Smart Management and Maintenance Solution for Power Generation Transformers

08/05/2025

Ⅰ. Background and Pain Points
As power generation enterprises scale up and grid intelligence advances, traditional periodic maintenance models struggle to meet the O&M demands of large power transformers:
• ​Delayed Fault Response: Sudden insulation aging or overheating cannot be detected in real time
• ​High Maintenance Costs: Over-maintenance wastes resources, while insufficient maintenance causes unplanned downtime
• ​Fragmented Data Analysis: Isolated data from DGA (Dissolved Gas Analysis), partial discharge tests, etc., lack intelligent cross-diagnosis

II. System Architecture and Core Technologies
(1) Intelligent Sensing Layer
Deploys multi-dimensional IoT terminals:

graph LR 

A[Winding Fiber Optic Temp] --> D[Central Analytics Platform] 

B[DGA Sensor] --> D 

C[Vibration/Noise Monitor] --> D 

E[Core Grounding Current Detector] --> D 

(2) AI Analytics Engine

Module

Core Tech

Function

Condition Assessment

DBN (Deep Belief Network)

Integrates SCADA/online data to generate health indices

Fault Warning

LSTM Time-Series Analysis

Predicts hotspot trends based on temperature/load rates

Life Prediction

Weibull Distribution

Quantifies insulation paper degradation curves

(3) Predictive Maintenance Platform
• ​3D Dashboard: Real-time display of transformer load rates, hotspot temps, and risk levels
• ​Maintenance Decision Tree: Auto-generates work orders based on risk ratings
(e.g., C₂H₂>5μL/L & CO/CO₂>0.3 → Triggers bushing looseness inspection)

III. Core Functional Matrix

Function

Technical Implementation

O&M Value

Panoramic Monitoring

Edge-computing gateways (10ms data acquisition)

100% device status visualization

Smart Diagnostics

IEEE C57.104 + AI correction

92% fault identification accuracy

Predictive Maintenance

RUL prediction via degradation modeling

25% lower maintenance costs

Knowledge Retention

Self-iterating fault case database

60% faster new staff training

IV. Technical Highlights

  1. Multi-physics Coupling Analysis:
    EM-thermal-stress simulation data fed into AI models for early winding deformation alerts (±0.5mm precision)
  2. Blockchain Certification:
    O&M records and test data stored on-chain for ISO 55000 compliance
  3. AR-assisted Repair:
    Hololens overlays 3D fault-point positioning → 40% faster critical repairs

V. Application Results (1,000MW Plant Case)

Metric

Pre-upgrade

Post-upgrade

Improvement

Unplanned Outages

3.2/yr

0.4/yr

↓87.5%

Avg. Repair Time

72 hrs

45 hrs

↓37.5%

Life Prediction Error

±18 months

±6 months

↑67% accuracy

 

Inquiry
Download
IEE-Business is dedicated to serving the personnel in the global power industry.
Join IEE-Business, not only can you discover power equipment and power knowledge, but also canhnd like - minded friends!