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請用此 Handle URI 來引用此文件: http://scholars.ntou.edu.tw/handle/123456789/22045
標題: Variability in the Spatiotemporal Distribution Patterns of Greater Amberjack in Response to Environmental Factors in the Taiwan Strait Using Remote Sensing Data
作者: Mammel, Mubarak
Naimullah, Muhamad
Vayghan, Ali Haghi
Hsu, Jhen
Lee, Ming-An 
Wu, Jun-Hong
Wang, Yi-Chen 
Lan, Kuo-Wei 
關鍵字: ALBACORE THUNNUS-ALALUNGA;SEA-SURFACE TEMPERATURE;SPECIES DISTRIBUTION MODELS;EAST CHINA SEA;SERIOLA-DUMERILI;PELAGIC FISH;SCOMBER-JAPONICUS;WESTERN;GROWTH;PREDICTION
公開日期: 六月-2022
出版社: MDPI
卷: 14
期: 12
來源出版物: REMOTE SENS-BASEL
摘要: 
The environmental characteristics of the Taiwan Strait (TS) have been linked to variations in the abundance and distribution of greater amberjack (Seriola dumerili) populations. Greater amberjack is a commercially and ecologically valuable species in ecosystems, and its spatial distribution patterns are pivotal to fisheries management and conservation. However, the relationship between the catch rates of S. dumerili and the environmental changes and their impact on fish communities remains undetermined in the TS. The goal of this study was to determine the spatiotemporal distribution pattern of S. dumerili with environmental characteristics in the TS from south to north (20 degrees N-29 degrees N and 115 degrees E-127 degrees E), applying generalized additive models (GAMs) and spatiotemporal fisheries data from logbooks and voyage data recorders from Taiwanese fishing vessels (2014-2017) as well as satellite-derived remote sensing environmental data. We used the generalized linear model (GLM) and GAM to analyze the effect of environmental factors and catch rates. The predictive performance of the two statistical models was quantitatively assessed by using the root mean square difference. Results reveal that the GAM outperforms the GLM model in terms of the functional relationship of the GAM for generating a reliable predictive tool. The model selection process was based on the significance of model terms, increase in deviance explained, decrease in residual factor, and reduction in Akaike's information criterion. We then developed a species distribution model based on the best GAMs. The deviance explained indicated that sea surface temperature, linked to high catch rates, was the key factor influencing S. dumerili distributions, whereas mixed layer depth was the least relevant factor. The model predicted a relatively high S. dumerili catch rate in the northwestern region of the TS in summer, with the area extending to the East China Sea. The target species is strongly influenced by biophysical environmental conditions, and potential fishing areas are located throughout the waters of the TS. The findings of this study showed how S. dumerili populations respond to environmental variables and predict species distributions. Data on the habitat preferences and distribution patterns of S. dumerili are essential for understanding the environmental conditions of the TS, which can inform future priorities for conservation planning and management.
URI: http://scholars.ntou.edu.tw/handle/123456789/22045
ISSN: 2072-4292
DOI: 10.3390/rs14122932
顯示於:13 CLIMATE ACTION
14 LIFE BELOW WATER
15 LIFE ON LAND
環境生物與漁業科學學系

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