首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >FISHING FORECASTING SYSTEM IN ADRIATIC SEA - A MODEL APPROACH BASED ON A NORMALIZED SCALAR PRODUCT OF THE SST GRADIENT AND CHL GRADIENT VECTORS
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FISHING FORECASTING SYSTEM IN ADRIATIC SEA - A MODEL APPROACH BASED ON A NORMALIZED SCALAR PRODUCT OF THE SST GRADIENT AND CHL GRADIENT VECTORS

机译:亚得里亚海渔预测系统 - 一种基于SST梯度和CHL梯度向量的标准标量产物的模型方法

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By mapping the concentration of chlorophyll-a (CHL) and the temperature of the sea surface (SST), satellite images reveal the complex dynamics of marine waters and prove to be a very powerful tool when used to detect potential fishing areas, significantly reducing the time of the search, the fuel consumption and the human effort, and simultaneously increasing the CPUE (catch per unit effort). In the present work, various techniques of multi-sensor, multi-resolution and multi-temporal data fusion are applied to multi-spectral satellite image data of MODIS-AQUA, MODIS-TERRA and VIIRS sensors, in order to detect "fronts" of chlorophyll concentration and temperature on the sea surface. According to the physical model of the phenomena, these fronts are generated by the upwelling of cold waters rich of nutrients (phytoplankton) which correspond to areas with a high concentration of pelagic fish and are characterized by high values of local gradients of SST and CHL with anti-parallel orientation. An automatic procedure has been developed to calibrate and validate the production in near-real time of daily maps of expected good fishing grounds to be provided to the FEDERPESCA fleet. The same procedure could be optimized also for other seas.
机译:通过映射叶绿素-A(CHL)和海面温度(SST)的浓度,卫星图像揭示了海水的复杂动态,并且当用于检测潜在捕捞区域时,似乎是一个非常强大的工具,显着减少了搜索时间,燃料消耗和人力努力,同时增加CPUE(每单位努力捕获)。在本作工作中,将多个传感器,多分辨率和多时间数据融合的各种技术应用于Modis-Aqua,Modis-Terra和Viirs传感器的多光谱卫星图像数据,以便检测“前面”叶绿素浓度和温度在海面。根据该现象的物理模型,这些前沿由富含营养素(浮游植物)的冷水的升值产生,该营养素(浮游植物)对应于具有高浓度的皮鱼的区域,其特征在于SST和CHL的局部梯度的高值反并联取向。已经开发了一种自动程序来校准并验证在预期的良好渔场地图的近实时生产,以提供给FederPesca舰队。同样的程序也可以在其他海上进行优化。

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