Modelling of marine ecosystem in regional scale for short term prediction of satellite-aided operational fishery advisories

IF 1.7 3区 地球科学 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Operational Oceanography Pub Date : 2019-02-11 DOI:10.1080/1755876X.2019.1574951
K. Chakraborty, S. Maity, A. Lotliker, A. Samanta, Jayashree Ghosh, N. K. Masuluri, N. Swetha, Rose P. Bright
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引用次数: 7

Abstract

ABSTRACT The operational Potential Fishing Zone (PFZ) advisory generated and disseminated by the ESSO-Indian National Centre for Ocean Information Services has a significant impact on the livelihood of coastal community of India. PFZs are identified as the relatively narrow zones in the ocean where horizontal gradients of physical and/or biological properties are enhanced. The advisories are provided to fishermen on a daily basis using remotely sensed sea surface temperature (SST) and chlorophyll-a (Chl-a) data from NOAA-AVHRR and MODIS-AQUA and/or Oceansat-2 satellites, respectively. Sometimes it becomes a major challenge to retrieve SST/Chl-a data from satellite images, particularly during the extensive cloud coverage. To overcome this operational difficulty, the satellite data is replaced by a coupled physical-biogeochemical model data capable of simulating ocean features leading to PFZs. The use of model data provides an additional advantage towards transforming the existing service from advisories to forecast. The average length of PFZs identified from satellite (model) data (2010–2016) for off Gujarat is 27.80 ± 7.2 km (33.07 ± 3.2 km) whereas for off Andhra Pradesh, it is 28.27 ± 10.9 km (52.48 ± 8.7 km). Considering the capability of the model in identifying PFZs, the existing advisory service can be transitioned into a short term PFZ forecast.
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卫星辅助渔业业务咨询短期预测的区域尺度海洋生态系统模拟
由esso -印度国家海洋信息服务中心生成和传播的作业潜在捕鱼区(PFZ)咨询对印度沿海社区的生计产生了重大影响。pfz被认为是海洋中相对狭窄的区域,在那里物理和/或生物特性的水平梯度增强。每日使用NOAA-AVHRR和MODIS-AQUA及/或Oceansat-2卫星的遥感海表温度(SST)和叶绿素-a (Chl-a)数据向渔民提供咨询。有时,从卫星图像中检索海温/Chl-a数据成为一个重大挑战,特别是在广泛的云层覆盖期间。为了克服这一操作困难,卫星数据被能够模拟导致pfz的海洋特征的耦合物理-生物地球化学模型数据所取代。模型数据的使用为将现有服务从咨询转换为预测提供了额外的优势。从卫星(模型)数据(2010-2016)确定的古吉拉特邦(Gujarat)外海pfz的平均长度为27.80±7.2公里(33.07±3.2公里),而安得拉邦(Andhra Pradesh)外海pfz的平均长度为28.27±10.9公里(52.48±8.7公里)。考虑到模型识别PFZ的能力,现有的咨询服务可以转变为PFZ的短期预测。
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来源期刊
CiteScore
7.50
自引率
9.70%
发文量
8
审稿时长
>12 weeks
期刊介绍: The Journal of Operational Oceanography will publish papers which examine the role of oceanography in contributing to the fields of: Numerical Weather Prediction; Development of Climatologies; Implications of Ocean Change; Ocean and Climate Forecasting; Ocean Observing Technologies; Eutrophication; Climate Assessment; Shoreline Change; Marine and Sea State Prediction; Model Development and Validation; Coastal Flooding; Reducing Public Health Risks; Short-Range Ocean Forecasting; Forces on Structures; Ocean Policy; Protecting and Restoring Ecosystem health; Controlling and Mitigating Natural Hazards; Safe and Efficient Marine Operations
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