Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of Polypropylene

Various statistical distributions, such as Weibull, log-normal, and exponential functions, are frequently employed to interpret the dielectric breakdown (BD) strength data of insulating materials, including cross-linked polyethylene, low-density polyethylene, polypropylene (PP), and polyethylene. Th...

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Published in:Applied Sciences
Main Authors: Keon-Hee Park, Seung-Won Lee, Hae-Jong Kim, Jang-Seob Lim
Format: Article
Language:English
Published: MDPI AG 2023-12-01
Subjects:
Online Access:https://www.mdpi.com/2076-3417/14/1/3
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author Keon-Hee Park
Seung-Won Lee
Hae-Jong Kim
Jang-Seob Lim
author_facet Keon-Hee Park
Seung-Won Lee
Hae-Jong Kim
Jang-Seob Lim
author_sort Keon-Hee Park
collection DOAJ
container_title Applied Sciences
description Various statistical distributions, such as Weibull, log-normal, and exponential functions, are frequently employed to interpret the dielectric breakdown (BD) strength data of insulating materials, including cross-linked polyethylene, low-density polyethylene, polypropylene (PP), and polyethylene. This study aimed to determine a suitable statistical distribution for analyzing the dielectric BD strength data of PP insulators before and after thermal degradation. Dielectric BD strength tests were conducted on thermally deteriorated PP insulators under various degradation conditions. Additionally, a coefficient of determination was employed to assess the compatibility between the dielectric BD strength data and the statistical distribution of PP insulators before and after thermal degradation. The test results indicate that the coefficient of determination for alternating current BD strength data was 0.955 in the log-normal distribution before degradation and 0.929 in the Weibull distribution after degradation. Consequently, in the analysis of the PP insulation breakdown data, the log-normal distribution was found to be suitable for data before degradation, while the Weibull distribution was deemed suitable for data after degradation. These results can lead to lower errors in the power system design process, enhancing reliability when analyzing the BD strength data of insulation materials.
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spelling doaj-art-c1bd5b2ab2604e6ebbf20676d4bf25dd2025-08-19T21:48:58ZengMDPI AGApplied Sciences2076-34172023-12-01141310.3390/app14010003Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of PolypropyleneKeon-Hee Park0Seung-Won Lee1Hae-Jong Kim2Jang-Seob Lim3Division of Marine Mechatronics, Mokpo National Maritime University, Mokpo-si 58654, Republic of KoreaPower Cable Research Center, Korea Electrotechnology Research Institute, Changwon-si 51543, Republic of KoreaPower Cable Research Center, Korea Electrotechnology Research Institute, Changwon-si 51543, Republic of KoreaDivision of Marine Mechatronics, Mokpo National Maritime University, Mokpo-si 58654, Republic of KoreaVarious statistical distributions, such as Weibull, log-normal, and exponential functions, are frequently employed to interpret the dielectric breakdown (BD) strength data of insulating materials, including cross-linked polyethylene, low-density polyethylene, polypropylene (PP), and polyethylene. This study aimed to determine a suitable statistical distribution for analyzing the dielectric BD strength data of PP insulators before and after thermal degradation. Dielectric BD strength tests were conducted on thermally deteriorated PP insulators under various degradation conditions. Additionally, a coefficient of determination was employed to assess the compatibility between the dielectric BD strength data and the statistical distribution of PP insulators before and after thermal degradation. The test results indicate that the coefficient of determination for alternating current BD strength data was 0.955 in the log-normal distribution before degradation and 0.929 in the Weibull distribution after degradation. Consequently, in the analysis of the PP insulation breakdown data, the log-normal distribution was found to be suitable for data before degradation, while the Weibull distribution was deemed suitable for data after degradation. These results can lead to lower errors in the power system design process, enhancing reliability when analyzing the BD strength data of insulation materials.https://www.mdpi.com/2076-3417/14/1/3AC breakdown strengthdielectric breakdownpolypropylene (PP)degradationWeibull distributiongoodness of fit
spellingShingle Keon-Hee Park
Seung-Won Lee
Hae-Jong Kim
Jang-Seob Lim
Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of Polypropylene
AC breakdown strength
dielectric breakdown
polypropylene (PP)
degradation
Weibull distribution
goodness of fit
title Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of Polypropylene
title_full Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of Polypropylene
title_fullStr Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of Polypropylene
title_full_unstemmed Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of Polypropylene
title_short Reliability Assessment of Statistical Distributions for Analyzing Dielectric Breakdown Strength of Polypropylene
title_sort reliability assessment of statistical distributions for analyzing dielectric breakdown strength of polypropylene
topic AC breakdown strength
dielectric breakdown
polypropylene (PP)
degradation
Weibull distribution
goodness of fit
url https://www.mdpi.com/2076-3417/14/1/3
work_keys_str_mv AT keonheepark reliabilityassessmentofstatisticaldistributionsforanalyzingdielectricbreakdownstrengthofpolypropylene
AT seungwonlee reliabilityassessmentofstatisticaldistributionsforanalyzingdielectricbreakdownstrengthofpolypropylene
AT haejongkim reliabilityassessmentofstatisticaldistributionsforanalyzingdielectricbreakdownstrengthofpolypropylene
AT jangseoblim reliabilityassessmentofstatisticaldistributionsforanalyzingdielectricbreakdownstrengthofpolypropylene