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首页> 外文期刊>Canadian Journal of Forest Research >Integrating forest inventory data and MODIS data to map species-level biomass in Chinese boreal forests
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Integrating forest inventory data and MODIS data to map species-level biomass in Chinese boreal forests

机译:将森林库存数据和MODIS数据集成到中国北方森林中的物种级生物量

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摘要

Timely and accurate knowledge of species-level biomass is essential for forest managers to sustain forest resources and respond to various forest disturbance regimes. In this study, maps of species-level biomass in Chinese boreal forests were generated by integrating Moderate Resolution Imaging Spectroradiometer (MODIS) images with forest inventory data using k nearest neighbor (kNN) methods and evaluated at different scales. The performance of 630 kNN models based on different distance metrics, k values, and temporal MODIS predictor variables were compared. Random Forest (RF) showed the best performance among the six distance metrics: RF, Euclidean distance, Mahalanobis distance, most similar neighbor in canonical correlation space, most similar neighbor computed using projection pursuit, and gradient nearest neighbor. No appreciable improvement was observed using multi-month MODIS data compared with using single-month MODIS data. At the pixel scale, species-level biomass for larch and white birch had relatively good accuracy (root mean square deviation & 62.1%), while the other species had poorer accuracy. The accuracy of most species except for willow and spruce was improved up to the ecoregion scale. The maps of species-level biomass captured the effects of disturbances including fire and harvest and can provide useful information for broad-scale forest monitoring over time.
机译:及时,准确地了解物种级生物量对于森林经理,以维持森林资源并对各种森林骚扰制度响应的森林经理至关重要。在这项研究中,通过使用K最近邻(knn)方法与森林库存数据集成了与森林库存数据的中等分辨率成像光谱仪(MODIS)图像并在不同的尺度上进行评估来产生中国北面林的物种级生物质地图。比较了基于不同距离度量,K值和时间MODIS预测变量的630 kNN模型的性能。随机森林(RF)显示了六个距离度量的最佳性能:RF,欧几里德距离,Mahalanobis距离,大多数相似的邻居相关空间,最类似的邻居使用投影追求计算,以及梯度最近的邻居。与使用单月MODIS数据相比,使用多月MODIS数据没有观察到明显的改进。在像素刻度,落叶松和白桦的物种级生物质具有相对良好的精度(根均方偏差& LT; 62.1%),而其他物种的准确性较差。除柳树和云杉之外的大多数物种的准确性得到了改善到eCoregion规模。物种级生物质的地图捕获了扰乱包括火灾和收获的效果,并且可以随着时间的推移提供广泛森林监测的有用信息。

著录项

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  • 作者单位

    Inst Appl Ecol CAS Key Lab Forest Ecol &

    Management Shenyang 110016 Liaoning Peoples R China;

    Univ Missouri Sch Nat Resources 203 Anheuser Busch Nat Resources Bldg Columbia MO 65211 USA;

    Univ Chinese Acad Sci Beijing 100049 Peoples R China;

    US Geol Survey Geosci &

    Environm Change Sci Ctr POB 25046 MS 980 Denver CO 80225 USA;

    US Geol Survey Geosci &

    Environm Change Sci Ctr POB 25046 MS 980 Denver CO 80225 USA;

    US Geol Survey Western Geog Sci Ctr 345 Middlefield Rd Menlo Pk CA 94025 USA;

    US Forest Serv USDA Reg Remote Sensing Lab 5 3237 Peacekeeper Way Suite 201 Mcclellan CA 95652 USA;

    Jiangxi Normal Univ Sch Geog &

    Environm 99 Ziyang Rd Nanchang 330022 Jiangxi Peoples R China;

    Inst Appl Ecol CAS Key Lab Forest Ecol &

    Management Shenyang 110016 Liaoning Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 林业;
  • 关键词

    species-level biomass; MODIS; Chinese boreal forest; Random Forest (RF); kNN;

    机译:物种级生物质;Modis;中国北方森林;随机森林(RF);knn;

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