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Use of generalized linear models and digital data in a forest inventory ofnorthern Utah

机译:在犹他州北部的森林清单中使用广义线性模型和数字数据

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Forest inventories, like those conducted by the Forest Service's Forest Inventory and Analysis Program (FIA) in the Rocky Mountain Region, are under increased pressure to produce better information at reduced costs. Here we describe our efforts in Utah to merge satellite-based information with forest inventory data for the purposes of reducing the costs of estimates of forest population totals and providing spatial depiction of forest resources. We illustrate how generalized linear models can be used to construct approximately unbiased and efficient estimates of population totals while providing a mechanism for prediction in space for mapping of forest structure. We model forest type and timber volume of five tree species groups as functions of a variety of predictor variables in the northern Utah mountains. Predictor variables include elevation, aspect, slope, geographic coordinates, as well as vegetation cover types based on satellite data from both the Advanced Very High Resolution Radiometer (AVHRR) and Thematic Mapper (TM) platforms. We examine the relative precision of estimates of area by forest type and mean cubic-foot volumes under six different models, including the traditional double sampling for stratification strategy. Only very small gains in precision were realized through the use of expensive photointerpreted or TM-based data for stratification, while models based on topography and spatial coordinates alone were competitive. We also compare the predictive capability of the models through various map accuracy measures. The models including the TM-based vegetation performed best overall, while topography and spatial coordinates alone provided substantial information at very low cost.
机译:像落基山区森林服务处的森林清单和分析计划(FIA)所进行的那样,森林清单正面临着越来越大的压力,他们需要以更低的成本获得更好的信息。在这里,我们描述了我们在犹他州将基于卫星的信息与森林清单数据进行合并的工作,目的是减少估计森林人口总数的成本并提供森林资源的空间描述。我们说明了如何使用广义线性模型来构建近似无偏和有效的种群总数估算,同时提供一种用于森林结构映射的空间预测机制。我们对犹他州北部山区五种树种的森林类型和木材量进行建模,作为各种预测变量的函数。预测变量包括海拔,纵横比,坡度,地理坐标以及基于来自超高分辨率高分辨率辐射计(AVHRR)和主题映射器(TM)平台的卫星数据的植被覆盖类型。我们研究了六种不同模型下按森林类型和平均立方英尺体积估算面积的相对精度,包括传统的分层策略双重抽样。通过使用昂贵的照片解释或基于TM的数据进行分层,只能获得非常小的精度提高,而仅基于地形和空间坐标的模型才具有竞争力。我们还通过各种地图准确性度量来比较模型的预测能力。包括基于TM的植被在内的模型总体上表现最佳,而仅地形和空间坐标就能以非常低的成本提供大量信息。

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