Title :
Effect of Modeling Non-Normality and Stochastic Dependence of Variables on Distribution Transformer Loss of Life Inference
Author :
Agah, Seyed Mohammad Mousavi ; Abyaneh, Hossein Askarian
Author_Institution :
Dept. of Electr. Eng., Amirkabir Univ. of Technol., Tehran, Iran
Abstract :
This paper presents a method for transformer loss-of-life inference by integrating stochastic dependence between non-normal transformer load and ambient temperature into analysis. The non-normally distributed variables are transformed to a common domain (i.e., the rank domain) by applying the cumulative density function transformation. In this domain, special functions, copulas, are used for modeling stochastic dependence between the variables. Extensive research data have been used to obtain quantitative results for realistic test cases of distribution transformers serving various types of low-voltage consumers. The results indicate that the accuracy of loss-of-life inference is very sensitive to normality and independence assumptions which are generally adopted in previous studies. It is demonstrated that such assumptions may lead to misleading results compared to the actual conditions. Thus, the proposed method, which is based on no restrictive assumption, emerges as a more accurate solution for transformer loss-of-life inference.
Keywords :
inference mechanisms; power transformers; stochastic processes; ambient temperature; cumulative density function transformation; distribution transformer; loss of life inference; low voltage consumers; nonnormal transformer load; stochastic dependence; Load modeling; Power transformers; Powert distribution; Stochastic processes; Temperature distribution; Temperature measurement; Uncertainty; Ambient temperature; correlation; distribution transformers; loss of life; transformer loading; uncertainty;
Journal_Title :
Power Delivery, IEEE Transactions on
DOI :
10.1109/TPWRD.2012.2201262