...
首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Extracting LiDAR indices to characterise multilayered forest structure using mixture distribution functions
【24h】

Extracting LiDAR indices to characterise multilayered forest structure using mixture distribution functions

机译:使用混合分布函数提取LiDAR指数以表征多层森林结构

获取原文
获取原文并翻译 | 示例

摘要

Discrete Light Detection and Ranging (LiDAR) data is used to stratify a multilayered eucalyptus forest and characterise the structure of the vertical profile. We present a methodology that may prove useful for a very broad range of forest management applications, particularly for timber inventory evaluation and forest growth modelling. In this study, we use LiDAR data to stratify a multilayered eucalyptus forest and characterise the structure of specific vegetation layers for forest hydrology research, as vegetation dynamics influence a catchment's streamflow yield. A forest stand's crown height, density, depth, and closure, influence aerodynamic properties of the forest structure and the amount of transpiring leaf area, which in turn determine evapotranspiration rates. We present a methodology that produces canopy profile indices of understorey and overstorey vegetation using mixture models with a wide range of theoretical distribution functions. Mixture models provide a mechanism to summarise complex canopy attributes into a short list of parameters that can be empirically analysed against stand characteristics. Few studies have explored theoretical distribution functions to represent the vertical profile of vegetation structure in LiDAR data. All prior studies have focused on a Weibull distribution function, which is unimodal. In a complex native forest ecosystem, the form of the distribution of LiDAR points may be highly variable between forest types and age classes. We compared 44 probability distributions within a two component mixture model to determine the most suitable bimodal distributions for representing LiDAR density estimates of Mountain Ash forests in south-eastern Australia. An elimination procedure identified eleven candidate distributions for representing the eucalyptus component of the mixture model. We demonstrate the methodology on a sample of plots to predict overstorey stand volumes and basal area, and understorey basal area of 18-, 37-, and 70-year old Mountain Ash forest with variable density classes. The 70-year old forest has been subjected to a range of treatments including: thinning of the eucalyptus layer with two distinct retention rates, removal of the understorey, and clear felling of patches that have 37year old regenerating forest. We demonstrate that the methodology has clear potential, as observed versus predicted values of eucalyptus basal area and stand volume were highly correlated, with bootstrap based r~2 ranging from 0.61 to 0.89 and 0.67 to 0.88 respectively. Non-eucalyptus basal area r~2 ranged from 0.5 to 0.91.
机译:离散光检测和测距(LiDAR)数据用于对多层桉树林进行分层,并表征垂直剖面的结构。我们提出的方法论可能被证明对非常广泛的森林管理应用特别是木材清单评估和森林生长建模有用。在这项研究中,我们使用LiDAR数据对桉树多层林进行分层,并为森林水文学研究表征特定植被层的结构,因为植被动态影响流域的径流产量。林分冠的高度,密度,深度和封闭度会影响森林结构的空气动力学特性和透叶面积,进而决定蒸散速率。我们提出了一种使用具有广泛理论分布函数的混合模型产生下层和上层植被的冠层剖面指数的方法。混合物模型提供了一种机制,可以将复杂的树冠属性汇总为简短的参数列表,可以根据林分特性进行经验分析。很少有研究探索理论分布函数来表示LiDAR数据中植被结构的垂直剖面。所有先前的研究都集中在单峰的威布尔分布函数上。在复杂的原生森林生态系统中,LiDAR点的分布形式在森林类型和年龄类别之间可能存在很大差异。我们在两个成分的混合模型中比较了44个概率分布,以确定最合适的双峰分布,以表示澳大利亚东南部山灰森林的LiDAR密度估计。消除程序确定了11种候选分布,以表示混合物模型的桉树成分。我们在样地样本上展示了该方法论,以预测18、37和70年龄的山灰林具有不同密度等级的超高林分蓄积量和基础面积,以及低层基础面积。已有70年历史的森林经过了一系列处理,其中包括:桉树层的变薄,具有两种截然不同的保留率;清除了下层;清除了拥有37年历史的可再生森林的斑块。我们证明该方法具有明显的潜力,因为观察到的与桉树基部面积和林分体积的预测值高度相关,基于bootstrap的r〜2分别为0.61至0.89和0.67至0.88。非桉树基底面积r〜2在0.5到0.91之间。

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