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    空地协同多源遥感矿区乔木地上生物量监测方法

    Research on monitoring above-ground biomass of deciduous trees in mining areas using integrated air-ground multisource remote sensing data

    • 摘要: 矿区生态恢复是矿产资源可持续开发的重要保障,植被生物量是评定生态恢复状态的关键指标。传统生物量估算依赖于实地调查数据,存在时间成本高、劳动强度大的局限性,因此采用无人机搭载多光谱、激光雷达,结合手持式激光雷达扫描技术,获取山西省晋中市寿阳县平舒煤矿常绿乔木与落叶乔木的相关参数。通过皮尔逊相关性筛选模型变量,在单木尺度上运用多元线性逐步回归、随机森林方法,完成常绿乔木以及落叶乔木的地上生物量模型构建。研究表明:基于随机森林所构建的乔木地上生物量模型精度最高,其中常绿乔木地上生物量估测模型R2=0.78,RMSE=11.043 kg/株,落叶乔木地上生物量估测模型R2=0.74,RMSE=33.29 kg/株。利用最大似然算法(Maximum Likelihood Classification, MLC)对特征组合的多光谱影像进行树种识别,结果显示引入近红外波段、红边波段、归一化植被指数(Normalized Difference Vegetation Index,NDVI),可有效提高树种识别精度。最后,利用随机森林算法所构建的单木地上生物量模型,配合分水岭分割算法获取树冠面积,进而求取单木生物量密度,并按地类逐像素实现研究区地上生物量反演。该研究可为矿区地上生物量监测与分析提供参考,为矿区生态修复、环境保护效果的定量评价提供数据支撑。

       

      Abstract: Mine ecological restoration is an essential guarantee for sustainable mineral resource development, and vegetation biomass serves as a key indicator to evaluate the effectiveness of ecological restoration. Traditional biomass estimation relies on field survey data, which suffers from limitations such as high time costs and labor intensiveness. Multi-spectral and LiDAR sensors mounted on drones, combined with hand-held LiDAR scanning, were used to collect parameters of evergreen and deciduous trees at the Pingshu Coal Mine in Shouyang County, Jinzhong City, Shanxi Province. By applying Pearson correlation analysis to select model variables, above-ground biomass models for evergreen and deciduous trees were developed at the individual tree scale using multiple linear stepwise regression and random forest methods. Results show that the random forest-based above-ground biomass model achieved the highest accuracy. Specifically, the evergreen tree model yielded an R2 of 0.78 and an RMSE of 11.043 kg/tree, while the deciduous tree model resulted in an R2 of 0.74 and an RMSE of 33.29 kg/tree. The study also applied the Maximum Likelihood Classification (MLC) algorithm to multispectral imagery with feature combinations for tree species identification. Results indicate that incorporating the near-infrared band, red-edge band, and the Normalized Difference Vegetation Index (NDVI) significantly improved the accuracy of tree species identification. Additionally, the random forest-based single-tree above-ground biomass model, combined with the watershed segmentation algorithm for canopy area estimation, was used to calculate single-tree biomass density. Subsequently, an above-ground biomass inversion of the study area was performed on a per-pixel basis according to land categories. The study provides a reference for monitoring and analyzing above-ground biomass in mining areas and offers data support for quantitatively evaluating the effectiveness of ecological restoration and environmental protection in mining regions.

       

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