Relating sardine recruitment in the Northern Benguela to satellite-derived sea surface height using a neural network pattern recognition approach

被引:43
|
作者
Hardman-Mountford, NJ
Richardson, AJ
Boyer, DC
Kreiner, A
Boyer, HJ
机构
[1] Plymouth Marine Lab, Plymouth PL1 3DH, Devon, England
[2] Univ Cape Town, Dept Oceanog, ZA-7701 Rondebosch, Cape Town, South Africa
[3] Natl Marine Informat & Res Ctr, Swakopmund, Namibia
[4] The Lab, Sir ALister Hardy Fdn Ocean Sci, Plymouth PL1 2PB, Devon, England
关键词
satellite altimetry; surface temperature; surface currents; pelagic fisheries; Sardinops sagax; self organizing maps; PSW; Namibia; South Atlantic; Benguela upwelling; 16 degrees S 9 degrees E to 26 degrees S 16 degrees E;
D O I
10.1016/j.pocean.2003.07.005
中图分类号
P7 [海洋学];
学科分类号
0707 ;
摘要
Processes of enrichment, concentration and retention are thought to be important for the successful recruitment of small pelagic fish in upwelling areas, but are difficult to measure. In this study, a novel approach is used to examine the role of spatio-temporal oceanographic variability on recruitment success of the Northern Benguela sardine Sardinops sagax. This approach. applies a neural network pattern recognition technique, called a self-organising map (SOM), to a seven-year time series of satellite-derived sea level data. The Northern Benguela is characterised by quasi-perennial upwelling of cold, nutrient-rich water and is influenced by intrusions of warm, nutrient-poor Angola Current water from the north. In this paper, these processes are categorised in terms of their influence on recruitment success through the key ocean triad mechanisms of enrichment, concentration and retention. Moderate upwelling is seen as favourable for recruitment, whereas strong upwelling, weak upwelling and Angola Current intrusion appear detrimental to recruitment success. The SOM was used to identify characteristic patterns from sea level difference data and these were interpreted with the aid of sea surface temperature data. We found that the major oceanographic processes of upwelling and Angola Current intrusion dominated these patterns, allowing them to be partitioned into those representing recruitment favourable conditions and those representing adverse conditions for recruitment. A marginally significant relationship was found between the index of sardine recruitment and the frequency of recruitment favourable conditions (r(2) = 0.61, p = 0.068, n = 6). Because larvae are vulnerable to environmental influences for a period of at least 50 days after spawning, the SOM was then used to identify windows of persistent favourable conditions lasting longer than 50 days, termed recruitment favourable periods (RFPs). The occurrence of RFPs was compared with back-calculated spawning dates for each cohort. Finally, a comparison of RFPs with the time of spawning and the index of recruitment showed that in years where there were 50 or more days of favourable conditions following spawning, good recruitment followed (Mann-Whitney U-test: p = 0.064, n = 6). These results show the value of the SOM technique for describing spatio-temporal variability in oceanographic processes. Variability in these processes appears to be an important factor influencing recruitment in the Northern Benguela sardine, although the available data time series is currently too short to be conclusive. Nonetheless, the analysis of satellite data, using a neural network pattern-recognition approach, provides a useful framework for investigating fisheries recruitment problems. (C) 2003 Elsevier Ltd. All rights reserved.
引用
收藏
页码:241 / 255
页数:15
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