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东南太平洋秘鲁鳀资源量预报模型的构建
引用本文:陈芃,陈新军,雷林,胡飞飞.东南太平洋秘鲁鳀资源量预报模型的构建[J].海洋学报,2018,40(1):77-86.
作者姓名:陈芃  陈新军  雷林  胡飞飞
作者单位:1.上海海洋大学 海洋科学学院, 上海 201306;国家远洋渔业工程技术研究中心, 上海 201306
基金项目:海洋局公益性行业专项(20155014);上海市科技创新行动计划(14DZ1205000);国家科技支撑计划(2013BAD13B01)。
摘    要:秘鲁鳀(Engraulis ringens)是栖息于东南太平洋沿岸的一种小型中上层鱼类。有效地对秘鲁鳀资源量进行预报将有助于为我国鱼粉进口企业提供决策支撑。为此,本研究结合秘鲁鳀生物(上一个渔汛季度的资源量、渔获物中的幼鱼比例)和环境(渔场水温和nino1+2区的温度距平)因素及捕捞量为预报因子,利用主成分分析和多元线性回归的方法对17个渔汛季度(2006年至2014年第一渔汛季度)秘鲁鳀的资源量建立预报模型并利用主成分分析的结果对影响秘鲁鳀资源变动的因子进行初步评价。研究表明,随着时间的推移样本量的增加,模型拟合资源量与真实资源量的平均相对误差逐渐下降,拟合资源量序列与真实资源量序列的相关系数逐渐增加。最终模型5(建模数据为2006-2013年第二渔汛季度的数据,验证数据为2014年第一渔汛季度的数据)能够很好地拟合出秘鲁鳀资源量的大小及变动趋势拟合资源量序列与真实资源量序列的相关系数为0.861;拟合资源量序列与真实资源量序列的平均相对误差为12%;预报得到的2014年第一渔汛季度的数据与真实值相比,相对误差为1%。结合主成分分析的结果对影响秘鲁鳀资源变动的因素进行评价结果表明,第一主成分的方差贡献率为46%,其中环境因素占据了最大的载荷;第二主成分的方差贡献率为23%,同样环境因素占据了最大载荷,但是,排名第二和第三的因素分别是上一个渔汛季度的资源量和捕捞量,其载荷相当;第三和第四主成分的方差贡献率分别为9%和7%,其中幼鱼比例占的载荷最大。根据各主成分得分序列与资源量序列的相关系数结果,环境因子对秘鲁鳀资源变动有重要影响。

关 键 词:秘鲁鳀    资源量    预报模型    东南太平洋
收稿时间:2017/4/19 0:00:00

Forecasting model to the anchoveta (Engraulis ringens) biomass in the southeastern Pacific Ocean
Chen Peng,Chen Xinjun,Lei Lin and Hu Feifei.Forecasting model to the anchoveta (Engraulis ringens) biomass in the southeastern Pacific Ocean[J].Acta Oceanologica Sinica (in Chinese),2018,40(1):77-86.
Authors:Chen Peng  Chen Xinjun  Lei Lin and Hu Feifei
Institution:College of Marine Sciences, Shanghai Ocean University, Shanghai 201306, China;National Engineering Research Center for Oceanic Fisheries, Shanghai Ocean University, Shanghai 201306, China,College of Marine Sciences, Shanghai Ocean University, Shanghai 201306, China;Laboratory for Marine Fisheries Science and Food Production Processes, Qingdao National Laboratory for Marine Science and Technology, Qingdao 266237, China;The Key Laboratory of Sustainable Exploitation of Oceanic Fisheries Resources, Shanghai Ocean University, Ministry of Education, Shanghai 201306, China;National Engineering Research Center for Oceanic Fisheries, Shanghai Ocean University, Shanghai 201306, China,College of Marine Sciences, Shanghai Ocean University, Shanghai 201306, China;Laboratory for Marine Fisheries Science and Food Production Processes, Qingdao National Laboratory for Marine Science and Technology, Qingdao 266237, China;The Key Laboratory of Sustainable Exploitation of Oceanic Fisheries Resources, Shanghai Ocean University, Ministry of Education, Shanghai 201306, China;National Engineering Research Center for Oceanic Fisheries, Shanghai Ocean University, Shanghai 201306, China and College of Marine Sciences, Shanghai Ocean University, Shanghai 201306, China
Abstract:Anchoveta (Engraulis ringens) is a small pelagic fish living in the coastal area at the Southeast Pacific Ocean. Forecasting anchoveta biomass effectively could provide decision supports for China''s fishmeal import enterprises. Therefore, in this study, combining the biological factors (percentage of juvenile and previous biomass), oceanic environmental factors (temperature status in the fishing ground and climatic variations) and catch, we built the anchoveta biomass forecasting model in the seventeen fishing season (from 2006 to the first fishing season of 2014) combining the methods of principal component analysis (PCA) and multiple linear regression. Besides, we evaluated the factors affecting the changes of anchoveta biomass by the result of PCA. With the increase of sample size, the mean of relative error to the predicting sequences and actual sequences became smaller, and the correlation coefficient decreased. Finally, model 5 (modeling the data from 2006 to 2013 and validating the data in the first fishing season of 2014) could effectively fit out the changing trends of avchoveta biomass:the correlation coefficient of predicting sequences and actual sequences was 0.86 and the mean of relative error for these two sequences was 12%. What''s more, the relative error was only 1% for the predicting value in the first fishing season at 2014. The results of correlation coefficients between the anchoveta biomass sequence and the scores of principal components sequence indicated that environmental factor could have huge impacts to the anchoveta biomass variations.
Keywords:anchoveta (Engraulis ringens)  biomass  forecasting model  southeastern Pacific Ocean
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