首页> 外文期刊>Hydrology and Earth System Sciences Discussions >A Bayesian approach to understanding the key factors influencing temporal variability in stream water quality – a case study in the Great Barrier Reef catchments
【24h】

A Bayesian approach to understanding the key factors influencing temporal variability in stream water quality – a case study in the Great Barrier Reef catchments

机译:一种了解影响流水质时间变异性的关键因素的贝叶斯方法 - 以大堡礁集水区的案例研究

获取原文
       

摘要

Stream water quality is highly variable both across space and time. Water quality monitoring programmes have collected a large amount of data that provide a good basis for investigating the key drivers of spatial and temporal variability. Event-based water quality monitoring data in the Great Barrier Reef catchments in northern Australia provide an opportunity to further our understanding of water quality dynamics in subtropical and tropical regions. This study investigated nine water quality constituents, including sediments, nutrients and salinity, with the aim of (1)?identifying the influential environmental drivers of temporal variation in flow event concentrations and (2)?developing a modelling framework to predict the temporal variation in water quality at multiple sites simultaneously. This study used a hierarchical Bayesian model averaging framework to explore the relationship between event concentration and catchment-scale environmental variables (e.g. runoff, rainfall and groundcover conditions). Key factors affecting the temporal changes in water quality varied among constituent concentrations and between catchments. Catchment rainfall and runoff affected in-stream particulate constituents, while catchment wetness and vegetation cover had more impact on dissolved nutrient concentration and salinity. In addition, in large dry catchments, antecedent catchment soil moisture and vegetation had a large influence on dissolved nutrients, which highlights the important effect of catchment hydrological connectivity on pollutant mobilisation and delivery.
机译:流水质量在空间和时间均具有高度变化。水质监测计划已收集大量数据,为调查空间和时间变异性的关键驱动程序提供了良好的基础。澳大利亚北部大堡礁集水区的基于事件的水质监测数据提供了进一步了解亚热带和热带地区水质动态的机会。本研究调查了九种水质成分,包括沉积物,营养和盐度,目的是(1)?识别流动事件浓度的时间变化的影响环境驱动因素和(2)?制定建模框架以预测时间变化同时多个网站的水质。本研究使用了分层贝叶斯模型平均框架来探讨事件集中和集水区环境变量之间的关系(例如径流,降雨和地下接道条件)。影响水质变化的关键因素在组成浓度和集水区之间变化。流量降雨量和径流在流颗粒成分中影响,而集水湿度和植被覆盖物对溶解的营养浓度和盐度具有更多影响。此外,在大的干燥流域中,前一种流域土壤水分和植被对溶解的营养物质产生了很大影响,这凸显了流域水文连通性对污染物动员和递送的重要影响。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号