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MODIS Derived Sea Surface Salinity, Temperature, and Chlorophyll-a Data for Potential Fish Zone Mapping: West Red Sea Coastal Areas, Saudi Arabia.MODIS 反演的海面盐度、温度和叶绿素-a 数据在潜在鱼类区制图中的应用:沙特阿拉伯红海西部沿海地区。
Sensors (Basel). 2019 May 3;19(9):2069. doi: 10.3390/s19092069.
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1
Empirical Retrieval of Surface Melt Magnitude from Coupled MODIS Optical and Thermal Measurements over the Greenland Ice Sheet during the 2001 Ablation Season.利用MODIS光学和热红外测量数据对2001年消融季格陵兰冰盖表面融水规模的经验性反演
Sensors (Basel). 2008 Aug 22;8(8):4915-4947. doi: 10.3390/s8084915.
2
Neural network approach to retrieve the inherent optical properties of the ocean from observations of MODIS.利用神经网络方法从MODIS观测数据中反演海洋固有光学特性。
Appl Opt. 2011 Jul 1;50(19):3168-86. doi: 10.1364/AO.50.003168.
3
Effect of inherent optical properties variability on the chlorophyll retrieval from ocean color remote sensing: an in situ approach.固有光学特性变异性对海洋颜色遥感叶绿素反演的影响:一种现场测量方法。
Opt Express. 2010 Sep 27;18(20):20949-59. doi: 10.1364/OE.18.020949.
4
The Yku70-Yku80 complex contributes to regulate double-strand break processing and checkpoint activation during the cell cycle.Yku70-Yku80复合物有助于在细胞周期中调节双链断裂处理和检查点激活。
EMBO Rep. 2008 Aug;9(8):810-8. doi: 10.1038/embor.2008.121. Epub 2008 Jul 4.

MODIS 反演的海面盐度、温度和叶绿素-a 数据在潜在鱼类区制图中的应用:沙特阿拉伯红海西部沿海地区。

MODIS Derived Sea Surface Salinity, Temperature, and Chlorophyll-a Data for Potential Fish Zone Mapping: West Red Sea Coastal Areas, Saudi Arabia.

机构信息

Department of Human Sciences, Geography, Art faculty, Taibah University, P.O. Box 2898, Medina 41477, Saudi Arabia.

Department of Surveying Engineering, Faculty of Engineering, Al al-Bayt University, Mafraq 25113, Jordan.

出版信息

Sensors (Basel). 2019 May 3;19(9):2069. doi: 10.3390/s19092069.

DOI:10.3390/s19092069
PMID:31058844
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6547357/
Abstract

In this study, a multi-linear regression model for potential fishing zone (PFZ) mapping along the Saudi Arabian Red Sea coasts of Yanbu' al Bahr and Jeddah was developed, using Moderate Resolution Imaging Spectroradiometer (MODIS) satellite data derived parameters, such as sea surface salinity (SSS), sea surface temperature (SST), and chlorophyll-a (Chl-a). MODIS data was also used to validate the model. The model expanded on previous models by taking seasonal variances in PFZs into account, examining the impact of the summer, winter, monsoon, and inter-monsoon season on the selected oceanographic parameters in order to gain a deeper understanding of fish aggregation patterns. MODIS images were used to effectively extract SSS, SST, and Chl-a data for PFZ mapping. MODIS data were then used to perform multiple linear regression analysis in order to generate SSS, SST, and Chl-a estimates, with the estimates validated against in-situ data obtained from field visits completed at the time of the satellite passes. The proposed model demonstrates high potential for use in the Red Sea region, with a high level of congruence found between mapped PFZ areas and fish catch data (R = 0.91). Based on the results of this research, it is suggested that the proposed PFZ model is used to support fisheries in determining high potential fishing zones, allowing large areas of the Red Sea to be utilized over a short period. The proposed PFZ model can contribute significantly to the understanding of seasonal fishing activity and support the efficient, effective, and responsible use of resources within the fishing industry.

摘要

本研究开发了一种适用于沙特阿拉伯红海沿岸延布和吉达地区潜在捕鱼区(PFZ)的多元线性回归模型,使用了中分辨率成像光谱仪(MODIS)卫星数据衍生的参数,如海面盐度(SSS)、海面温度(SST)和叶绿素-a(Chl-a)。MODIS 数据也用于验证模型。该模型通过考虑 PFZ 的季节性变化扩展了以前的模型,研究了夏季、冬季、季风和季风间歇期对所选海洋参数的影响,以更深入地了解鱼类聚集模式。MODIS 图像用于有效地提取 SSS、SST 和 Chl-a 数据进行 PFZ 制图。然后,使用 MODIS 数据进行多元线性回归分析,以生成 SSS、SST 和 Chl-a 估计值,并将估计值与卫星过境时现场调查获得的现场数据进行验证。该模型展示了在红海地区应用的巨大潜力,所绘制的 PFZ 区域与鱼类捕捞数据之间具有高度的一致性(R = 0.91)。基于这项研究的结果,建议使用提出的 PFZ 模型来支持渔业确定高潜力捕鱼区,以便在短时间内利用红海的大面积区域。所提出的 PFZ 模型可以为季节性捕鱼活动的理解提供重要支持,并支持渔业部门资源的高效、有效和负责任利用。

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