کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
705241 | 891313 | 2011 | 9 صفحه PDF | دانلود رایگان |
This paper presents a method for automatic detection and classification of voltage disturbances for problems related to power quality using signal processing techniques and intelligent systems. This support tool for decision making is composed of four modules. The first module continuously evaluates the system's operation state. The second module extracts the essential features from the three-phase voltage signal based on the discrete wavelet transform, multiresolution analysis and entropy norm concepts. The signal signature is processed via standardization and codification in the third module. The fourth module classifies the type of disorder using a Fuzzy-ARTMAP neural network. A total of 7023 power quality events, including voltage swell, voltage sag, outage, harmonics, swell with harmonics, sag with harmonics, oscillatory transient and flicker, were obtained through mathematical models and simulations using the ATP software. To demonstrate the performance of this method, an application is submitted considering a real electric energy distribution system composed of 134 buses with measurements performed on a 13.8 kV and 7.065 MVA feeder. The results indicate that the proposed method is efficient, robust and has high computing performance (low processing time), which allows, a priori, its application in real time.
► The main PQ disturbances were evaluated using intelligent systems.
► Disturbance detection procedure presented high-computing performance.
► Stability and plasticity are attributes of the classification module.
► Results indicate that the proposed method is efficient with low processing time.
► Automatic disturbance diagnosis improves the safety and profitability of utilities.
Journal: Electric Power Systems Research - Volume 81, Issue 12, December 2011, Pages 2057–2065