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首页> 外文期刊>Forest Ecology and Management >Forest planning using co-evolutionary cellular automata.
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Forest planning using co-evolutionary cellular automata.

机译:使用共进化元胞自动机进行森林规划。

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摘要

The spatial distribution of forest management activities has become increasingly important with, most notably, rising concerns for biodiversity. Addressing both timber production and non-timber goals requires planning tools that support spatially explicit decision-making. The paper examines the capability of a co-evolutionary cellular automata (CA) approach to address forest planning objectives that are both spatial and temporal with global constraints. In this decentralized self-organizing planning framework, each forest stand and its associated management treatment over the planning horizon is represented as a cellular automaton. The landscape management goals are achieved through a co-evolutionary decision process between interdependent stands. A novel, computationally efficient CA algorithm for asynchronous updating of stand states is developed. The specific problem considered in the paper is maximization of cumulative harvest volume and amount of clustered late-seral forest. The global constraints considered are stable harvest flow and minimum amount of late-seral stands in each period of the planning horizon. Applied to a test area from the Northeastern forest region of Ontario, Canada, the model demonstrates short computation time and consistent results from multiple runs. It also compares favorably with outputs from a simulated annealing search. The CA-based algorithm developed in the paper successfully identifies sustainable forest outputs over the planning horizon. It shows sensitivity to both local constraints, strategic goals and strategic constraints and generates spatially explicit forest plans..
机译:森林管理活动的空间分布变得越来越重要,尤其是对生物多样性的关注日益增加。解决木材生产和非木材目标都需要支持空间明确决策的规划工具。本文研究了共同进化的细胞自动机(CA)方法解决具有全局约束的时空规划的森林规划目标的能力。在这种分散的自组织规划框架中,每个林分及其在规划范围内的相关管理处理均表示为细胞自动机。景观管理目标是通过相互依赖的林分之间的共同进化决策过程来实现的。开发了一种新颖的,计算效率高的CA算法,用于对站立状态进行异步更新。本文考虑的具体问题是最大累积收获量和集群晚生林的数量最大化。在计划阶段的每个阶段,要考虑的全局限制是稳定的采伐量和最少的后代林分。该模型应用于加拿大安大略省东北森林地区的测试区域,证明了较短的计算时间和多次运行的一致结果。它也与模拟退火搜索的输出相比具有优势。本文基于CA的算法成功地确定了规划范围内的可持续森林产出。它显示了对本地约束,战略目标和战略约束的敏感性,并生成了空间明确的森林计划。

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