2012 ©
             Publication
Journal Publication
Title of Article Predictive Reliability Analysis of Power Distribution Systems Considering the Effects of Seasonal Factors on Outage Data Using Weibull Analysis Combined With Polynomial Regression 
Date of Acceptance 29 November 2023 
Journal
     Title of Journal IEEE Access 
     Standard SCOPUS 
     Institute of Journal the IEEE (Institute of Electrical and Electronics Engineers) 
     ISBN/ISSN 2169-3536 
     Volume 11 
     Issue  
     Month November
     Year of Publication 2023 
     Page 138261 - 138278 
     Abstract In this study, the reliability of power distribution systems is analyzed using a novel strategy of predictive reliability analysis based on the lifetime failure rate cycle in a bathtub curve shape and considering the standard Weibull distribution to determine the trend of the failure rate in each period using median rank regression for parameter estimation. The proposed strategy consists of three processes. The first process involves separating the external and internal factors that influence power outages in the power distribution system from the seasonal multimodal shape in the empirical distribution of the dataset using a bisection algorithm of residuals of polynomial regression. Second, clustering and characterization of each component in the power distribution system according to the condition of the total factor bathtub curve leads to the introduction of the use of shape parameters as the total factor deterioration index (TFDI) with linear regression trends of log scale shape parameters of the useful period. A simple approximation of the system’s overall total factor bathtub curve using a sixty-year forecast is the final process presented that can be used in reliability planning to address lifecycle risks. The actual time-to-outage dataset between 2015 and 2020 of the Provincial Electricity Authority, Region 1, Northeastern Thailand, which covers the area of distribution line life in the three periods of the bathtub curve, was used as the test data. The numerical results obtained from the proposed process provide a comprehensive prediction of the reliability of the electrical distribution system for risk response planning. The results show the proportion and amount of internal deterioration versus external disturbances, helps to group components according to health and usability and prioritizes them according to risk. Furthermore, it clarifies the important moments of status transition. All of these factors make it possible to improve reliability in the right place at the right time. Every method that we have chosen to improve for use in analysis is simple, provides a clear visualization of every step, and can be used in practice. 
     Keyword Reliability , Power system reliability , Market research , Weibull distribution , Reliability engineering , Power distribution , Failure analysis , Prediction methods , Power distribution 
Author
637040029-9 Mr. YUTTANA DECHGUMMARN [Main Author]
Engineering Doctoral Degree

Reviewing Status มีผู้ประเมินอิสระ 
Status ตีพิมพ์แล้ว 
Level of Publication นานาชาติ 
citation false 
Part of thesis true 
Attach file
Citation 0