Defect detection in wind turbine blades applying Convolutional Neural Networks to Ultrasonic Testing

IF 4.1 2区 材料科学 Q1 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Julen Mendikute , Itsaso Carmona , Iratxe Aizpurua , Iñigo Bediaga , Ivan Castro , Lander Galdos , Jose Luis Lanzagorta
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引用次数: 0

Abstract

The significance of wind-turbine blade safety operation has risen in the context of recent advances in wind energy generation. In this context, Non-Destructive Inspection Technologies (NDT), in particular those derived from Ultrasonic Testing (UT) methods, have proven to be key. Non-destructive evaluation (NDE) analysis has traditionally been performed by a qualified inspector who interprets the acquired signal. However, the emerging digital revolution has brought with it many advances in Artificial Intelligence (AI) and has demonstrated its potential in the field of NDE. AI has allowed to automate and improve traditional techniques in the tasks of data pre-processing, defect detection, defect characterization, and property measurement. Moreover, it has proven to be highly valuable in situations where it is not possible to apply traditional gate methods.
In this paper, the feasibility of using Deep Learning (DL) techniques for the detection of defects in wind-turbine blades (in the Cap zone and in the Cap-Web zone) is analyzed. For this purpose, supervised learning techniques have been used and three case studies were analyzed: two-class classifications for Cap zone, two-class classifications for Cap-Web zone, and four-class classifications have been performed. Several Convolutional Neural Network (CNN) architectures have been proposed, reaching 90% accuracy in all three case studies. These results lay the groundwork for the initial steps in applying AI techniques during the automated inspection of complex wind blade components.
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来源期刊
Ndt & E International
Ndt & E International 工程技术-材料科学:表征与测试
CiteScore
7.20
自引率
9.50%
发文量
121
审稿时长
55 days
期刊介绍: NDT&E international publishes peer-reviewed results of original research and development in all categories of the fields of nondestructive testing and evaluation including ultrasonics, electromagnetics, radiography, optical and thermal methods. In addition to traditional NDE topics, the emerging technology area of inspection of civil structures and materials is also emphasized. The journal publishes original papers on research and development of new inspection techniques and methods, as well as on novel and innovative applications of established methods. Papers on NDE sensors and their applications both for inspection and process control, as well as papers describing novel NDE systems for structural health monitoring and their performance in industrial settings are also considered. Other regular features include international news, new equipment and a calendar of forthcoming worldwide meetings. This journal is listed in Current Contents.
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