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Evaluation of a Regional Monitoring Program's Statistical Power to Detect Temporal Trends in Forest Health Indicators

机译:评估区域监测计划的统计能力以发现森林健康指标的时间趋势

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摘要

Forests are socioeconomically and ecologically important ecosystems that are exposed to a variety of natural and anthropogenic stressors. As such, monitoring forest condition and detecting temporal changes therein remain critical to sound public and private forestland management. The National Parks Service's Vital Signs monitoring program collects information on many forest health indicators, including species richness, cover by exotics, browse pressure, and forest regeneration. We applied a mixed-model approach to partition variability in data for 30 forest health indicators collected from several national parks in the eastern United States. We then used the estimated variance components in a simulation model to evaluate trend detection capabilities for each indicator. We investigated the extent to which the following factors affected ability to detect trends: (a) sample design: using simple panel versus connected panel design, (b) effect size: increasing trend magnitude, (c) sample size: varying the number of plots sampled each year, and (d) stratified sampling: post-stratifying plots into vegetation domains. Statistical power varied among indicators; however, indicators that measured the proportion of a total yielded higher power when compared to indicators that measured absolute or average values. In addition, the total variability for an indicator appeared to influence power to detect temporal trends more than how total variance was partitioned among spatial and temporal sources. Based on these analyses and the monitoring objectives of the Vital Signs program, the current sampling design is likely overly intensive for detecting a 5 % trend-year~(-1) for all indicators and is appropriate for detecting a 1 % trend-year~(-1) in most indicators.
机译:森林是具有各种自然和人为压力源的社会经济和生态重要生态系统。这样,监测森林状况并检测其中的时间变化对于健全的公共和私人林地管理仍然至关重要。国家公园管理局的“生命体征”监视程序收集有关许多森林健康指标的信息,包括物种丰富度,被外来物种覆盖,浏览压力和森林再生。我们使用混合模型方法对从美国东部几个国家公园收集的30种森林健康指标的数据进行分区变异。然后,我们在模拟模型中使用了估计的方差分量来评估每个指标的趋势检测能力。我们调查了以下因素在多大程度上影响了趋势检测能力:(a)样本设计:使用简单的面板对比连接的面板设计,(b)效应量:增加趋势幅度,(c)样本量:改变地块数量每年进行一次抽样,以及(d)分层抽样:将地块后分层到植被区域。统计能力因指标而异;但是,与测量绝对值或平均值的指标相比,测量总比例的指标产生的功率更高。另外,指标的总变异性似乎比总变异数如何在空间和时间来源之间分配更能影响检测时间趋势的能力。根据这些分析和生命体征计划的监测目标,当前的抽样设计可能过于密集,无法检测所有指标的5%趋势年〜(-1),并且适合检测1%趋势年〜 (-1)在大多数指标中。

著录项

  • 来源
    《Environmental Management》 |2014年第3期|641-655|共15页
  • 作者单位

    National Park Service, Eastern Rivers and Mountains Network, Department of Ecosystem Science and Management, Pennsylvania State University, 422 Forest Resources Building, University Park, PA 16802, USA;

    U.S. Geological Survey, Pennsylvania Cooperative Fish and Wildlife Research Unit, Department of Ecosystem Science and Management, Pennsylvania State University, 402 Forest Resources Building, University Park, PA 16802, USA;

    U.S. Geological Survey, Georgia Cooperative Fish and Wildlife Research Unit, Warnell School of Forestry and Natural Resources, University of Georgia, Athens, GA 30602, USA;

    National Park Service, Eastern Rivers and Mountains Network, Department of Ecosystem Science and Management, Pennsylvania State University, 420 Forest Resources Building, University Park, PA 16802, USA;

    National Park Service, Eastern Rivers and Mountains Network, Department of Ecosystem Science and Management, Pennsylvania State University, 420 Forest Resources Building, University Park, PA 16802, USA;

    National Park Service, Eastern Rivers and Mountains Network, Department of Ecosystem Science and Management, Pennsylvania State University, 420 Forest Resources Building, University Park, PA 16802, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Monitoring; Trend detection; Sampling design; Forest health indicators; Variance components;

    机译:监控;趋势检测;抽样设计;森林健康指标;方差成分;

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