Spatially referenced watershed models for the binational Red–Assiniboine River Basin: Bayesian vs frequentist comparison

IF 11.4 1区 工程技术 Q1 ENGINEERING, CHEMICAL
E. Agnes Blukacz-Richards, Felix Ouellet, Alex Neumann, Dale M. Robertson, Glenn A. Benoy, George Arhonditsis, David A. Saad
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引用次数: 0

Abstract

Excess nutrient loading remains a leading cause of declining water quality in lakes, estuaries, and coastal waters worldwide, with global economic costs of US$200 billion – US$2 trillion annually from impacts on fisheries, tourism, freshwater resources, and water treatment. Our study focuses on total phosphorus (TP) in Lake Winnipeg and its binational Red-Assiniboine River Basin, where nutrient inputs have degraded water quality and increased cyanobacterial blooms. These changes pose ecological, public health, and economic risks. We applied a spatially referenced watershed model with a hybrid statistical-mechanistic structure partitioning annual nutrient loads into land-use export, land-to-water delivery, and in-reservoir decay. Bayesian and traditional frequentist model calibrations were compared. In the frequentist model, coefficients for agricultural inputs, forests /wetlands, stream channels, precipitation, and reservoir losses were statistically significant, whereas coefficient for wastewater was not. In contrast, all variables were successfully calibrated using the Bayesian approach. Model results delineate TP-export hotspots across the basin, showing that 54–62% of TP originates from the U.S., with agricultural sources ranging 62–72%—highlighting the importance of agriculture-focused Best Management Practices. Given the global relevance of nutrient-driven water-quality challenges, our results highlight Bayesian calibration for robust risk assessment and adaptive nutrient management.
两国红-阿西尼博因河流域的空间参考流域模型:贝叶斯与频率比较
营养负荷过剩仍然是世界各地湖泊、河口和沿海水域水质下降的主要原因,对渔业、旅游业、淡水资源和水处理的影响每年给全球造成2000亿至2万亿美元的经济损失。我们的研究重点是温尼伯湖及其两国红-阿西尼博因河流域的总磷(TP),在那里,营养投入导致水质下降,蓝藻繁殖增加。这些变化带来了生态、公共卫生和经济风险。我们应用了一个空间参考流域模型,该模型采用混合统计机制结构,将年养分负荷划分为土地利用输出、土地向水输送和水库内衰变。比较了贝叶斯和传统的频率模型校准。在频率模型中,农业投入、森林/湿地、河道、降水和水库损失的系数在统计上显著,而废水的系数则不显著。相比之下,使用贝叶斯方法成功校准了所有变量。模型结果描绘了整个流域的TP出口热点,显示54-62%的TP来自美国,62 - 72%的TP来自农业,这凸显了以农业为重点的最佳管理实践的重要性。鉴于营养驱动的水质挑战的全球相关性,我们的研究结果强调了稳健风险评估和适应性营养管理的贝叶斯校准。
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来源期刊
npj Clean Water
npj Clean Water Environmental Science-Water Science and Technology
CiteScore
15.30
自引率
2.60%
发文量
61
审稿时长
5 weeks
期刊介绍: npj Clean Water publishes high-quality papers that report cutting-edge science, technology, applications, policies, and societal issues contributing to a more sustainable supply of clean water. The journal's publications may also support and accelerate the achievement of Sustainable Development Goal 6, which focuses on clean water and sanitation.
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