Abstract
Compared with conventional methods of fault diagnosis for power transformers, which have defects such as imperfect encoding and too absolute encoding boundaries, this paper systematically discusses various intelligent approaches applied in fault diagnosis and decision making for large oil-immersed power transformers based on dissolved gas analysis (DGA), including expert system (EPS), artificial neural network (ANN), fuzzy theory, rough sets theory (RST), grey system theory (GST), swarm intelligence (SI) algorithms, data mining technology, machine learning (ML), and other intelligent diagnosis tools, and summarizes existing problems and solutions. From this survey, it is found that a single intelligent approach for fault diagnosis can only reflect operation status of the transformer in one particular aspect, causing various degrees of shortcomings that cannot be resolved effectively. Combined with the current research status in this field, the problems that must be addressed in DGA-based transformer fault diagnosis are identified, and the prospects for future development trends and research directions are outlined. This contribution presents a detailed and systematic survey on various intelligent approaches to faults diagnosing and decisions making of the power transformer, in which their merits and demerits are thoroughly investigated, as well as their improvement schemes and future development trends are proposed. Moreover, this paper concludes that a variety of intelligent algorithms should be combined for mutual complementation to form a hybrid fault diagnosis network, such that avoiding these algorithms falling into a local optimum. Moreover, it is necessary to improve the detection instruments so as to acquire reasonable characteristic gas data samples. The research summary, empirical generalization and analysis of predicament in this paper provide some thoughts and suggestions for the research of complex power grid in the new environment, as well as references and guidance for researchers to choose optimal approach to achieve DGA-based fault diagnosis and decision of the large oil-immersed power transformers in preventive electrical tests.
Highlights
Power transformers are one of the most crucial pieces of equipment in a power system, their safe and stable operation plays a significant role in the safe, stable and reliable operation of the whole power system [1]
More roughening classification; Accuracy is unsatisfactory for compound-faults; Incomplete coding, some cases cannot be diagnosed; The attention value and criteria specified for the characteristic gas content are too absolute; Cannot determine the exact location of the faults; Prone to misjudge with a high misjudgment rate; Poor dealing with mixed fault types
On the basis of [115], Zhang et al [37] investigated the application of double hidden-layer neural network in dissolved gas analysis (DGA)-based transformer fault diagnosis, in which the convergence speed and training error of the network with different numbers of hidden layers and same numbers of input and output nodes are compared, and the results show that the proposed method has a better effect in fault diagnosis
Summary
Power transformers are one of the most crucial pieces of equipment in a power system, their safe and stable operation plays a significant role in the safe, stable and reliable operation of the whole power system [1]. During the operation of power transformers, various faults may happen due to destruction of or inappropriate installation and other reasons [2]. In depth discussion of the different fault diagnosis methods of power transformers is a valuable research topic. Power transformers in general have a very long lifespan for the time they go into operation until their final decommissioning (the reference life given by the Southern China Power Grid Jiangmen Bureau is 20 years), they have many different requirements and differences in their overhauling process. We must assess the insulation ageing in transformers in some indirect way
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