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Jellyfish prediction of occurrence from remote sensing data and a non-linear pattern recognition approach

机译:水母的遥感数据预测和非线性模式识别方法

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Impact of jellyfish in human activities has been increasingly reported worldwide in recent years. Segments such as tourism, water sports and leisure, fisheries and aquaculture are commonly damaged when facing blooms of gelatinous zooplankton. Hence the prediction of the appearance and disappearance of jellyfish in our coasts, which is not fully understood from its biological point of view, has been approached as a pattern recognition problem in the paper presented herein, where a set of potential ecological cues was selected to test their usefulness for prediction. Remote sensing data was used to describe environmental conditions that could support the occurrence of jellyfish blooms with the aim of capturing physical-biological interactions: forcing, coastal morphology, food availability, and water mass characteristics are some of the variables that seem to exert an effect on jellyfish accumulation on the shoreline, under specific spatial and temporal windows. A data-driven model based on computational intelligence techniques has been designed and implemented to predict jellyfish events on the beach area as a function of environmental conditions. Data from 2009 over the NW Mediterranean continental shelf have been used to train and test this prediction protocol. Standard level 2 products are used from MODIS (NASA OceanColor) and MERIS (ESA - FRS data). The procedure for designing the analysis system can be described as following. The aforementioned satellite data has been used as feature set for the performance evaluation. Ground truth has been extracted from visual observations by human agents on different beach sites along the Catalan area. After collecting the evaluation data set, the performance between different computational intelligence approaches have been compared. The outperforming one in terms of its generalization capability has been selected for prediction recall. Different tests have been conducted in order to assess the prediction capability of the resulting system in operational conditions. This includes taking into account several types of features with different distances in both the spatial and temporal domains with respect to prediction time and site. Moreover the generalization capability has been measured via cross-fold validation. The implementation and performance evaluation results are detailed in the present communication together with the feature extraction from satellite data. To the best of our knowledge the developed application constitutes the first implementation of an automate system for the prediction of jellyfish appearance founded on remote sensing technologies.
机译:近年来,全世界越来越多地报道了水母对人类活动的影响。当面对凝胶状浮游植物的花朵时,旅游,水上运动和休闲,渔业和水产养殖等部门通常受到破坏。因此,从本文的生物学角度尚未完全理解水母在海岸上的出现和消失的预测已作为本文提出的模式识别问题,其中选择了一组潜在的生态学线索来进行研究。测试其对预测的有用性。遥感数据用于描述可能支持水母开花的环境条件,目的是捕获物理-生物相互作用:强迫,沿海形态,食物供应和水质特征是似乎发挥作用的一些变量。在特定的时空窗下,水母在海岸线上的积聚。已经设计并实施了基于计算智能技术的数据驱动模型,以根据环境条件预测海滩地区的水母事件。来自西北地中海大陆架的2009年数据已用于训练和测试此预测协议。使用MODIS(NASA OceanColor)和MERIS(ESA-FRS数据)的标准2级产品。设计分析系统的过程可以描述如下。前述卫星数据已经用作性能评估的特征集。地面真相已从人类特工在加泰罗尼亚地区不同海滩地点的视觉观察中提取。收集评估数据集后,已比较了不同计算智能方法之间的性能。就其泛化能力而言,表现出色的已被选作预测召回对象。为了评估所得系统在运行条件下的预测能力,已进行了不同的测试。这包括考虑相对于预测时间和地点在空间和时间域上具有不同距离的几种类型的特征。此外,已经通过交叉折叠验证来测量泛化能力。本通信中详细介绍了实现和性能评估结果,并从卫星数据中提取了特征。据我们所知,开发的应用程序构成了基于遥感技术的用于预测水母外观的自动化系统的第一个实现。

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