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A co-evolutionary cellular automata for the integration of spatial and temporal scales in forest management planning.

机译:一种用于森林管理规划中时空尺度整合的协同进化元胞自动机。

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摘要

The scope of forest management has broadened to encompass ever more values and services. Designing decision support tools to provide for them involves incorporating a number of spatial and dynamic processes. This thesis presents a case for more holistic numerical planning tools which can handle spatial objectives and inter-temporal trade-offs.; A novel algorithm based on cellular automata (CA) is designed to address forest planning objectives that are both spatial and temporal and subject to global constraints. In this decentralized framework, the landscape management goals are achieved through a co-evolutionary decision process between interdependent stands. The problem considered is maximization of cumulative harvest volume and amount of clustered old forest subject to stable flow and minimum old growth retention. Applied to a small test area, the model demonstrates short computation time and shows sensitivity to both local constraints and global goals and constraints.; The implementation requirements of forest planning models are an issue that affects both the efficacy and the efficiency of planning tools. It is argued that object-oriented implementations could efficiently integrate the spatial and temporal data required by the various processes underpinning forest planning tools. An object-oriented design for the previously developed CA-based algorithm proves capable of considering spatial relationships with consistent allocation of clustered old growth areas. The object orientation permits a fast computation of both local and global limitations on local decision making and speedy modification of the problem definition (local and global requirements or spatial resolution).; Finally, the CA-based planning approach is used on a large scale planning problem to investigate different policy scenarios. The problem under investigation is the impact on volume flow and net present value of introducing intensive forest management (IFM) and clustering harvest activities. The main trade-off in this study was found to be between volume and net present value. In this context, IFM is used to meet the harvest targets from a smaller land base but at increased costs. Spatially clustering harvest activities, however, greatly increases the output net present value of a plan.; Keywords. cellular automata; clustering; decentralized planning; decision support tools; evolutionary algorithm; evolutionary game; forest management; geographic information systems; intensive forest management; multiple scales; object-oriented design; old growth forest; self-organization; spatial forest planning; strategic planning; sustainable forest management.
机译:森林管理的范围已扩大到涵盖更多的价值和服务。设计决策支持工具以提供这些支持工具涉及合并许多空间和动态过程。本文提出了一个更全面的数值规划工具,可以处理空间目标和跨时间权衡。一种基于元胞自动机(CA)的新颖算法被设计用于解决森林规划目标,这些目标既在空间上又在时间上受到全局约束。在这种分散的框架中,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。所考虑的问题是在稳定的流量和最小的旧生长保留下,最大程度地增加累积采伐量和成簇旧林的数量。该模型应用于较小的测试区域,显示了较短的计算时间,并且显示了对局部约束以及全局目标和约束的敏感性。森林规划模型的实施要求是一个影响规划工具的有效性和效率的问题。有人认为,面向对象的实现方式可以有效地整合支撑森林规划工具的各种过程所需的时空数据。先前开发的基于CA的算法的面向对象设计证明能够考虑空间关系,并与群集的旧增长区域保持一致分配。面向对象允许快速计算局部决策的局部和全局限制,并快速修改问题定义(局部和全局需求或空间分辨率)。最后,基于CA的计划方法用于大规模计划问题,以调查不同的策略方案。正在调查的问题是采用集约森林管理(IFM)和成群采伐活动对体积流量和净现值的影响。发现这项研究的主要折衷是在数量和净现值之间。在这种情况下,IFM可用于从较小的土地上实现收成目标,但成本增加。但是,按收获活动在空间上进行聚类,可以大大增加计划的产出净现值。关键字。细胞自动机集群分散计划;决策支持工具;进化算法进化博弈;森林管理;地理信息系统;强化森林管理;多尺度面向对象的设计;老生长森林;自组织空间森林规划;策略计划;可持续森林管理。

著录项

  • 作者

    Mathey, Anne-Helene.;

  • 作者单位

    The University of British Columbia (Canada).;

  • 授予单位 The University of British Columbia (Canada).;
  • 学科 Agriculture Forestry and Wildlife.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 159 p.
  • 总页数 159
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 森林生物学;
  • 关键词

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