An overview Assessment of the Effectiveness of Satellite Images and Remote Sensing in Predicting Potential Fishing Grounds and its Applicability for Rastrelliger kanagurta in the Malaysian EEZ off the South China Sea

IF 6.4 1区 农林科学 Q1 FISHERIES Reviews in Fisheries Science & Aquaculture Pub Date : 2023-02-27 DOI:10.1080/23308249.2023.2183341
Yeny Nadira Kamaruzzaman, Muzzneena Ahmad Mustapha
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引用次数: 1

Abstract

Abstract This paper presents an overview of the effectiveness of satellite images with remote sensing applications in determining potential fishing grounds and its applicability for the Indian mackerel (R. kanagurta) in the Malaysian EEZ off the South China Sea. Most oceanic fish species tend to aggregate in large schools that can span tens of kilometers. Thus, finding fish schools and productive fishing areas is the main cause of fuel consumption and ship time expense in many commercial fisheries. In order to lower the cost of fishing operations, there is a need to accurately predict and detect economically fishable aggregations of fish in space and time. Recent studies have shown that the combined use of remote sensing together with statistical analysis and the advancement of geographical information analysis can be used not only to help manage fisheries at sustainable levels but also guide fishing fleets to increase their catch. These modern techniques may facilitate the implementation of an ecosystem-based approach to fisheries management. The assessment of the effectiveness of satellite images in predicting potential fishing grounds and its applicability for the Indian mackerel (R. kanagurta) in Peninsular Malaysia are reviewed.
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卫星影像与遥感在南海马来西亚专属经济区潜在渔场预测中的有效性及其适用性综述
摘要本文概述了具有遥感应用的卫星图像在确定潜在渔场方面的有效性及其对南中国海附近马来西亚专属经济区内印度鲭鱼(R.kanagurta)的适用性。大多数海洋鱼类往往聚集在几十公里的大型鱼群中。因此,在许多商业渔业中,寻找鱼群和生产捕鱼区是燃料消耗和船舶时间支出的主要原因。为了降低捕鱼作业的成本,需要在空间和时间上准确预测和检测经济上可捕鱼的鱼类群落。最近的研究表明,遥感与统计分析以及地理信息分析的发展相结合,不仅可以帮助以可持续的水平管理渔业,还可以指导渔船队增加渔获量。这些现代技术可能有助于实施基于生态系统的渔业管理方法。综述了卫星图像在预测马来西亚半岛潜在渔场方面的有效性评估及其对印度鲭鱼(R.kanagurta)的适用性。
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来源期刊
CiteScore
25.20
自引率
0.90%
发文量
19
期刊介绍: Reviews in Fisheries Science & Aquaculture provides an important forum for the publication of up-to-date reviews covering a broad range of subject areas including management, aquaculture, taxonomy, behavior, stock identification, genetics, nutrition, and physiology. Issues concerning finfish and aquatic invertebrates prized for their economic or recreational importance, their value as indicators of environmental health, or their natural beauty are addressed. An important resource that keeps you apprised of the latest changes in the field, each issue of Reviews in Fisheries Science & Aquaculture presents useful information to fisheries and aquaculture scientists in academia, state and federal natural resources agencies, and the private sector.
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