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Using Remote-Sensing Environmental and Fishery Data to Map Potential Yellowfin Tuna Habitats in the Tropical Pacific Ocean

机译:使用遥感环境和渔业数据绘制热带太平洋中潜在的黄鳍金枪鱼栖息地

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Changes in marine environments affect fishery resources at different spatial and temporal scales in marine ecosystems. Predictions from species distribution models are available to parameterize the environmental characteristics that influence the biology, range, and habitats of the species of interest. This study used generalized additive models (GAMs) fitted to two spatiotemporal fishery data sources, namely 1° spatial grid and observer record longline fishery data from 2006 to 2010, to investigate the relationship between catch rates of yellowfin tuna and oceanographic conditions by using multispectral satellite images and to develop a habitat preference model. The results revealed that the cumulative deviances obtained using the selected GAMs were 33.6% and 16.5% in the 1° spatial grid and observer record data, respectively. The environmental factors in the study were significant in the selected GAMs, and sea surface temperature explained the highest deviance. The results suggest that areas with a higher sea surface temperature, a sea surface height anomaly of approximately ?10.0 to 20 cm, and a chlorophyll-a concentration of approximately 0.05–0.25 mg/m 3 yield higher catch rates of yellowfin tuna. The 1° spatial grid data had higher cumulative deviances, and the predicted relative catch rates also exhibited a high correlation with observed catch rates. However, the maps of observer record data showed the high-quality spatial resolutions of the predicted relative catch rates in the close-view maps. Thus, these results suggest that models of catch rates of the 1° spatial grid data that incorporate relevant environmental variables can be used to infer possible responses in the distribution of highly migratory species, and the observer record data can be used to detect subtle changes in the target fishing grounds.
机译:海洋环境的变化会影响海洋生态系统中不同时空尺度的渔业资源。来自物种分布模型的预测可用于参数化影响所关注物种的生物学,范围和栖息地的环境特征。本研究使用适合于两个时空渔业数据源的广义加性模型(GAM),即1°空间网格和观察员记录的2006年至2010年延绳钓渔业数据,以利用多光谱卫星调查黄鳍金枪鱼捕捞率与海洋状况之间的关系。图像并建立栖息地偏好模型。结果表明,使用选定的GAM获得的累积偏差在1°空间网格和观察者记录数据中分别为33.6%和16.5%。在所选的GAM中,研究中的环境因素很重要,而海面温度可以解释为最高偏差。结果表明,海平面温度较高,海平面高度异常约为?10.0至20 cm以及叶绿素-a浓度约为0.05-0.25 mg / m 3的地区,黄鳍金枪鱼的捕获率更高。 1°空间网格数据具有较高的累积偏差,并且预测的相对捕获率也与观察到的捕获率具有高度相关性。但是,观察者记录数据的地图在近距离地图中显示了预测的相对捕获率的高质量空间分辨率。因此,这些结果表明,结合相关环境变量的1°空间网格数据捕获率模型可用于推断高度迁徙物种分布中的可能响应,而观察者记录数据可用于检测物种的细微变化。目标渔场。

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