Title | Intelligent fault diagnosis technology of power transformer based on Artificial Intelligence |
Publication Type | Conference Paper |
Year of Publication | 2022 |
Authors | Feng, Li, Bo, Ye |
Conference Name | 2022 IEEE 6th Information Technology and Mechatronics Engineering Conference (ITOEC) |
Keywords | artificial intelligence, artificial intelligence security, artificial neural network, Artificial neural networks, composability, fault diagnosis, fault location, Human Behavior, Metrics, Neurons, Power systems, power transformers, pubcrawl, Reliability engineering, resilience, Resiliency, Training, transformer |
Abstract | Transformer is the key equipment of power system, and its stable operation is very important to the security of power system In practical application, with the progress of technology, the performance of transformer becomes more and more important, but faults also occur from time to time in practical application, and the traditional manual fault diagnosis needs to consume a lot of time and energy. At present, the rapid development of artificial intelligence technology provides a new research direction for timely and accurate detection and treatment of transformer faults. In this paper, a method of transformer fault diagnosis using artificial neural network is proposed. The neural network algorithm is used for off-line learning and training of the operation state data of normal and fault states. By adjusting the relationship between neuron nodes, the mapping relationship between fault characteristics and fault location is established by using network layer learning, Finally, the reasoning process from fault feature to fault location is realized to realize intelligent fault diagnosis. |
DOI | 10.1109/ITOEC53115.2022.9734331 |
Citation Key | feng_intelligent_2022 |