Bayesian Network Analysis for Shoreline Dynamics, Coastal Water Quality, and Their Related Risks in the Venice Littoral Zone, Italy

H. Pham, Maria Katherina Dal Barco, Mohsen Pourmohammad Shahvar, E. Furlan, A. Critto, S. Torresan
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Abstract

The coastal environment is vulnerable to natural hazards and human-induced stressors. The assessment and management of coastal risks have become a challenging task, due to many environmental and socio-economic risk factors together with the complex interactions that might arise through natural and human-induced pressures. This work evaluates the combined effect of climate-related stressors on low-lying coastal areas by applying a multi-risk scenario analysis through a Bayesian Network (BN) approach for the Venice coast. Based on the available open-source and remote sensing data for detecting shoreline changes, the developed BN model was trained and validated with oceanographic variables for the 2015–2019 timeframe, allowing us to understand the dynamics of local-scale shoreline erosion and related water quality parameters. Three “what-if” scenarios were carried out to analyze the relationships between oceanographic boundary conditions, shoreline evolution, and water quality parameters. The results demonstrate that changes in sea surface height and significant wave height may significantly increase the probability of high-erosion and high-accretion states. Moreover, by altering the wave direction, the water quality variables show significant changes in the higher-risk class. The outcome of this study allowed us to identify current and future coastal risk scenarios, supporting local authorities in developing adaptation plans.
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意大利威尼斯沿岸地区海岸线动态、沿海水质及其相关风险的贝叶斯网络分析
沿海环境很容易受到自然灾害和人为因素的影响。由于许多环境和社会经济风险因素以及自然和人为压力可能产生的复杂的相互作用,沿海风险的评估和管理已成为一项具有挑战性的任务。本研究通过贝叶斯网络(BN)方法,对威尼斯沿海地区进行了多风险情景分析,评估了气候相关压力因素对低洼沿海地区的综合影响。基于现有的用于检测海岸线变化的开源数据和遥感数据,利用 2015-2019 年期间的海洋学变量对所开发的贝叶斯网络模型进行了训练和验证,使我们能够了解局部尺度的海岸线侵蚀动态和相关的水质参数。我们采用了三种 "假设 "情景来分析海洋边界条件、海岸线演变和水质参数之间的关系。结果表明,海面高度和显著波高的变化可能会显著增加高侵蚀和高侵蚀状态的概率。此外,通过改变波浪方向,水质变量在高风险等级中也会发生显著变化。这项研究的结果使我们能够确定当前和未来的沿海风险情景,为地方当局制定适应计划提供支持。
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