Forecasting ocean hypoxia in salmonid fish farms

Vitor Cerqueira, João Pimentel, Jennie Korus, Francisco Bravo, Joana Amorim, Mariana Oliveira, Andrew Swanson, Ramón Filgueira, Jon Grant, Luis Torgo
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Abstract

Hypoxia is defined as a critically low-oxygen condition of water, which, if prolonged, can be harmful to fish and many other aquatic species. In the context of ocean salmon fish farming, early detection of hypoxia events is critical for farm managers to mitigate these events to reduce fish stress, however in complex natural systems accurate forecasting tools are limited. The goal of this research is to use a machine learning approach to forecast oxygen concentration and predict hypoxia events in marine net-pen salmon farms.The developed model is based on gradient boosting and works in two stages. First, we apply auto-regression to build a forecasting model that predicts oxygen concentration levels within a cage. We take a global forecasting approach by building a model using the historical data provided by sensors at several marine fish farms located in eastern Canada. Then, the forecasts are transformed into binary probabilities that indicate the likelihood of a low-oxygen event. We leverage the cumulative distribution function to compute these probabilities.We tested our model in a case study that included several cages across 14 fish farms. The experiments suggest that the model can detect future hypoxic events with a commercially acceptable false alarm rate. The resulting probabilistic predictions and oxygen concentration forecasts can help salmon farmers to prioritize resources, and reduce harm to crops.
预测鲑鱼养殖场的海洋缺氧状况
缺氧被定义为水体严重低氧的状态,如果持续时间过长,会对鱼类和许多其他水生物种造成危害。在大洋鲑鱼养殖中,缺氧事件的早期检测对于养殖管理者缓解这些事件以减少鱼类压力至关重要,但在复杂的自然系统中,准确的预测工具非常有限。本研究的目标是利用机器学习方法预测氧气浓度,并预测海洋网箱养殖鲑鱼场的缺氧事件。首先,我们应用自动回归建立预测模型,预测网箱内的氧气浓度水平。我们采用全球预测方法,利用加拿大东部几个海水养鱼场的传感器提供的历史数据建立模型。然后,将预测结果转化为二进制概率,表示发生低氧事件的可能性。我们利用累积分布函数来计算这些概率。我们在一项案例研究中测试了我们的模型,其中包括 14 个养鱼场的多个网箱。实验结果表明,该模型能够以商业上可接受的误报率检测到未来的缺氧事件。由此得出的概率预测和氧气浓度预报可帮助鲑鱼养殖者确定资源的优先次序,并减少对作物的伤害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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