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Use of LiDAR to estimate stand characteristics for thinning operations in young Douglas-fir plantations

机译:利用LiDAR估算道格拉斯冷杉幼林抚育间伐的林分特征

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Background Light Detection and Ranging (LiDAR) has been successfully used to describe a wide range of forest metrics at local, regional and national scales. However, little research has used this technology in young Douglas-fir stands to describe key stand characteristics used as criterion for operational thinning. The objective of this research was to develop models of Douglas-fir mean top height, basal area, volume, mean diameter (at breast height), green crown height and stand density from LiDAR and stand information. Methods Data for this study were obtained from four widely separated young (age range of 9 to 17years) Douglas-fir plantations in the South Island, New Zealand. LiDAR was acquired for the entire area and stand metrics were measured within 122 plots established across the study area. Spatially synchronous stand and LiDAR metrics were extracted from the plots. Using this dataset, multiple regression models were developed for each of the six stand metrics. Results The final models constructed for mean top height, green crown height, total stem volume, mean diameter, basal area, and stand density had R2 values of 0.85, 0.79, 0.86, 0.86, 0.84 and 0.55, respectively, with root mean square errors of 1.02m, 0.427m, 20.2m3 ha-1, 13.9mm, 3.81m2 ha-1 and 355 stems ha-1, respectively. With the exception of stand density, all relationships were relatively unbiased. Variables with the greatest contribution (with the partial R2 in brackets) to models of mean top height, green crown height, volume, mean diameter and basal area included the 75th (0.85), 1st (0.76), 10th (0.83), 95th (0.74), and 10th (0.72) LiDAR height percentiles. The LiDAR height interquartile distance was the most important contributor (partial R2?=?0.33) to the model of stand density. Conclusion With the exception of stand density, the final models for stand metrics were sufficiently precise to be used for scheduling thinning operations. This study demonstrates the utility of LiDAR to accurately estimate key structural attributes of young Douglas-fir and to assist with forest management over a widely dispersed resource.
机译:背景光检测和测距(LiDAR)已成功用于描述地方,区域和国家范围内的各种森林指标。但是,很少有研究在幼小的道格拉斯冷杉林中使用该技术来描述关键林分特性,将其用作减薄的标准。这项研究的目的是根据LiDAR和林分信息开发道格拉斯冷杉平均最高身高,基础面积,体积,平均直径(胸高),生冠高度和林分密度的模型。方法:本研究的数据来自新西兰南岛的四个分开的年轻(9至17岁的年龄)花旗松人工林。整个区域都采集了LiDAR,并在研究区域内建立的122个样地中测量了林分指标。从地块中提取空间同步站和LiDAR指标。使用该数据集,为六个展位指标的每一个开发了多个回归模型。结果构建的平均模型的平均顶部高度,绿色树冠高度,总茎体积,平均直径,基部面积和林分密度的最终模型的R2值分别为0.85、0.79、0.86、0.86、0.84和0.55,均方根误差分别为1.02m,0.427m,20.2m3 ha-1、13.9mm,3.81m2 ha-1和355个茎ha-1。除了林分密度外,所有关系都相对公正。对平均顶部高度,生冠高度,体积,平均直径和基础面积模型的贡献最大的变量(括号内为部分R2)包括第75(0.85),第1(0.76),第10(0.83),第95( 0.74)和第十(0.72)LiDAR高度百分比。 LiDAR高度四分位数距离是林分密度模型的最重要因素(部分R2α=α0.33)。结论除了林分密度外,林分指标的最终模型足够精确,可以用于计划稀疏操作。这项研究证明了LiDAR可以准确估算道格拉斯冷杉幼树的关键结构属性,并有助于在广泛分散的资源上进行森林管理。

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