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首页> 外文期刊>Journal of marine systems: journal of the European Association of Marine Sciences and Techniques >Use of Bayesian models to develop coral bleaching indices and forecasts from in-situ observations for the 2015-16 bleaching event
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Use of Bayesian models to develop coral bleaching indices and forecasts from in-situ observations for the 2015-16 bleaching event

机译:使用贝叶斯模型开发珊瑚漂白指数及预测到2015-16漂白事件的原位观察

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摘要

Bayesian models provide simple conceptual probabilistic models of systems and system processes. Using real time data from IMOS Wireless Sensor Networks at four sites along the Great Barrier Reef, two Bayesian models were built to provide daily indices of current and future bleaching risk for the 2015-16 coral bleaching event. The first model used real time measures of water temperature and light, calculated degree-heat -week values and empirical bleaching thresholds to model the heat and light stress to produce a current bleaching risk index. The second model incorporated factors known to change bleaching risk, such as winds, tides and rainfall, to model the likely change in bleaching risk for the near future. The models used daily values from four IMOS Wireless Sensor Network sites, spread from north to south, for the 2015-16 bleaching event with the outputs delivered to the coral reef community via a dedicated web site. The model outputs were subsequently compared to aerial bleaching surveys with the models providing a good measure of the bleaching risk and, importantly, giving 2-3 days warning of extreme events such as the bleaching of northern reefs. These warnings were used to drive observational work to capture data from the bleaching event, an event that impacted a third of the Great Barrier Reef. Bayesian models provide easy to understand process or system models that can be quickly developed using a range of available inputs, including anecdotal and low -quality sources, to produce management relevant indices.
机译:贝叶斯模型提供了简单的概念概率模型的系统和系统流程。使用来自IMOS无线传感器网络的实时数据沿着大堡礁的四个地点,建立了两种贝叶斯型号,为2015-16珊瑚漂白事件提供了日常展示的日常和未来漂白风险的日常指标。第一型模型使用了水温和光的实时测量,计算了学位 - 热 - 周和经验漂白阈值来模拟热量和光应力,产生电流漂白风险指数。已知的第二种模型,已知因素改变漂白风险,例如风,潮汐和降雨,为不久的将来模拟漂白风险的可能变化。从四个IMOS无线传感器网络站点使用的日常价值,从北向南传播,2015-16漂白事件通过专用网站传递到珊瑚礁社区的输出。随后将模型输出与空中漂白调查进行比较,其中模型提供了漂亮的漂白风险的良好衡量标准,并且重要的是,给予2-3天的极端事件,例如北部珊瑚礁的漂白。这些警告用于推动观察工作以捕获来自漂白事件的数据,这是一个影响大堡礁的第三个的事件。贝叶斯型号提供易于理解的过程或系统模型,可以使用一系列可用输入(包括轶事和低质量来源)快速开发,以生产管理相关指标。

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