弹性网络和XGBoost联合的GF-1卫星滩涂光伏提取方法

A Remote Sensing Methodology Based on Elastic Net and XGBoost for Tidal Flat Photovoltaic Extraction Using GF-1 Satellite Imagery

  • 摘要: 卫星遥感技术是滩涂光伏监测的主要技术手段,但光伏遥感的研究主要聚焦于陆地光伏。滩涂光伏具有明显不同于陆地光伏的特征,而且其背景环境复杂,准确提取难度大。针对该问题,本文基于高分一号(GF-1)卫星遥感数据,利用弹性网络开展了滩涂光伏空谱响应特征遴选,遴选出蓝光波段反射率、绿光波段反射率、均值、归一化水体指数(Normalized Difference Water Index, NDWI)、信息熵、红蓝波段差和比,以及亮度七个可表征滩涂光伏的特征,并基于XGBoost算法构建了滩涂光伏提取方法。实验结果表明,本文所提方法在不同滩涂光伏区域均取得了较好的提取效果,召回率达86.28%,F1分数达0.91;与支持向量机(Support Vector Machine, SVM)、随机森林算法(Random Forest, RF)相比,本文所提方法的召回率和F1分数分别提高10%和7%以上。该方法具有误提率低、边缘提取精度高和训练速度快等优势,可为滩涂光伏遥感监测提取提供有效的技术支撑。

     

    Abstract: Satellite remote sensing technology serves as the primary methodology for monitoring tidal flat photovoltaics, but the research on photovoltaic remote sensing mainly focuses on land-based systems. While the characteristics of tidal flat photovoltaic are obviously different from that of land photovoltaic, and its background environment is complex, so it is difficult to extract accurately. To solve this problem, based on the remote sensing data of Gaofen-1 (GF-1) Satellite, this paper uses elastic net to select the relevant spatial spectrum response characteristics of tidal flat photovoltaic, and selects seven features that can characterize tidal flat photovoltaic, namely blue band reflectance, green band reflectance, the mean value, Normalized Difference Water Index (NDWI), information entropy, the difference and ratio of red and blue bands, and brightness. On this basis, this paper develops the tidal flat photovoltaic remote sensing extraction method based on extreme gradient boosting algorithm. The experimental findings demonstrate that the proposed method exhibits robust extraction performance across diverse tidal flat photovoltaic regions, achieving an overall recall of 86.28% and an F1-Score of 0.91. Compared to Support Vector Machine (SVM) and Random Forest algorithms (RF), the recall and F1-Score are improved by more than 10% and 7%, respectively. Additionally, the method exhibits the advantages of low false extraction rate, fine edge extraction and fast training speed, making it an effective technical solution for tidal flat photovoltaic remote sensing monitoring and extraction.

     

/

返回文章
返回