首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >The use of multiscale remote sensing imagery to derive regional estimates of forest growth capacity using 3-PGS
【24h】

The use of multiscale remote sensing imagery to derive regional estimates of forest growth capacity using 3-PGS

机译:利用3-PGS利用多尺度遥感影像得出森林生长能力的区域估计

获取原文
获取原文并翻译 | 示例
       

摘要

A number of process models now exist that estimate carbon and water vapor exchange across a broad array of vegetation. Many of these models can be driven with information derived from satellite sensors. In particular, a large number use the normalized difference vegetation index to infer spatial and temporal shifts in the fraction of visible light intercepted (f phi (p,a.)) by vegetation. We utilized a simplified process model (Physiological Principles Predicting Growth from Satellites), initialized with Advanced Very High Resolution Radiometer normalized difference vegetation index-derived estimates of f phi (p,a.) to estimate at monthly time steps photosynthesis, respiration, and aboveground growth of forest vegetation within a 54,000 km(2) region in southwestern Oregon. We had data available from 755 permanent survey plots to provide an independent estimate of forest growth capacity. In addition. we took advantage of a satellite-derived classification of 14 major forest types to investigate the extent that generalizations might be made about their respective productive capacities. From weather stations and statewide soil surveys. we extrapolated and transformed these sources of data into those required to drive the model (solar radiation, temperature extremes. vapor pressure deficit, and precipitation) and initialize conditions (soil water holding capacity and soil fertility). Within the mountainous region we found considerable variation existed within each 1-km(2) pixel centered on each of the survey plots. Even by excluding comparisons where local variation was high, model predictions of forest growth compared poorly with those estimated from ground survey (r(2) = 0.4). This variation was only partly attributed to variation in canopy f phi (p,a). Local variation in climate and soils played an equal if not greater role. When the sample plots were stratified into 14 broad forest types. within which growth potential varied similarly (coefficient of variation for each of the 14 types averaged 6%), a good relation between predicted and measured forest growth capacity across all types resulted (r(2) = 0.82, P less than or equal to0.01, SE = 1.2 m(3) ha(-1) yr(-1)). The implications of these analyses suggest that: (1) models should be rigorously tested before applying across landscapes: (2) accuracy in locating plots and in extrapolating data limits spatial resolution; (3) soil surveys in mountainous regions are inaccurate and difficult to interpret, (4) mapped vegetation classifications provide a useful level of stratification; and (5) remotely sensed estimates of canopy nitrogen status and biomass increment and canopy nitrogen status are needed to improve and validate regional assessment of growth. Crown Copyright (C) 2001 Published by Elsevier Science Ireland Ltd. All rights reserved. [References: 66]
机译:现在,存在许多过程模型,这些模型可估计各种植被之间的碳和水蒸气交换。这些模型中的许多模型都可以由卫星传感器提供的信息来驱动。特别是,大量使用归一化差异植被指数来推断植被拦截的可见光部分(f phi(p,a。))的时空变化。我们利用简化的过程模型(从卫星预测生长的生理原理),通过先进的超高分辨率辐射计归一化差异植被指数得出的f phi(p,a。)进行初始化,以按月进行光合作用,呼吸作用和地上时间估算俄勒冈州西南部54,000 km(2)区域内森林植被的生长。我们从755个永久性调查区获得了数据,以提供对森林生长能力的独立估计。此外。我们利用卫星衍生的14种主要森林类型的分类来研究对它们各自的生产能力进行概括的程度。来自气象站和全州土壤调查。我们推断出这些数据源并将其转换为驱动模型(太阳辐射,极端温度,蒸气压赤字和降水)和初始化条件(土壤持水量和土壤肥力)所需的数据源。在山区,我们发现以每个调查图为中心的每个1 km(2)像素内存在很大的差异。即使排除局部变化较大的比较,对森林生长的模型预测与根据地面调查所估计的结果也较差(r(2)= 0.4)。这种变化仅部分归因于冠层f phi(p,a)的变化。即使不是更大,气候和土壤的局部变化也起着相等的作用。当样地被分为14种广泛的森林类型时。在该区域内,生长潜力的变化类似(14种类型中每种类型的变化系数平均为6%),所有类型的预测和测量森林生长能力之间都具有良好的联系(r(2)= 0.82,P小于或等于0。 01,SE = 1.2 m(3)ha(-1)yr(-1))。这些分析的含义表明:(1)在应用跨景观之前应严格测试模型:(2)定位地块和推断数据的准确性限制了空间分辨率; (3)山区土壤调查不准确且难以解释;(4)映射的植被分类提供了有用的分层水平; (5)需要遥感估算冠层氮状况以及生物量增加和冠层氮状况,以改善和验证区域生长评估。 Crown版权所有(C)2001,由Elsevier Science Ireland Ltd.发布。保留所有权利。 [参考:66]

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