detection and Diagnosis of Photovoltaic Modules to Improve Solar Energy Constructions’ O&M Activities Quality

chapter
posted on 2024-11-01, 04:00 authored by Khuong NguyenKhuong Nguyen, Quang-Nguyen Vo-Huynh, Khoa Nguyen-Minh, Minh Hoang, Surender Rangaraju
Renewable energy sources have long been considered to be the sole alternatives to fossil fuels. Consequently, the usage of PV systems has experienced exponential growth. This growth, however, places gargantuan pressure on the solar energy industry’s manufacturing sector and subsequently begets issues associated with the quality of PV systems, especially the PV module, which is the systems’ most crucial component. Currently, fault detection and diagnosis are challenging due to many factors including but not limited to requirements of sophisticated measurement instruments and experts. Recent advances in deep learning have proven its feasibility in image classification and object detection. Thus, deep learning can be extended to visual fault detection using data generated by electroluminescence imaging instruments. Here, the authors propose an in-depth approach to exploratory data analysis of electroluminescence data, as well as several techniques based on both supervised and unsupervised learning to detect and diagnose visual faults and defects presented in a module.

History

Start page

53

End page

67

Total pages

15

Outlet

Information Systems Research in Vietnam, Volume 2

Edition

1

Editors

Nguyen Hoang Thuan, Duy Dang-Pham, Hoanh-Su Le, Tuan Q. Phan

Publisher

Springer

Place published

Singapore

Language

English

Copyright

© The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2024

Former Identifier

2006126423

Esploro creation date

2023-11-17