Incipient Fault Protection Using Artificial Intelligence Techniques
الكلمات المفتاحية:
artificial neural network (ANN)، artificial neural network and expert system (ANNEPS)، power systemsالملخص
In the field of incipient fault protection, various sources can cause failures, such as lightning, switching transients, mechanical imperfections, and chemical breakdown. To guard against these errors, Buchholz relays and pressure relief devices have been utilized. However, in recent years, preventive health measures have gained more attention. One popular approach is the implementation of the Dissolved Gas Analysis (DGA) system, which detects incipient faults by analyzing the gases dissolved in the transformer oil. In this context, the use of artificial neural networks (ANN) and artificial neural networks combined with expert systems (ANNEPS) has shown promise for power transformer protection against incipient faults using DGA. Power transformers, especially large oil-filled ones, are commonly subjected to DGA for identifying and diagnosing early-stage faults. By analyzing the dissolved gases and employing interpretation systems, such as ANNEPS, unexpected failures can be prevented. The objective of this research is to identify internal problems within transformers, and an ANN structure has been specifically developed for this purpose. The ANNEPS approach combines the outputs of ANN and expert systems to ensure rapid and accurate identification of various types of transformer failures. By comparing the results of both computational methods, a reliable assessment can be made, enhancing the effectiveness of incipient fault protection strategies. Overall, the combination of DGA and advanced techniques like ANN and ANNEPS provides a robust approach to detect and prevent incipient faults in power transformers. These methods offer improved accuracy and promptness in identifying transformer failures, ultimately contributing to the reliability and efficiency of power systems.
التنزيلات
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الحقوق الفكرية (c) 2025 shaymaa hadi, Israa Zamil Chyad, Ayodeji Olalekan Salau (Author)

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