首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Priorization of River Restoration by Coupling Soil and Water Assessment Tool (SWAT) and Support Vector Machine (SVM) Models in the Taizi River Basin Northern China
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Priorization of River Restoration by Coupling Soil and Water Assessment Tool (SWAT) and Support Vector Machine (SVM) Models in the Taizi River Basin Northern China

机译:北方太子河流域水土保持评估工具(SWAT)和支持向量机(SVM)耦合对河流修复的优先作用。

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摘要

Identifying priority zones for river restoration is important for biodiversity conservation and catchment management. However, limited data due to the difficulty of field collection has led to research to better understand the ecological status within a catchment and develop a targeted planning strategy for river restoration. To address this need, coupling hydrological and machine learning models were constructed to identify priority zones for river restoration based on a dataset of aquatic organisms (i.e., algae, macroinvertebrates, and fish) and physicochemical indicators that were collected from 130 sites in September 2014 in the Taizi River, northern China. A process-based model soil and water assessment tool (SWAT) was developed to model the temporal-spatial variations in environmental indicators. A support vector machine (SVM) model was applied to explore the relationships between aquatic organisms and environmental indicators. Biological indices among different hydrological periods were simulated by coupling SWAT and SVM models. Results indicated that aquatic biological indices and physicochemical indicators exhibited apparent temporal and spatial patterns, and those patterns were more evident in the upper reaches compared to the lower reaches. The ecological status of the Taizi River was better in the flood season than that in the dry season. Priority zones were identified for different hydrological seasons by setting the target values for ecological restoration based on biota organisms, and the results suggest that hydrological conditions significantly influenced restoration prioritization over other environmental parameters. Our approach could be applied in other seasonal river ecosystems to provide important preferences for river restoration.
机译:确定河流恢复的优先区域对于生物多样性保护和集水区管理很重要。然而,由于田间采集的困难而有限的数据导致人们进行了研究,以更好地了解流域内的生态状况,并制定了针对性的河流恢复规划策略。为了满足这一需求,基于2014年9月从130个地点收集的水生生物(即藻类,大型无脊椎动物和鱼类)数据集和理化指标,构建了水文和机器学习的耦合模型,以识别河流恢复的优先区域。中国北方的太子河。开发了基于过程的模型土壤和水评估工具(SWAT),以对环境指标的时空变化进行建模。应用支持向量机(SVM)模型来探索水生生物与环境指标之间的关系。通过结合SWAT和SVM模型模拟了不同水文时期之间的生物指数。结果表明,水生生物指标和理化指标表现出明显的时空格局,与下游相比,上游明显。太子河在汛期的生态状况要好于旱季。通过设置基于生物群生物的生态恢复目标值,可以确定不同水文季节的优先区域,结果表明,水文条件比其他环境参数对恢复优先级的影响更大。我们的方法可以应用于其他季节性河流生态系统,以提供重要的河流恢复偏好。

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