首页> 外文期刊>Forests >Assessing the Feasibility of Low-Density LiDAR for Stand Inventory Attribute Predictions in Complex and Managed Forests of Northern Maine, USA
【24h】

Assessing the Feasibility of Low-Density LiDAR for Stand Inventory Attribute Predictions in Complex and Managed Forests of Northern Maine, USA

机译:在美国缅因州北部复杂和人工林中评估低密度激光雷达进行林分库存属性预测的可行性

获取原文
           

摘要

The objective of this study was to evaluate the applicability of using a low-density (1–3 points m−2) discrete-return LiDAR (Light Detection and Ranging) for predicting maximum tree height, stem density, basal area, quadratic mean diameter and total volume. The research was conducted at the Penobscot Experimental Forest in central Maine, where a range of stand structures and species composition is present and generally representative of northern Maine’s forests. Prediction models were developed utilizing the random forest algorithm that was calibrated using reference data collected in fixed radius circular plots. For comparison, the volume model used two sets of reference data, with one being fixed radius circular plots and the other variable radius plots. Prediction biases were evaluated with respect to five silvicultural treatments and softwood species composition based on the coefficient of determination (R2), root mean square error and mean bias, as well as residual scatter plots. Overall, this study found that LiDAR tended to underestimate maximum tree height and volume. The maximum tree height and volume models had R2 values of 86.9% and 72.1%, respectively. The accuracy of volume prediction was also sensitive to the plot type used. While it was difficult to develop models with a high R2, due to the complexities of Maine’s forest structures and species composition, the results suggest that low density LiDAR can be used as a supporting tool in forest management for this region.
机译:这项研究的目的是评估使用低密度(1-3点m −2 )离散返回LiDAR(光检测和测距)预测最大树高,茎密度的适用性,基面积,二次平均直径和总体积。这项研究是在缅因州中部的Penobscot实验林中进行的,那里存在各种林分结构和物种组成,通常代表缅因州北部的森林。利用随机森林算法开发了预测模型,该算法使用在固定半径圆形图中收集的参考数据进行了校准。为了进行比较,该体积模型使用了两组参考数据,其中一组是固定半径的圆形图,另一组是可变半径的图。根据确定系数(R 2 ),均方根误差和均值偏差以及残差散布图,评估了五种造林措施和软木树种组成的预测偏差。总体而言,这项研究发现LiDAR往往低估了最大树的高度和体积。最大树高和体积模型的R 2 值分别为86.9%和72.1%。体积预测的准确性也对所使用的情节类型敏感。尽管由于缅因州森林结构和物种组成的复杂性,很难开发出具有高R 2 的模型,但结果表明,低密度LiDAR可以用作森林管理的支持工具。这个地区。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号