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Development of a stakeholder-driven spatial modeling framework for strategic landscape planning using Bayesian networks across two urban-rural gradients in Maine, USA

机译:在美国缅因州使用跨越两个城乡梯度的贝叶斯网络,开发由利益相关者驱动的空间模型框架,用于战略景观规划

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Land use change results from frequent, independent actions by decision-makers working in isolation, often with a focus on a single land use. In order to develop integrated land use policies that encourage sustainable outcomes, scientists and practitioners must understand the specific drivers of land use change across mixed land use types and ownerships, and must consider the combined influences of biophysical, economic, and social factors that affect land use decisions. In this analysis of two large watersheds covering a total of 1.9 million hectares in Maine, USA, we co-developed with groups of stakeholders land use suitability models that integrated four land uses: economic development, ecosystem protection, forestry, and agriculture. We elicited stakeholder knowledge to: (1) identify generalized drivers of land use change; (2) construct Bayesian network models of suitability for each of the four land uses based on site-level factors that affect land use decisions; and (3) identify thresholds of suitability for each factor and give relative weights to each factor. We then applied 12 distinct Bayesian models using 99 spatially explicit, empirical socio-economic and biophysical datasets to predict spatially the suitability for each of our four land uses on a 30 m×30 m pixel basis across 1.9 million hectares. We evaluated both the stakeholder engagement process and the land use suitability maps. Results demonstrated the potential efficacy of these models for strategic land use planning, but also revealed that trade-offs occur when stakeholder knowledge is used to augment limited empirical data. First, stakeholder-derived Bayesian land use models can provide decision-makers with relevant insights about the factors affecting land use change. Unfortunately, these models are not easily validated for predictive purposes. Second, integrating stakeholders throughout different phases of the modeling process provides a flexible framework for developing localized or generalizable land use models depending on the scope of stakeholder knowledge and available empirical data. The potential downside is that this can lead to more complex models than anticipated. The trade-offs between model rigor and relevance suggest an adaptive management approach to modeling is needed to improve the integration of stakeholder knowledge into robust land use models.
机译:土地用途的变化是决策者孤立地进行频繁,独立行动的结果,这些行动者往往只关注单一土地用途。为了制定鼓励可持续成果的综合土地利用政策,科学家和从业人员必须了解混合土地利用类型和所有权之间土地利用变化的具体驱动因素,并且必须考虑影响土地的生物物理,经济和社会因素的综合影响使用决定。在对美国缅因州两个总面积为190万公顷的大流域的分析中,我们与利益相关者团体共同开发了土地用途适宜性模型,该模型整合了四种土地用途:经济发展,生态系统保护,林业和农业。我们激发了利益相关者的知识,以:(1)确定土地使用变化的一般驱动因素; (2)根据影响土地利用决策的场地水平因素,建立适合四种土地利用的贝叶斯网络模型; (3)确定每个因素的适用性阈值,并对每个因素赋予相对权重。然后,我们使用99个空间明确的,经验性的社会经济和生物物理数据集应用了12种不同的贝叶斯模型,以190万公顷的面积30m×30m像素为基础,预测了我们四种土地用途的空间适应性。我们评估了利益相关者参与过程和土地使用适宜性图。结果证明了这些模型在战略性土地利用规划中的潜在功效,但同时也表明,当利用利益相关者的知识来补充有限的经验数据时,就会进行取舍。首先,利益相关者派生的贝叶斯土地利用模型可以为决策者提供有关影响土地利用变化的因素的相关见解。不幸的是,出于预测目的,这些模型不容易验证。第二,在整个建模过程的不同阶段整合利益相关者,可以提供一个灵活的框架,用于根据利益相关者知识和可用经验数据的范围开发本地化或通用的土地利用模型。潜在的不利因素是,这可能导致模型比预期的更为复杂。在模型严格性和相关性之间的权衡表明,需要一种自适应的建模管理方法来改善将利益相关者知识整合到可靠的土地使用模型中。

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