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The potential of geospatial analysis and Bayesian networks to enable i-Tree Eco assessment of existing tree inventories

机译:地理空间分析和贝叶斯网络的潜力,使能源树生态评估现有树库存

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Valuing the ecosystem services of urban trees is important for gaining public and political support for urban tree conservation and maintenance. The i-Tree Eco software application can be used to estimate regulating ecosystem services provided by urban forests. However, existing municipal tree inventories may not contain data necessary for running i-Tree Eco and manual field surveys are costly and time consuming. Using a tree inventory of Oslo, Norway, as an example, we demonstrate the potential of geospatial and machine learning methods to supple-ment missing and incomplete i-Tree Eco attributes in existing municipal inventories for the purpose of rapid lowcost urban ecosystem accounting. We correlate manually surveyed stem diameter and crown dimensions derived from airborne laser scanning imagery to complete most structural attributes. We then use auxiliary spatial datasets to derive missing attributes of trees' spatial context and include differentiation of air pollution levels. The integration of Oslo's tree inventory with available spatial data increases the proportion of records suitable for iTree Eco analysis from 19 % to 54 %. Furthermore, we illustrate how machine learning with Bayesian networks can be used to extrapolate i-Tree Eco outputs and infer the value of the entire municipal inventory. We find the expected total asset value of municipal trees in Oslo to be 38.5-43.4 million USD, depending on different modelling assumptions. We argue that there is a potential for greater use of geospatial methods in compiling information for valuation of urban tree inventories, especially when assessing location-specific tree characteristics, and for more spatially sensitive scaling methods for determining asset values of urban forests for the purpose of awareness-raising. However, given the available data in our case, we question the accuracy of values inferred by Bayesian networks in relation to the purposes of ecosystem accounting and tree compensation valuation.
机译:评估城市树木的生态系统服务对于为城市树木保护和维护赢得公众和政治支持非常重要。i-Tree Eco软件应用程序可用于估算城市森林提供的调节生态系统服务。然而,现有的市政树木清单可能不包含运行i-tree生态和手动实地调查所需的数据,成本高昂且耗时。以挪威奥斯陆的树木清单为例,我们展示了地理空间和机器学习方法的潜力,以补充现有市政清单中缺失和不完整的i-tree生态属性,从而实现快速低成本城市生态系统核算。我们将从机载激光扫描图像中获得的手动测量的茎直径和树冠尺寸关联起来,以完成大多数结构属性。然后,我们使用辅助空间数据集推导出树木空间背景的缺失属性,并包括空气污染水平的区分。奥斯陆的树木目录与可用的空间数据相结合,将适合iTree生态分析的记录比例从19%提高到54%。此外,我们还说明了如何使用贝叶斯网络的机器学习来推断i-树生态输出,并推断整个市政库存的价值。根据不同的建模假设,我们发现奥斯陆市政树木的预计总资产价值为3850-4340万美元。我们认为,在汇编城市树木清单估价信息时,尤其是在评估特定位置的树木特征时,可能会更多地使用地理空间方法,并在确定城市森林资产价值以提高认识时使用更具空间敏感性的标度方法。然而,考虑到我们案例中的可用数据,我们对贝叶斯网络推断的与生态系统核算和树木补偿估值目的相关的值的准确性提出质疑。

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