连续覆盖森林林分级优化的混合方法

Timo Pukkala, Yrjö Nuutinen, Timo Muhonen
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引用次数: 0

摘要

当前林业的一个趋势是增加使用连续覆盖管理(CCF)。另一个趋势是树木级森林清查数据的可用性增加。因此,最近的文献提出了在树级优化收获决策的方法。对林分的所有树木进行树级优化计算要求很高。本研究提出了一种灵活的两级CCF优化方法,即仅对部分树木或仅对第一次插枝的采伐处方进行树级优化。高级算法对未采用树级优化的直径类的采伐年限和采伐率进行优化。低级算法将单独优化的树分配给不同的切割事件。最详细的问题公式,采用许多树级优化,总是导致最高的净现值和最长的时间消耗的优化运行。然而,将树级优化的使用减少到最大的树和第一次采伐并没有显著改变第一次采伐的时间、强度或类型,这意味着当只需要下一次采伐的决策支持时,可以使用简化的问题公式。本文提出的方法可以适应与多样性相关的管理目标,并使分析经济利润与多样性目标之间的权衡成为可能。案例分析表明,在适度降低经济效益的情况下,多样性可以得到显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid method for tree-level optimization in continuous cover forest management
Abstract A current trend in forestry is the increased use of continuous cover management (CCF). Another trend is the increased availability of tree-level forest inventory data. Accordingly, recent literature suggests methodologies for optimizing the harvest decisions at the tree level. Using tree-level optimization for all trees of the stand is computationally demanding. This study proposed a flexible two-level optimization method for CCF where the harvest prescriptions are optimized at the tree level only for a part of the trees, or only for the first cuttings. The higher-level algorithm optimizes the cutting years and the harvest rates of those diameter classes for which tree-level optimization is not used. The lower-level algorithm allocates the individually optimized trees to different cutting events. The most detailed problem formulations, employing much tree-level optimization, always resulted in the highest net present value and longest time consumption of the optimization run. However, reducing the use of tree-level optimization to the largest trees and first cuttings did not alter the time, intensity, or type of the first cutting significantly, which means that simplified problem formulations may be used when decision support is needed only for the next cutting. The method suggested here can accommodate diversity-related management objectives and makes it possible to analyze the trade-offs between economic profit and diversity objectives. The case study analyses suggested that significant improvements in diversity can be obtained with moderate reductions in economic profitability.
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