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基于无人机与AI的县域光伏电站智慧运维研究与实践

Research and Practice on Intelligent Operation and Maintenance of County-Level Photovoltaic Power Stations Based on UAVs and AI

  • 摘要: 县域分布式光伏电站是农村新能源集成式发展的重要载体,其运维质量直接决定清洁能源供给的稳定性与经济性。针对当前县域光伏电站“小、散、远”导致的运维效率低、故障响应慢、成本居高不下等问题,文章系统构建了“巡检−感知−分析−决策−执行”“五位一体”的智慧运维理论体系,设计了基于无人机巡检、人工智能及大数据技术的县域光伏电站智慧运维总体架构,架构涵盖无人机移动感知层、固定监测层、数据服务层和应用服务层。以某华东山地县域光伏集群为研究对象,分析显示该系统可使组件缺陷识别准确率提升至97%以上,运维成本降低约三分之一,有效解决县域光伏运维的痛点问题,为类似县域光伏电站的高效运营提供可参考的样本。

     

    Abstract: County-level distributed photovoltaic (PV) power stations serve as a crucial carrier for the integrated development of new energy in rural areas, and the quality of their operation and maintenance (O&M) directly determines the stability and economy of clean energy supply. To address the problems such as low O&M efficiency, slow fault response, and persistently high costs caused by the “small-scale, scattered, and remote” characteristics of current county-level PV power stations, this paper systematically constructs a “five-in-one” intelligent O&M theoretical system of “inspection, perception, analysis, decision, and execution”. It also designs an overall architecture for the intelligent O&M of county-level PV power stations based on UAV inspection, artificial intelligence, and big data technologies, which covers the UAV mobile perception layer, fixed monitoring layer, data service layer, and application service layer. Taking a PV cluster in a mountainous county in East China as the research object, the analysis shows that the system improves the accuracy of component defect identification to over 97% and reduces O&M costs by approximately one-third. This effectively solves the key pain points in county-level PV O&M and provides a reference model for the efficient operation of similar county-level PV power stations.

     

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