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Combining airborne laser scanning and Landsat data for statistical modeling of soil carbon and tree biomass in Tanzanian Miombo woodlands

机译:结合机载激光扫描和Landsat数据,对坦桑尼亚Miombo林地的土壤碳和树木生物量进行统计建模

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BackgroundSoil carbon and biomass depletion can be used to identify and quantify degraded soils, and by using remote sensing, there is potential to map soil conditions over large areas. Landsat 8 Operational Land Imager satellite data and airborne laser scanning data were evaluated separately and in combination for modeling soil organic carbon, above ground tree biomass and below ground tree biomass. The test site is situated in the Liwale district in southeastern Tanzania and is dominated by Miombo woodlands. Tree data from 15?m radius field-surveyed plots and samples of soil carbon down to a depth of 30?cm were used as reference data for tree biomass and soil carbon estimations. ResultsCross-validated plot level error (RMSE) for predicting soil organic carbon was 28% using only Landsat 8, 26% using laser only, and 23% for the combination of the two. The plot level error for above ground tree biomass was 66% when using only Landsat 8, 50% for laser and 49% for the combination of Landsat 8 and laser data. Results for below ground tree biomass were similar to above ground biomass. Additionally it was found that an early dry season satellite image was preferable for modelling biomass while images from later in the dry season were better for modelling soil carbon. ConclusionThe results show that laser data is superior to Landsat 8 when predicting both soil carbon and biomass above and below ground in landscapes dominated by Miombo woodlands. Furthermore, the combination of laser data and Landsat data were marginally better than using laser data only.
机译:背景土壤碳和生物量的消耗可用于识别和量化退化的土壤,并且通过使用遥感技术,有可能绘制大范围土壤状况的地图。对Landsat 8 Operational Land Imager卫星数据和机载激光扫描数据分别进行了评估,并结合起来对土壤有机碳,地上树生物量和地上树生物量进行建模。测试地点位于坦桑尼亚东南部的利瓦勒地区,被Miombo林地所占据。半径为15?m的实地测绘的树木数据以及低至30?cm深度的土壤碳样品被用作树木生物量和土壤碳估算的参考数据。结果仅使用Landsat 8预测的土壤有机碳的交叉验证积水平误差(RMSE)为28%,仅使用激光为26%,两者的组合为23%。仅使用Landsat 8时,地上树生物量的样地水平误差为66%,激光为50%,Landsat 8和激光数据的组合为49%。地下树木生物量的结果与地面生物量相似。此外,还发现干旱季节早期的卫星图像更适合用于生物量建模,而干旱季节后期的图像则更适合于土壤碳建模。结论结果表明,在以Miombo林地为主的景观中预测地面以上和地下的土壤碳和生物量时,激光数据优于Landsat 8。此外,激光数据和Landsat数据的组合比仅使用激光数据略胜一筹。

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