This paper combines fisheries dependent data and environmental data to be used in a machine learning pipeline to predict the spatio-temporal abundance of two species (plaice and sole) commonly caught by the Belgian fishery in the North Sea. By combining fisheries related features with environmental data, sea bottom temperature derived from remote sensing, a higher accuracy can be achieved. In a forecast setting, the predictive accuracy is further improved by predicting, using a recurrent deep neural network, the sea bottom temperature up to four days in advance instead of relying on the last previous temperature measurement.
翻译:本文将渔业依赖数据和环境数据结合起来,用于机器学习管道,预测比利时北海渔业通常捕获的两种物种(白和单)的时空丰度,通过将渔业相关特征与环境数据、遥感产生的海底温度相结合,可以实现更高的准确性,在预测环境中,通过利用反复出现的深神经网络预测海底温度,而不是依赖上次的温度测量,从而进一步提高预测的准确性。