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  • Visual high-voltage main transformer safety monitoring system
Visual high-voltage main transformer safety monitoring system
The system achieves synchronous data collection and directional analysis of the additional electromagnetic oscillation signals of the transformer by applying the matrix arrangement of electromagnetic oscillation sensors, realizes the diagnosis and early warning of latent faults during the operation of the transformer, and automatically pushes operation and maintenance suggestions to avoid major damage accidents of the transformer. The grounding microcurrent module is used to promptly capture the discharge faults of the transformer. Timely identify internal and external faults of the transformer, such as winding deformation, core faults, and internal and bushing discharge faults of the transformer for monitoring and early warning. Fault monitoring and early warning for issues such as moisture or damage to the internal insulation of the transformer, multi-point grounding of the core, foreign objects in the box, and sludge deposition in the oil tank.
  • Product Details

Key Technologies

Apply the principle of electromagnetic oscillation to fault diagnosis; Introducing intelligent micro-current monitoring technology for transformer core grounding to detect minor discharges. Deeply develop the online intelligent diagnosis function of transformer chromatography; Develop an expert knowledge base for various internal and external faults of transformers, and establish multi-source coupling analysis and diagnosis models for electromagnetic oscillation, chromatography online and microcurrent.

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Expected effect

Performs synchronous data acquisition and directional analysis of electromagnetic oscillation signals associated with the transformer. Continuously monitors the degradation of transformer insulating oil composition and intelligently analyzes chromatographic data characterizing internal faults to conduct qualitative assessment of significant discharge anomalies. Employs micro-current sensors to promptly detect both internal and external discharge faults within the transformer.

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