Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence
Impact-induced delamination (IID) in fiberglass pre-impregnated laminated composites (FGLC) is an important failure mode. Besides affected the material strength and structural reliability, this failure mode normally present minor damage on the surface but the internal damage may extensive. Exi...
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my-uthm-ep.7052021-08-30T07:17:33Z Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence 2018-02 Mahmod, Muhammad Faisal TA401-492 Materials of engineering and construction. Mechanics of materials Impact-induced delamination (IID) in fiberglass pre-impregnated laminated composites (FGLC) is an important failure mode. Besides affected the material strength and structural reliability, this failure mode normally present minor damage on the surface but the internal damage may extensive. Existing detection method using static and dynamic load response have limitations that are considered static based monitoring and require the sensor to be attached to the test specimen surface. This technique is not suitable as the damage caused by the impact normally occurred by accident at random location. Thus, detection and classification of IID using artificial neural network from ultrasonic signal has great potential to be applied, but no attempt has been made to detect and classify this failure mode in FGLC material. The classification of delamination against impact not only applicable as prediction tool to characterise the delamination, it also can be used as reference during inspecting the FGLC under specific conditions. In this study, the potential of using ultrasonic immersion testing for detecting the IID in FGLC type 7781 E-Glass fabric is studied. Several findings and development have been achieved in this study such as the relationship between delamination area and the increasing of an impact energy, where the rate is between 23 to 45 percent. Besides, it was found that the diameter of the impact damage is directly increase with the increasing of the impact energy in the range of 21 until 46 percent while for the impact damage area is between 24 until 42 percent. In addition, the dynamic segmentation algorithm has been successfully developed in this study to automatically segment the A-scan signal with regardless the xxi variation of gap distance between transducer and specimen surface. Based on the ultrasonic inspection result, it was found that the delamination is extend internally up to 35.90 percent and the average percentage different of the measurement result which is taken from DT and NDT is just 4.72 percent and acceptable. Since the achieved classification result is highly accurate, which is exceeded 99.29 percent, it can be concluded that the selected features for the classification input is successful and the use of artificial neural network from ultrasonic A-scan signal has shown its applicability to classify the different type of the impact-induced delamination in FGLC plates 2018-02 Thesis http://eprints.uthm.edu.my/705/ http://eprints.uthm.edu.my/705/1/24p%20MUHAMMAD%20FAISAL%20MAHMOOD.pdf text en public phd doctoral Universiti Sains Malaysia Fakulti Pengajian Kejuruteraan Aeroangkasa |
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TA401-492 Materials of engineering and construction Mechanics of materials |
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TA401-492 Materials of engineering and construction Mechanics of materials Mahmod, Muhammad Faisal Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence |
description |
Impact-induced delamination (IID) in fiberglass pre-impregnated laminated
composites (FGLC) is an important failure mode. Besides affected the material
strength and structural reliability, this failure mode normally present minor damage on
the surface but the internal damage may extensive. Existing detection method using
static and dynamic load response have limitations that are considered static based
monitoring and require the sensor to be attached to the test specimen surface. This
technique is not suitable as the damage caused by the impact normally occurred by
accident at random location. Thus, detection and classification of IID using artificial
neural network from ultrasonic signal has great potential to be applied, but no attempt
has been made to detect and classify this failure mode in FGLC material. The
classification of delamination against impact not only applicable as prediction tool to
characterise the delamination, it also can be used as reference during inspecting the
FGLC under specific conditions. In this study, the potential of using ultrasonic
immersion testing for detecting the IID in FGLC type 7781 E-Glass fabric is studied.
Several findings and development have been achieved in this study such as the
relationship between delamination area and the increasing of an impact energy, where
the rate is between 23 to 45 percent. Besides, it was found that the diameter of the
impact damage is directly increase with the increasing of the impact energy in the
range of 21 until 46 percent while for the impact damage area is between 24 until 42
percent. In addition, the dynamic segmentation algorithm has been successfully
developed in this study to automatically segment the A-scan signal with regardless the xxi
variation of gap distance between transducer and specimen surface. Based on the
ultrasonic inspection result, it was found that the delamination is extend internally up
to 35.90 percent and the average percentage different of the measurement result which
is taken from DT and NDT is just 4.72 percent and acceptable. Since the achieved
classification result is highly accurate, which is exceeded 99.29 percent, it can be
concluded that the selected features for the classification input is successful and the
use of artificial neural network from ultrasonic A-scan signal has shown its
applicability to classify the different type of the impact-induced delamination in FGLC
plates |
format |
Thesis |
qualification_name |
Doctor of Philosophy (PhD.) |
qualification_level |
Doctorate |
author |
Mahmod, Muhammad Faisal |
author_facet |
Mahmod, Muhammad Faisal |
author_sort |
Mahmod, Muhammad Faisal |
title |
Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence |
title_short |
Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence |
title_full |
Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence |
title_fullStr |
Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence |
title_full_unstemmed |
Delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence |
title_sort |
delamination in fiberglass pre-impregnated laminated composites from ultrasonic a-scan signal using artificial intelligence |
granting_institution |
Universiti Sains Malaysia |
granting_department |
Fakulti Pengajian Kejuruteraan Aeroangkasa |
publishDate |
2018 |
url |
http://eprints.uthm.edu.my/705/1/24p%20MUHAMMAD%20FAISAL%20MAHMOOD.pdf |
_version_ |
1747830665374597120 |