为高等级森林恢复和管理提供信息的决策支持工具

A. Curtze, Allyson B. Muth, Jeffery L. Larkin, L. Leites
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引用次数: 1

摘要

由于过去被称为高分级的木材采伐,美国东部的许多森林已经退化。如果没有积极的恢复,高等级林分可能无法改善,可能需要有针对性的造林处理。本研究的重点是高分级混合栎林,旨在建立一个模型,可以识别过去的高分级,并确定可能改进的森林管理建议,该建议由著名的决策支持工具SILVAH提供。我们提出了一个模型,该模型使用标准的森林清查测量,不需要了解采伐前林分条件,就能以中等到高精度预测林分是否为高分级,这对非工业私有林特别有用。结果表明,为了提高SILVAH在高等级林分中制定造林措施的有效性,有必要对其进行修改。研究意义:高等级林分往往不明显,可能需要具体的森林管理措施。我们提出了一个工具,该工具使用标准森林清查测量来预测过去的高分级,可用于为森林管理决策提供信息和确定优先级。我们还提出了对著名的决策支持工具SILVAH的修改建议,以提高其对高等级林分制定最佳造林处理的能力。这项研究的结果为在美国东北部混合栎林工作的林业专业人员/土地所有者提供了工具,为森林管理决策提供信息,旨在使退化的林分恢复到更健康、更多产的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision Support Tools to Inform the Rehabilitation and Management of High Graded Forests
Numerous forests in the eastern United States have been degraded due to past exploitative timber harvesting known as high grading. High graded forest stands may not improve without active rehabilitation and may require targeted silvicultural treatments. This study focuses on high graded mixed-oak (mixed-Quercus spp.) stands and aims to develop a model that can identify past high grading and to determine modifications that may improve forest management recommendations provided by the prominent decision support tool, SILVAH. We present a model that uses standard forest inventory measurements and does not require knowledge of preharvest stand conditions to predict with moderate to high accuracy whether a stand was high graded, which could be particularly useful for nonindustrial private forests. Results indicate that modifications to SILVAH may be necessary to improve its utility for prescribing silvicultural treatments in high graded stands. Study Implications: High graded forest stands are often not readily apparent and likely require specific forest management practices. We present a tool that uses standard forest inventory measurements to predict past high grading, which can be used to inform and prioritize forest management decisions. We also present suggested modifications to the prominent decision support tool, SILVAH, that may improve its ability to prescribe optimal silvicultural treatments for high graded stands. Results from this study provide forestry professionals/landowners working in the mixed-oak forests of the northeastern United States with tools to inform forest management decisions that aim to return degraded stands to healthier and more productive states.
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