Intelligent Inspection Solution for Photovoltaic Power Stations

2026-04-23



Overview


Facing challenges such as wide distribution, large number of devices, low efficiency of traditional manual inspection, and high safety risks in photovoltaic power stations, this solution deeply integrates IoT, artificial intelligence and digital twin technologies to build an integrated air-space-ground intelligent inspection system.
By deploying drones, intelligent inspection robots and AI video surveillance equipment, combined with high-precision sensors and a cloud-edge collaborative analysis platform, the solution enables all-weather, full-coverage condition monitoring and anomaly identification for key equipment including PV modules and inverters.
The system supports automatic diagnosis of typical issues such as module hot spots, shading, dust accumulation and electrical faults. It also enables power generation efficiency evaluation and fault prediction based on big data analysis, helping PV plants achieve digital transformation from passive maintenance to proactive early warning and from manual inspection to intelligent operation and maintenance, thus comprehensively improving operational efficiency and power generation revenue.




Solution Value


  • Improve Inspection Efficiency
    Drones and robots work in coordination to enable fast and accurate inspection over large-scale power stations, boosting efficiency by over 80%.
  • Ensure Power Generation Safety
    AI vision intelligently identifies fire hazards, illegal intrusion and other risks, supporting proactive early warning and linked response.
  • Optimize Power Generation Efficiency
    Fault prediction and diagnostic analysis reduce power loss and improve overall system availability and power output.
  • Lower Operation & Maintenance Costs
    Replace high-frequency manual inspections, reduce labor dependence, and cut O&M costs and safety risks.
  • Support Decision Optimization
    Digital twin and big data analytics provide data support for plant operation, equipment renewal and return on investment.




Scenario Images


光伏电站.png



Architecture Diagram


光伏架构.png



Deployment Diagram


光伏拓扑.png

Read91
share