Stochastic spatial stream networks for scalable inferences of riverscape processes

IF 2.1 2区 数学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
Xinyi Lu , Andee Kaplan , Yoichiro Kanno , George Valentine , Jacob M. Rash , Mevin Hooten
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引用次数: 0

Abstract

Spatial stream networks (SSN) models characterize correlated ecological processes in dendritic ecosystems. Conventional SSN models rely on pre-processed stream networks and point-to-point hydrologic distances. However, this data processing may be labor-intensive and time-consuming over large spatial domains. Therefore, we propose to infer the functional connectivity of stream networks stochastically. Our physically-guided model utilizes the knowledge that water flows from high elevation to low elevation, and flow rate typically increases when two tributaries merge. We also leverage the hierarchical branching architecture of dendritic networks to alleviate computing and reduce uncertainty. Spatial autoregressive models composed of inferred SSNs propagate stochasticity between network connectivity and dynamic ecological processes in a Bayesian framework. We show in simulated examples that our mechanistic model facilitated learning about the functional network and enhanced predictive performance. We also demonstrate our approach in a large-scale case study using native brook trout (Salvelinus fontinalis) count data. A population model based on our stochastic SSN outperformed that with a conventional SSN in predicting abundance and expedited the analysis by circumventing data processing.
用于河流景观过程可扩展推理的随机空间流网络
空间流网络(SSN)模型描述了树突生态系统的相关生态过程。传统的SSN模型依赖于预处理的河流网络和点对点的水文距离。然而,在大的空间域中,这种数据处理可能是劳动密集型和耗时的。因此,我们建议随机推断流网络的功能连通性。我们的物理导向模型利用了水从高海拔流向低海拔的知识,当两条支流合并时,流速通常会增加。我们还利用树突网络的分层分支架构来减轻计算和减少不确定性。由推断ssn组成的空间自回归模型在贝叶斯框架下传播网络连通性和动态生态过程之间的随机性。我们在模拟示例中表明,我们的机制模型促进了对功能网络的学习并增强了预测性能。我们还展示了我们的方法在一个大规模的案例研究中使用本地溪鳟(Salvelinus fontinalis)计数数据。基于随机社会安全系数的种群模型在预测丰度方面优于传统社会安全系数,并通过避免数据处理加快了分析速度。
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来源期刊
Spatial Statistics
Spatial Statistics GEOSCIENCES, MULTIDISCIPLINARY-MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
CiteScore
4.00
自引率
21.70%
发文量
89
审稿时长
55 days
期刊介绍: Spatial Statistics publishes articles on the theory and application of spatial and spatio-temporal statistics. It favours manuscripts that present theory generated by new applications, or in which new theory is applied to an important practical case. A purely theoretical study will only rarely be accepted. Pure case studies without methodological development are not acceptable for publication. Spatial statistics concerns the quantitative analysis of spatial and spatio-temporal data, including their statistical dependencies, accuracy and uncertainties. Methodology for spatial statistics is typically found in probability theory, stochastic modelling and mathematical statistics as well as in information science. Spatial statistics is used in mapping, assessing spatial data quality, sampling design optimisation, modelling of dependence structures, and drawing of valid inference from a limited set of spatio-temporal data.
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